2025/03/17 更新

お知らせ

 

写真a

シマダ アツシ
島田 敬士
SHIMADA ATSUSHI
所属
システム情報科学研究院 情報知能工学部門 教授
データ駆動イノベーション推進本部 (併任)
ラーニングアナリティクスセンター (併任)
情報基盤研究開発センター (併任)
工学部 電気情報工学科(併任)
システム情報科学府 情報理工学専攻(併任)
マス・フォア・イノベーション連係学府 (併任)
職名
教授
連絡先
メールアドレス
電話番号
0928023595
プロフィール
画像処理,パターン認識,ラーニングアナリティクス,ビッグデータ解析の研究に従事
外部リンク

学位

  • 博士(工学)

研究テーマ・研究キーワード

  • 研究テーマ: ラーニングアナリティクス

    研究キーワード: 学習分析

    研究期間: 2013年10月

  • 研究テーマ: 広域物体追跡に関する研究

    研究キーワード: 物体追跡,広域,マルチセンサ

    研究期間: 2008年4月

  • 研究テーマ: 動作認識に関する研究

    研究キーワード: 動作認識, 追加学習,共起動作認識,早期認識

    研究期間: 2008年4月

  • 研究テーマ: 照明変動に頑健な背景モデリングに関する研究

    研究キーワード: 動的背景モデル,物体検出,照明変動

    研究期間: 2006年4月

  • 研究テーマ: 自己組織化マップを利用した画像認識に関する研究

    研究キーワード: 自己組織化マップ,画像認識,ハイパーコラムモデル,追加学習

    研究期間: 2004年4月 - 2007年3月

  • 研究テーマ: 遠隔講義支援に関する研究

    研究キーワード: 遠隔講義支援,画像処理,動作認識

    研究期間: 2002年4月 - 2004年3月

受賞

  • Learning Impact Awards 2023 Honorable Mentions

    2023年6月   1EdTech  

  • 第7回IMS Japan賞2022 優秀賞

    2022年11月   一般社団法人 日本IMS協会  

  • 令和2年度科学技術分野の文部科学大臣表彰若手科学者賞

    2020年4月   文部科学省  

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    教育データの分析を通して,科学的根拠に基づく教育・学習の改善に資する研究業績が認められた.

  • Best Paper Award

    2019年11月   CELDA2019  

  • IPSJ/IEEE-CS Young Computer Researcher Award 2019

    2019年6月   IEEE/IPSJ  

  • 第12回さきがけ研究者交流会インタレストポスター賞

    2019年1月   科学技術振興機構  

  • 第16回ITSシンポジウム2018ベストポスター賞

    2018年12月   第16回ITSシンポジウム  

  • Winner of the SBM-RGBD Challenge

    2017年9月   The SBM-RGBD Challenge  

  • 電子情報通信学会 情報・システムソサイエティ査読功労賞

    2017年6月   電子情報通信学会  

  • ICALT2015 Best Paper Award(Short paper部門)

    2015年7月   2. The 15th IEEE International Conference on Advanced Learning Technologies  

  • 画像の認識・理解シンポジウムMIRU2015デモ発表賞

    2015年7月   情報処理学会CVIM研究会  

  • FCV2015 Excellence Poster Award

    2015年1月   FCV2015  

  • PRMU研究奨励賞

    2013年5月   電子情報通信学会  

  • ACCV2012 Workshop Background Models Challenge 2012 The First Place

    2012年11月   ACCV2012 Workshop Background Models Challenge 2012  

  • MIRU2011インタラクティブセッション賞

    2011年7月   情報処理学会CVIM研究会  

  • IEEE Region 10 WIE Best Paper Award 2010

    2010年11月   IEEE Asia Pacific Women in Engineering Affinity Group  

▼全件表示

論文

  • Real-time Feedback Dashboard for Students in Online Class 査読

    Takuro Owatari, Atsushi Shimada, Tsubasa Minematsu, Maiya Hori, Rin-ichiro Taniguchi

    International Conference on Engineering, Technology and Education (TALE2020)   953 - 959   2020年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • New Perspective on Input Feature Analysis for Early Feedback by Student Performance Prediction Considering the Future Effect 査読

    Ryusuke Murata, Fumiya Okubo, Tsubasa Minematsu, Yuta Taniguchi, Atsushi Shimada

    The 12th Internal Learning Analytics and Knowledge Conference   2022年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • How Does Analysis of Handwritten Notes Provide Better Insights for Learning Behavior? 査読

    Boyi Li, Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada

    The 12th International Learning Analytics and Knowledge Conference   2022年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Encoding students reading characteristics to improve low academic performance predictive models 査読

    Erwin D. Lopez Z., Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada

    The 12th International Conference on Learning Analytics & Knowledge (LAK22)   2022年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Exploring the use of probabilistic latent representations to encode the students' reading characteristics 査読

    Erwin D. Lopez Z., Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada

    The 4th Workshop on Predicting Performance Based on the Analysis of Reading Behavior   2022年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Coding Trajectory Map: Student Programming Situations Made Visually Locatable 査読

    Yuta Taniguchi, Tsubasa Minematsu, Fumiya Okubo, Atsushi Shimada

    The 12th Internal Learning Analytics and Knowledge Conference   2022年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Predicting student performance based on Lecture Materials data using Neural Network Models 査読

    Sukrit Leelaluk, Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada

    The 4th Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK22 Data Challenge)   2022年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Can Learning Logs Be Useful Evidence in Cheating Analysis in Essay-type Questions? 査読

    Tsubasa Minematsu, Atsushi Shimada

    The 12th Internal Learning Analytics and Knowledge Conference   2022年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Learning Analytics of the Relationships among Knowledge Constructions, Self-regulated Learning, and Learning Performance 査読

    Hao Hao, Xuewang Geng, Li Chen, Atsushi Shimada, Masanori Yamada

    IEEE International Conference on Teaching, Assessment and Learning for Engineering (TALE)   2021年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Performance prediction and importance analysis using Transformer 査読

    Akiyoshi SATAKE, Hironobu FUJIYOSHI, Takayoshi YAMASHITA, Tsubasa HIRAKAWA, Atsushi SHIMADA

    ICCE Sub-Conference on Artificial Intelligence in Education/Intelligent Tutoring System (AIED/ITS) and Adaptive Learning (AL)   2021年11月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • ESTIMATING LEARNING ASSISTANCE SKILLS USING LEARNING ANALYTICS 査読

    Hiroyuki Watanabe, Yoshiko Goda, Atsushi Shimada, Masanori Yamada

    18th International Conference on Cognition and Exploratory Learning in Digital Age 2021 (CELDA2021)   2021年10月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Early Detection of At-risk Students based on Knowledge Distillation RNN Models 査読

    Ryusuke Murata, Tsubasa Minematsu, Atsushi Shimada

    Educational Data Mining 2021   2021年6月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Composing Learning Environments with e-Textbook System 査読

    Yuta Taniguchi, Tsubasa Minematsu, Atsushi Shimada

    Third International Workshop on Inteligent Textbooks 2021   2021年6月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Student Response Estimation using E-book Reading Logs with Textbook Information 査読

    Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 11th International Conference on Learning Analytics & Knowledge (LAK21)   2021年4月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Development of a Time Management Skill Support System Based on Learning Analytics 査読

    Hiroyuki Watanabe, Li Chen, Yoshiko Goda, Atsushi Shimada, Masanori Yamada

    Companion Proceedings 10th International Conference on LAK2021   2021年4月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Identify solar panel defects by using differences between solar panels 査読

    Deng Jiaming, Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    International Conference on Quality Control by Artificial Vision   2021年4月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Combining keypoint touch and device pose alignment for interaction to create 3D bounding boxes of arbitrary objects on mobile devices 査読

    Yuya Ishimoto, Hideaki Uchiyama, Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 14th Asia Pacific Workshop on Mixed and Augmented Reality (APMAR2021)   2021年4月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

  • Movement recommendation system based on multi-spot congestion analytics 査読

    Keita Nakayama, Akira Onoue, Maiya Hori, Atsushi Shimada, Rin ichiro Taniguchi

    Sustainability (Switzerland)   12 ( 6 )   2020年3月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Abstract: A method is proposed for resolving human congestion at a specific time at key spots in an area. Sensing data on real-world human flows are analyzed, and important information for changing movement behavior is accordingly provided. By using conventional approaches, this was a difficult task, whereas in the proposed approach, the targets and timing of providing information for congestion mitigation are determined based on spot importance. A congestion transition model is constructed from actual data and the results of a questionnaire survey. Finally, congestion mitigation in key spots is simulated after movement recommendation has been provided.

    DOI: 10.3390/su12062417

  • 3D plant growth prediction via image-to-image translation

    Tomohiro Hamamoto, Hideaki Uchiyama, Atsushi Shimada, Rin Ichiro Taniguchi

    15th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications, VISIGRAPP 2020 VISAPP   153 - 161   2020年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper presents a method to predict three-dimensional (3D) plant growth with RGB-D images. Based on neural network based image translation and time-series prediction, we construct a system that gives the predicted result of RGB-D images from several past RGB-D images. Since both RGB and depth images are incorporated into our system, the plant growth can be represented in 3D space. In the evaluation, the performance of our proposed network is investigated by focusing on clarifying the importance of each module in the network. We have verified how the prediction accuracy changes depending on the internal structure of the our network.

  • Visualizing Studying Activities for a Learning Dashboard Supporting Meta-cognition for Students

    Min Lu, Li Chen, Yoshiko Goda, Atsushi Shimada, Masanori Yamada

    8th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2020, held as part of the 22nd International Conference on Human-Computer Interaction, HCII 2020 Distributed, Ambient and Pervasive Interactions - 8th International Conference, DAPI 2020, Held as Part of the 22nd HCI International Conference, HCII 2020, Proceedings   569 - 580   2020年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    The existing researches and developments of dashboard visualizing results from learning analytics mainly serve the instructors instead of learners in a direct manner. Effective visualizations extracted from learning log data can help the students to reflect and compare studying activities and access their metacognition to improve their self-regulated learning. For such purposes, we designed a reading path graph for visualizing the studying activities on slide pages used as teaching materials in classes intuitively, as one of the key functions of the learning dashboard. By providing the comparisons between the user’s own situation and the class overview, the visualization is expected to motivate the further actions of using other tools of the learning dashboard and reflecting studies. This paper introduces our exploration of the data process flows of extracting necessary data from a large number of operational logs for the visualization, and the techniques and strategies applied for rendering the graphics effectively. We implemented the data processing module with Python3 and the web-based visualization module of the reading path graph with JavaScript based on D3.js considering the extensibilities. The issues engaged in the development of prototypes are discussed, which will lead to the improvement of future prototypes and better designs of user experiments for formative evaluations as the next step of this research.

    DOI: 10.1007/978-3-030-50344-4_41

  • Visualization and Analysis for Supporting Teachers Using Clickstream Data and Eye Movement Data

    Tsubasa Minematsu, Atsushi Shimada, Rin ichiro Taniguchi

    8th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2020, held as part of the 22nd International Conference on Human-Computer Interaction, HCII 2020 Distributed, Ambient and Pervasive Interactions - 8th International Conference, DAPI 2020, Held as Part of the 22nd HCI International Conference, HCII 2020, Proceedings   581 - 592   2020年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Recently, various educational data such as clickstream data and eye movement data have been collected from students using e-learning systems. Learning analytics-based approaches also have been proposed such as student performance prediction and a monitoring system of student learning behaviors for supporting teachers. In this paper, we introduce our recent work as instances of the use of clickstream data and eye movement data. In our work, the clickstream data is used for representing student learning behaviors, and the eye movement data is used for estimating page areas where the student found difficulty. Besides, we discuss advantages and disadvantages depending on the types of educational data. To discuss them, we investigate a combination of highlights added on pages by students and eye movement data in page difficulty estimation. In the investigation, we evaluate the similarity between positions of highlights and page areas where the student found difficulty generated from eye movements. It is shown that areas in the difficult pages correspond to the highlights in this evaluation. Finally, we discuss how to combine the highlights and eye movement data.

    DOI: 10.1007/978-3-030-50344-4_42

  • SALATA A web application for visualizing sensor information in farm fields

    Nao Akayama, Daisaku Arita, Atsushi Shimada, Rin Ichiro Taniguchi

    9th International Conference on Sensor Networks, SENSORNETS 2020 SENSORNETS 2020 - Proceedings of the 9th International Conference on Sensor Networks   113 - 120   2020年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Semi-automated sensing and visualization of conditions and activities in farm fields have been actively pursued in recent years. There are three types of agricultural information: sensor information, farm work information, and plant biological information. Measuring and visualizing these agricultural information can provide valuable support to farm managers. In this study, we focus on sensor information and farm work information and develop a web application named SALATA (Sharing and AccumuLating Agricultural TAcit knowledge) that collects and shares sensor information and farm work information collected in farm fields and correlates the information in time series. SALATA need to have intuitive operation and quick response in order that people of various ages will use it on a daily basis. Therefore, there are two primary pages: the main page for visualizing simple information quickly and the analytical page for visualizing multiple pieces of information on one page. Usability evaluation experiments are performed, showing that SALATA can be operated intuitively and respond quickly.

  • Development and evaluation of a visualization system to support meaningful e-book learning 査読

    Jingyun Wang, Atsushi Shimada, Misato Oi, Hiroaki Ogata, Yoshiyuki Tabata

    Interactive Learning Environments   2020年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    This study presents an ontology-based visualization support system for e-book learners which promotes both meaningful receptive learning and meaningful discovery learning. To examine the system effectiveness, two learning modes are used: (a) reception comparison mode, where at the outset learners are shown complete versions of expert-generated topic maps; and (b) “cache-cache comparison mode,” where at the first stage of learning all information concerning relations is concealed, and at the second stage learners are encouraged to actively create those relations before comparing the learner-generated and expert-generated relations. The 50 control group participants studied in reception comparison mode while the 146 experimental groupparticipants studied in cache-cache comparison mode. Differences in learning perception and achievement between the two groups are examined, as is the effect of learner expertise level on learning mode effectiveness. Although the control group reported significantly more pressure and less satisfaction than the experimental group, no significant learning achievement differences were found between the two groups. However, in cache-cache comparison mode, the performance of learners with low prior knowledge increased more than that of learners with high prior knowledge; on the other hand, for learners with high prior knowledge, no significant effect of learning mode on learning achievement was found.

    DOI: 10.1080/10494820.2020.1813178

  • Semi-automatic learning framework combining object detection and background subtraction

    Sugino Nicolas Alejandro, Tsubasa Minematsu, Atsushi Shimada, Takashi Shibata, Rin Ichiro Taniguchi, Eiji Kaneko, Hiroyoshi Miyano

    15th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications, VISIGRAPP 2020 VISAPP   96 - 106   2020年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Public datasets used to train modern object detection models do not contain all the object classes appearing in real-world surveillance scenes. Even if they appear, they might be vastly different. Therefore, object detectors implemented in the real world must accommodate unknown objects and adapt to the scene. We implemented a framework that combines background subtraction and unknown object detection to improve the pretrained detector’s performance and apply human intervention to review the detected objects to minimize the latent risk of introducing wrongly labeled samples to the training. The proposed system enhanced the original YOLOv3 object detector performance in almost all the metrics analyzed, and managed to incorporate new classes without losing previous training information.

  • Planar Accurate and stable 3D positioning system via interactive plane reconstruction for handheld augmented reality

    Ami Miyake, Hideaki Uchiyama, Atsushi Shimada, Rin Ichiro Taniguchi

    15th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications, VISIGRAPP 2020 VISAPP   783 - 791   2020年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper presents a ray-casting-based three-dimensional (3D) positioning system that interactively reconstructs scene structures for handheld augmented reality. The proposed system employs visual simultaneous localization and mapping (vSLAM) technology to acquire camera poses of a smartphone and sparse 3D feature points in an unknown scene. First, users specify a geometric shape region, such as a plane, in captured images while capturing a scene. This is performed by manually selecting some of the feature points generated by vSLAM in the region. Next, the system computes the shape parameter with the selected feature points so that the scene structure is reconstructed densely. Subsequently, users select the pixel of a target point in the scene at one camera view for 3D positioning. Finally, the system computes the intersection between the 3D ray computed with the selected pixel and the reconstructed scene structure to determine the 3D coordinates of the target point. Owing to the proposed interactive reconstruction, the scene structure can be estimated accurately and stably; therefore, 3D positioning will be accurate. Because the geometric shape used for the scene structure is a plane in this study, our system is referred to as PlanAR. In the evaluation, the performance of our system is compared statistically with an existing 3D positioning system to demonstrate the accuracy and stability of our system.

  • Generating a consistent global map under intermittent mapping conditions for large-scale vision-based navigation

    Kazuki Nishiguchi, Walid Bousselham, Hideaki Uchiyama, Diego Thomas, Atsushi Shimada, Rin Ichiro Taniguchi

    15th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications, VISIGRAPP 2020 VISAPP   783 - 793   2020年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Localization is the process to compute sensor poses based on vision technologies such as visual Simultaneous Localization And Mapping (vSLAM). It can generally be applied to navigation systems . To achieve this, a global map is essential such that the relocalization process requires a single consistent map represented with an unified coordinate system. However, a large-scale global map cannot be created at once due to insufficient visual features at some moments. This paper presents an interactive method to generate a consistent global map from intermittent maps created by vSLAM independently via global reference points. First, vSLAM is applied to individual image sequences to create maps independently. At the same time, multiple reference points with known latitude and longitude are interactively recorded in each map. Then, the coordinate system of each individual map is converted into the one that has metric scale and unified axes with the reference points. Finally, the individual maps are merged into a single map based on the relative position of each origin. In the evaluation, we show the result of map merging and relocalization with our dataset to confirm the effectiveness of our method for navigation tasks. In addition, the report on participating in the navigation competition in a practical environment is also discussed.

  • Direction of collaborative problem solving-based STEM learning by learning analytics approach 査読

    Li Chen, Nobuyuki Yoshimatsu, Yoshiko Goda, Fumiya Okubo, Yuta Taniguchi, Misato Oi, Shin’ichi Konomi, Atsushi Shimada, Hiroaki Ogata, Masanori Yamada

    Research and Practice in Technology Enhanced Learning   14 ( 1 )   2019年12月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    The purpose of this study was to explore the factors that might affect learning performance and collaborative problem solving (CPS) awareness in science, technology, engineering, and mathematics (STEM) education. We collected and analyzed data on important factors in STEM education, including learning strategy and learning behaviors, and examined their interrelationships with learning performance and CPS awareness, respectively. Multiple data sources, including learning tests, questionnaire feedback, and learning logs, were collected and examined following a learning analytics approach. Significant positive correlations were found for the learning behavior of using markers with learning performance and CPS awareness in group discussion, while significant negative correlations were found for some factors of STEM learning strategy and learning behaviors in pre-learning with some factors of CPS awareness. The results imply the importance of an efficient approach to using learning strategies and functional tools in STEM education.

    DOI: 10.1186/s41039-019-0119-y

  • E-book learner behaviors difference under two meaningful learning support environments

    Jingyun Wang, Atsushi Shimada, Fumiya Okubo

    27th International Conference on Computers in Education, ICCE 2019 ICCE 2019 - 27th International Conference on Computers in Education, Proceedings   342 - 347   2019年11月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we present an ontology-based visualization support system for e-book learners, which provides not only a meaningful receptive learning environment but also a meaningful discovery learning environment. Those two environments are developed to help e-book learners to effectively construct their knowledge frameworks. A series of experiments were conducted on four undergraduate classes instructed by two professors (A and B): two classes(one guided by A and the other guided by B) were assigned as control groups and studied with one e-book chapter in receptive learning environment while another two classes (one guided by A and the other guided by B) were assigned as experimental groups and studied with the same e-book chapter in discovery learning environment. For analyzing the learner behavior, K-means clustering algorithm is performed not only by considering the number of total command actions and the cumulative duration of stay on target pages as learner features, but also by considering the duration of stay on each target page (in total 15 pages) as learner features. Learners’ behavior differences in e-book system are examined and discussed.

  • Supporting ubiquitous language learning with object and text detection technologies

    Kousuke Mouri, Noriko Uosaki, Chengjiu Yin, Atsushi Shimada, Mohammad Nehal Hasnine, Keiichi Kaneko, Hiroaki Ogata

    27th International Conference on Computers in Education, ICCE 2019 ICCE 2019 - 27th International Conference on Computers in Education, Proceedings   192 - 196   2019年11月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Learning log is defined as a digital record of what learners have learned in their daily lives using ubiquitous technologies. By using the ubiquitous learning system named SCROLL(System for Capturing and Remining Of Learning Logs), learners can save what they have learned in their daily lives with photo, such as location (latitude and longitude), learning place, and date and time of creation as a learning log. Although learners have many opportunities to learn words and meanings of objects with taking a photo in their daily lives, SCROLL is not implemented functions for supporting language learning with object and text detection. Therefore, this paper proposes a ubiquitous learning system to support language learning with object and text detection technologies.

  • Simple background subtraction constraint for weakly supervised background subtraction network

    Tsubasa Minematsu, Atsushi Shimada, Rin Ichiro Taniguchi

    16th IEEE International Conference on Advanced Video and Signal Based Surveillance, AVSS 2019 2019 16th IEEE International Conference on Advanced Video and Signal Based Surveillance, AVSS 2019   2019年9月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Recently, background subtraction based on deep convolutional neural networks has demonstrated excellent performance in change detection tasks. However, most of the reported approaches require pixel-level label images for training the networks. To reduce the cost of rendering pixel-level annotation data, weakly supervised learning approaches using frame-level labels have been proposed. These labels indicate if a target class is present. Frame-level supervised learning is challenging because we cannot use location information for training the networks. Therefore, some constraints are introduced for guiding foreground locations. Previous works exploit prior information on foreground sizes and shapes. In this work, we propose two constraints for weakly supervised background subtraction networks. Our constraints use binary mask images generated by simple background subtraction. Unlike previous works, our approach does not require prior information on foreground sizes and shapes. Moreover, our constraints are more suitable for change detection tasks. We also present an experiment verifying that our constraints can improve foreground detection accuracy compared to other methods, which do not include them.

    DOI: 10.1109/AVSS.2019.8909896

  • A System for Grouping Texts and Objects in Slide Layout

    Fumiya Suzuki, Kousuke Mouri, Atsushi Shimada, Noriko Uosaki, Chengjiu Yin, Keiichi Kaneko

    8th IIAI International Congress on Advanced Applied Informatics, IIAI-AAI 2019 Proceedings - 2019 8th International Congress on Advanced Applied Informatics, IIAI-AAI 2019   1043 - 1044   2019年7月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper describes a system that groups texts and objects in layout of slides. Layout of a slide is important to hold a presentation correctly. However, designing layout appropriately is difficult for beginners at making slides, like students. In addition, it is also difficult for them to check whether the layout of a slide is appropriate or not. To solve this problem, in this study, we developed a system that analyzes layout of a slide based on the positions of texts and shape objects. The system shows groups of texts each of which has common a topic. Beginners can realize mistakes of layout by comparing the output of the system and their intention.

    DOI: 10.1109/IIAI-AAI.2019.00218

  • Pilot study to estimate “difficult” area in e-learning material by physiological measurements

    Kaori Tamura, Tsuyoshi Okamoto, Misato Oi, Atsushi Shimada, Kohei Hatano, Masanori Yamada, Min Lu, Shin'ichi Konomi

    6th ACM Conference on Learning at Scale, L@S 2019 Proceedings of the 6th 2019 ACM Conference on Learning at Scale, L@S 2019   2019年6月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    To improve designs of e-learning materials, it is necessary to know which word or figure a learner felt "difficult" in the materials. In this pilot study, we measured electroencephalography (EEG) and eye gaze data of learners and analyzed to estimate which area they had difficulty to learn. The developed system realized simultaneous measurements of physiological data and subjective evaluations during learning. Using this system, we observed specific EEG activity in difficult pages. Integrating of eye gaze and EEG measurements raised a possibility to determine where a learner felt “difficult” in a page of learning materials. From these results, we could suggest that the multimodal measurements of EEG and eye gaze would lead to effective improvement of learning materials. For future study, more data collection using various materials and learners with different backgrounds is necessary. This study could lead to establishing a method to improve e-learning materials based on learners' mental states.

    DOI: 10.1145/3330430.3333648

  • Proposal and implementation of an elderly-oriented user interface for learning support systems

    Min Lu, Kaori Tamura, Tsuyoshi Okamoto, Misato Oi, Atsushi Shimada, Kohei Hatano, Masanori Yamada, Shin'ichi Konomi

    6th ACM Conference on Learning at Scale, L@S 2019 Proceedings of the 6th 2019 ACM Conference on Learning at Scale, L@S 2019   2019年6月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Extended learning support systems for all-age education requires inclusive user interface design, especially for elderly users. A dual-tablet user interface with simplified visual layers and more intuitive operations was proposed aiming to reduce the physical and mental loads of elderly learners. An initial prototype with basic functions of viewing learning material was developed based on a cross-platform framework. Two preliminary user experiments participated by elderly volunteers were carried out for formative evaluations, in order to improve the usability of the interface design iteratively. The prototype was modified based on the participants’ comments and observation of their operations during the experiments. Additional findings of the elderly users’ preference and tendency were discussed for further development.

    DOI: 10.1145/3330430.3333650

  • Proposal and implementation of an elderly-oriented user interface for learning support systems

    Min Lu, Kaori Tamura, Tsuyoshi Okamoto, Misato Oi, Atsushi Shimada, Kohei Hatano, Masanori Yamada, Shin'ichi Konomi

    6th ACM Conference on Learning at Scale, L@S 2019 Proceedings of the 6th 2019 ACM Conference on Learning at Scale, L@S 2019   2019年6月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Extended learning support systems for all-age education requires inclusive user interface design, especially for elderly users. A dual-tablet user interface with simplified visual layers and more intuitive operations was proposed aiming to reduce the physical and mental loads of elderly learners. An initial prototype with basic functions of viewing learning material was developed based on a cross-platform framework. Two preliminary user experiments participated by elderly volunteers were carried out for formative evaluations, in order to improve the usability of the interface design iteratively. The prototype was modified based on the participants’ comments and observation of their operations during the experiments. Additional findings of the elderly users’ preference and tendency were discussed for further development.

    DOI: 10.1145/3330430.3333650

  • Pilot study to estimate “difficult” area in e-learning material by physiological measurements

    Kaori Tamura, Tsuyoshi Okamoto, Misato Oi, Atsushi Shimada, Kohei Hatano, Masanori Yamada, Min Lu, Shin'ichi Konomi

    6th ACM Conference on Learning at Scale, L@S 2019 Proceedings of the 6th 2019 ACM Conference on Learning at Scale, L@S 2019   2019年6月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    To improve designs of e-learning materials, it is necessary to know which word or figure a learner felt "difficult" in the materials. In this pilot study, we measured electroencephalography (EEG) and eye gaze data of learners and analyzed to estimate which area they had difficulty to learn. The developed system realized simultaneous measurements of physiological data and subjective evaluations during learning. Using this system, we observed specific EEG activity in difficult pages. Integrating of eye gaze and EEG measurements raised a possibility to determine where a learner felt “difficult” in a page of learning materials. From these results, we could suggest that the multimodal measurements of EEG and eye gaze would lead to effective improvement of learning materials. For future study, more data collection using various materials and learners with different backgrounds is necessary. This study could lead to establishing a method to improve e-learning materials based on learners' mental states.

    DOI: 10.1145/3330430.3333648

  • Exploring the Relationships between Reading Behavior Patterns and Learning Outcomes Based on Log Data from E-Books A Human Factor Approach 査読

    Chengjiu Yin, Masanori Yamada, Misato Oi, Atsushi Shimada, Fumiya Okubo, Kojima Kentaro, Hiroaki Ogata

    International Journal of Human-Computer Interaction   35 ( 4-5 )   313 - 322   2019年3月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Online learning environments presently accumulate large amounts of log data. Analysis of learning behaviors from these log data is expected to benefit instructors and learners. This study was intended to identify effective measures from e-book materials used at Kyushu University and to employ these measures for analyzing learning behavioral patterns. In an evaluation, students were grouped into four clusters using k-means clustering, and their learning behavioral patterns were analyzed. We examined whether the learning behavioral patterns exhibited relations with the learning outcomes. The results reveal that the learning behavior of “backtrack” style reading exerts a significant positive influence on learning effectiveness, which can aid students to learn more efficiently.

    DOI: 10.1080/10447318.2018.1543077

  • Fall detection using optical level anonymous image sensing system 査読

    Chao Ma, Atsushi Shimada, Hideaki Uchiyama, Hajime Nagahara, Rin ichiro Taniguchi

    Optics and Laser Technology   110   44 - 61   2019年2月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Fall is one of the leading causes of injury for the elderly individuals. Systems that automatically detect falls can significantly reduce the delay of assistance. Most of commercialized fall detection systems are based on wearable devices, which elderly individuals tend to forget wearing. Using surveillance cameras to detect falls based on computer vision is ideal, because anyone in the monitoring scopes can be under protection. However, the privacy protection issue using surveillance cameras has been bothering people. To effectively protect the privacy, we proposed an optical level anonymous image sensing system, which can protect the privacy by hiding the facial regions optically at the video capturing phase. We apply the system to fall detection. In detecting falls, we propose a neural network by combining a 3D convolutional neural network for feature extraction and an autoencoder for modelling the normal behaviors. The learned autoencoder reconstructs the features extracted from videos with normal behaviors with smaller average errors than those extracted from videos with falls. We evaluated our neural network by a hold-out validation experiment, and showed its effectiveness. In field tests, we showed and discussed the applicability of the optical level anonymous image sensing system for privacy protection and fall detection.

    DOI: 10.1016/j.optlastec.2018.07.013

  • Advanced tools for digital learning management systems in university education

    Atsushi Shimada, Tsubasa Minematsu, Masanori Yamada

    7th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2019, held as part of the 21st International Conference on Human-Computer Interaction, HCI International 2019 Distributed, Ambient and Pervasive Interactions - 7th International Conference, DAPI 2019, Held as Part of the 21st HCI International Conference, HCII 2019, Proceedings   419 - 429   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper introduces advanced tools in the digital learning management system M2B. The M2B system is used in Kyushu University, Japan, and contains three sub-systems: the e-learning system Moodle, the e-portfolio system Mahara, and the e-book system BookRoll. We developed useful tools to help improve both teaching and learning.

    DOI: 10.1007/978-3-030-21935-2_32

  • K-tips Knowledge extension based on tailor-made information provision system

    Keita Nakayama, Atsushi Shimada, Tsubasa Minematsu, Yuta Taniguchi, Rin Ichiro Taniguchi

    16th International Conference on Cognition and Exploratory Learning in Digital Age, CELDA 2019 16th International Conference on Cognition and Exploratory Learning in Digital Age, CELDA 2019   355 - 362   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Thanks to an increase in the amount of information on the Internet and the spread of ICT-supported educational environments, much attention has been paid to learning support based on "smart" recommendation technologies. In this study, we propose an education improvement model based on the recommender system using the human-in-the-loop design strategy. Our proposed model enhances not only learners via recommendation, but also teachers and the system itself through the interaction between teachers and the system. In this paper, we introduce the details of the proposed model and implementation strategy followed by a report of preliminary experimental results.

    DOI: 10.33965/celda2019_201911l044

  • Evaluating Indoor Positioning Systems in a Shopping Mall The Lessons Learned from the IPIN 2018 Competition 査読

    Valerie Renaudin, Miguel Ortiz, Johan Perul, Joaquin Torres-Sospedra, Antonio Ramon Jimenez, Antoni Perez-Navarro, German Martin Mendoza-Silva, Fernando Seco, Yael Landau, Revital Marbel, Boaz Ben-Moshe, Xingyu Zheng, Feng Ye, Jian Kuang, Yu Li, Xiaoji Niu, Vlad Landa, Shlomi Hacohen, Nir Shvalb, Chuanhua Lu, Hideaki Uchiyama, Diego Thomas, Atsushi Shimada, Rin Ichiro Taniguchi, Zhenxing Ding, Feng Xu, Nikolai Kronenwett, Blagovest Vladimirov, Soyeon Lee, Eunyoung Cho, Sungwoo Jun, Changeun Lee, Sangjoon Park, Yonghyun Lee, Jehyeok Rew, Changjun Park, Hyeongyo Jeong, Jaeseung Han, Keumryeol Lee, Wenchao Zhang, Xianghong Li, Dongyan Wei, Ying Zhang, So Young Park, Chan Gook Park, Stefan Knauth, Georgios Pipelidis, Nikolaos Tsiamitros, Tomas Lungenstrass, Juan Pablo Morales, Jens Trogh, David Plets, Miroslav Opiela, Shih Hau Fang, Yu Tsao, Ying Ren Chien, Shi Shen Yang, Shih Jyun Ye, Muhammad Usman Ali, Soojung Hur, Yongwan Park

    IEEE Access   7   148594 - 148628   2019年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    The Indoor Positioning and Indoor Navigation (IPIN) conference holds an annual competition in which indoor localization systems from different research groups worldwide are evaluated empirically. The objective of this competition is to establish a systematic evaluation methodology with rigorous metrics both for real-Time (on-site) and post-processing (off-site) situations, in a realistic environment unfamiliar to the prototype developers. For the IPIN 2018 conference, this competition was held on September 22nd, 2018, in Atlantis, a large shopping mall in Nantes (France). Four competition tracks (two on-site and two off-site) were designed. They consisted of several 1 km routes traversing several floors of the mall. Along these paths, 180 points were topographically surveyed with a 10 cm accuracy, to serve as ground truth landmarks, combining theodolite measurements, differential global navigation satellite system (GNSS) and 3D scanner systems. 34 teams effectively competed. The accuracy score corresponds to the third quartile (75th percentile) of an error metric that combines the horizontal positioning error and the floor detection. The best results for the on-site tracks showed an accuracy score of 11.70 m (Track 1) and 5.50 m (Track 2), while the best results for the off-site tracks showed an accuracy score of 0.90 m (Track 3) and 1.30 m (Track 4). These results showed that it is possible to obtain high accuracy indoor positioning solutions in large, realistic environments using wearable light-weight sensors without deploying any beacon. This paper describes the organization work of the tracks, analyzes the methodology used to quantify the results, reviews the lessons learned from the competition and discusses its future.

    DOI: 10.1109/ACCESS.2019.2944389

  • Elicitation of appropriate scratching zones based on lecture slide layouts

    Fumiya Suzuki, Kousuke Mouri, Noriko Uosaki, Atsushi Shimada, Chengjiu Yin, Keiichi Kaneko

    7th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2019, held as part of the 21st International Conference on Human-Computer Interaction, HCI International 2019 Distributed, Ambient and Pervasive Interactions - 7th International Conference, DAPI 2019, Held as Part of the 21st HCI International Conference, HCII 2019, Proceedings   430 - 441   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In recent times, researchers in pedagogy have focused on digital learning logs collected by learning tools such as Learning Management Systems and digital textbook systems. By analyzing and visualizing these, they aim to improve learning and/or teaching methodologies in the future. Using a digital textbook system, it is possible to collect information on which textbook pages were browsed by learners. However, these tools cannot decipher which zones of the textbook were browsed. In order to collect this information, eye-tracker technology would be necessary, but providing each learner with an eye-tracker would be too expensive. To solve this problem, a previous work proposed a method that used masks to detect and conceal each section of the slides in a digital textbook. The learner then clicked the masks one by one to delete them while browsing the contents of the digital textbook. By recording the learner’s clicking operations, the method collected information about the zones browsed by the learner. However, this method was found to cause a decline in learning achievement and system usability as a large number of zones were hidden. Therefore, we propose a grouping method, based on the layout information of the slides, in order to identify the appropriate zones to hide with masks.

    DOI: 10.1007/978-3-030-21935-2_33

  • Plant growth prediction using convolutional LSTM

    Shunsuke Sakurai, Hideaki Uchiyama, Atshushi Shimada, Rin ichiro Taniguchi

    14th International Conference on Computer Vision Theory and Applications, VISAPP 2019 - Part of the 14th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications, VISIGRAPP 2019 VISIGRAPP 2019 - Proceedings of the 14th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications   105 - 113   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper presents a method for predicting plant growth in future images from past images, as a new phenotyping technology. This is achieved by modeling the representation of plant growth based on neural network. In order to learn the long-term dependencies in plant growth from the images, we propose to employ a Convolutional LSTM based framework. Especially, We apply an encoder-decoder model inspired by a framework on future frame prediction to model the representation of plant growth effectively. In addition, we propose two additional loss terms to put the constraints on shape changes of leaves between consecutive images. In the evaluation, we demonstrated the effectiveness of the proposed loss functions through the comparisons using labeled plant growth images.

  • Optimizing assignment of students to courses based on learning activity analytics

    Atsushi Shimada, Kousuke Mouri, Yuta Taniguchi, Hiroaki Ogata, Rin Ichiro Taniguchi, Shin'ichi Konomi

    12th International Conference on Educational Data Mining, EDM 2019 EDM 2019 - Proceedings of the 12th International Conference on Educational Data Mining   178 - 187   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we focus on optimizing the assignment of students to courses. The target courses are conducted by different teachers using the same syllabus, course design, and lecture materials. More than 1,300 students are mechanically assigned to one of ten courses taught by different teachers. Therefore, mismatches often occur between students' learning behavior patterns and teachers' approach to teaching. As a result, students may be less satisfied, have a lower level of understanding of the material, and achieve less. To solve these problems, we propose a strategy to optimize the assignment of students to courses based on learning activity analytics. The contributions of this study are 1) clarifying the relationship between learning behavior pattern and teaching based on learning activity analytics using large-scale educational data, 2) optimizing the assignment of students to courses based on learning behavior pattern analytics, and 3) demonstrating the effectiveness of assignment optimization via simulation experiments.

  • Multi-pedestrian tracking system based on asynchronized IMUs 査読

    Chuanhua Lu, Hideaki Uchiyama, Diego Thomas, Atsushi Shimada, Rin ichiro Taniguchi

    Short Paper of the 10th International Conference on Indoor Positioning and Indoor Navigation - Work-in-Progress Papers, IPIN-WiP 2019 CEUR Workshop Proceedings   2498   447 - 454   2019年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose a multi-pedestrian tracking system based on MEMS based IMUs as a novel tool for human behavior analysis. With asynchronized multiple IMUs, our system can track IMU-attached pedestrians in synchronization at a high frame rate in the large environment, compared with vision based approaches. The output data is similar to standard PDR systems as follows: the time-series position, velocity, and heading of the pedestrians in the 3D space. To realize our system, we propose a simple but effective calibration technique for synchronizing the timelines of the asynchronized IMUs. With our system, users can analyze the detailed motion behaviors of the people who participate in a group work or a collective activity, quantitatively. By combining with other sensors such as an eye tracker, our system can further provide more comprehensive data in the experiments.

  • K-tips Knowledge extension based on tailor-made information provision system

    Keita Nakayama, Atsushi Shimada, Tsubasa Minematsu, Yuta Taniguchi, Rin Ichiro Taniguchi

    16th International Conference on Cognition and Exploratory Learning in Digital Age, CELDA 2019 16th International Conference on Cognition and Exploratory Learning in Digital Age, CELDA 2019   355 - 362   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Thanks to an increase in the amount of information on the Internet and the spread of ICT-supported educational environments, much attention has been paid to learning support based on "smart" recommendation technologies. In this study, we propose an education improvement model based on the recommender system using the human-in-the-loop design strategy. Our proposed model enhances not only learners via recommendation, but also teachers and the system itself through the interaction between teachers and the system. In this paper, we introduce the details of the proposed model and implementation strategy followed by a report of preliminary experimental results.

  • Investigating error resolution processes in C programming exercise courses

    Yuta Taniguchi, Atsushi Shimada, Shin'ichi Konomi

    12th International Conference on Educational Data Mining, EDM 2019 EDM 2019 - Proceedings of the 12th International Conference on Educational Data Mining   655 - 658   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This study investigates how we can understand students' actual status in C programming exercises from their learning activity logs. In a face-to-face course of C programming exercise, it is hard for a teacher to see who are in trouble from their apperance. It is not always true that typing something means he or she is making some progress. Therefore it is important to identify, or possibly even predict, students having difficulty from their activity patterns. Most of the prior work paid attention to only trial-and-error activities, such as compile results and execution errors. However, it tends to be overlooked that knowledge acquisition process is also worthy of attention. When a student encounters a compile error, they usually read textbooks to seek a solution. It is considered to be useful for the task whether he or she has an ability to find appropriate pages for error resolution. In this paper, we propose a method to predict whether a student can resolve errors or not. Based on students' activity logs collected from our programming environment and e-book system, we conduct experiments to show and discuss the prediction performance.

  • Integrating Multimodal Learning Analytics and Inclusive Learning Support Systems for People of All Ages

    Kaori Tamura, Min Lu, Shin’ichi Konomi, Kohei Hatano, Miyuki Inaba, Misato Oi, Tsuyoshi Okamoto, Fumiya Okubo, Atsushi Shimada, Jingyun Wang, Masanori Yamada, Yuki Yamada

    11th International Conference on Cross-Cultural Design, CCD 2019, held as part of the 21st International Conference on Human-Computer Interaction, HCI International 2019 Cross-Cultural Design. Culture and Society - 11th International Conference, CCD 2019, Held as Part of the 21st HCI International Conference, HCII 2019, Proceedings   469 - 481   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Extended learning environments involving system to collect data for learning analytics and to support learners will be useful for all-age education. As the first steps towards to build new learning environments, we developed a system for multimodal learning analytics using eye-tracker and EEG measurement, and inclusive user interface design for elderly learners by dual-tablet system. Multimodal learning analytics system can be supportive to extract where and how learners with varied backgrounds feel difficulty in learning process. The eye-tracker can retrieve information where the learners paid attention. EEG signals will provide clues to estimate their mental states during gazes in learning. We developed simultaneous measurement system of these multimodal responses and are trying to integrate the information to explore learning problems. A dual-tablet user interface with simplified visual layers and more intuitive operations was designed aiming to reduce the physical and mental loads of elderly learners. A prototype was developed based on a cross-platform framework, which is being refined by iterative formative evaluations participated by elderlies, in order to improve the usability of the interface design. We propose a system architecture applying the multimodal learning analytics and the user-friendly design for elderly learners, which couples learning analytics “in the wild” environment and learning analytics in controlled lab environments.

    DOI: 10.1007/978-3-030-22580-3_35

  • Integrated contextual learning environments with sensor network for crop cultivation education Concept and design

    Rin Ichiro Taniguchi, Daisaku Arita, Atsushi Shimada, Masanori Yamada, Yoshiko Goda, Ryota Yamamoto, Takashi Okayasu

    16th International Conference on Cognition and Exploratory Learning in Digital Age, CELDA 2019 16th International Conference on Cognition and Exploratory Learning in Digital Age, CELDA 2019   242 - 248   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper presents an outline of our project, in which we develop an observation framework for integrating lecture and contextual learning in the field of crop cultivation. Specifically, we will use multi sensing of learners' activities in classrooms, and contextual learning in fieldwork, farm planting, and farming environments. The motivation for our project is twofold: First, crop cultivation provides a powerful illustration of educational technology. It requires both explicit knowledge (from lectures) and implicit knowledge (from contextual learning outside of class). Second, from a practical viewpoint, the number of Japanese farmers is shrinking due to low income and to aging population. Thus, in order to maintain crop yields, farming skills must be transferred efficiently to novice farm workers. Herein, the major features of our framework will be described.

  • Indoor positioning system based on chest-mounted IMU 査読

    Chuanhua Lu, Hideaki Uchiyama, Diego Thomas, Atsushi Shimada, Rin Ichiro Taniguchi

    Sensors (Switzerland)   19 ( 2 )   2019年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Demand for indoor navigation systems has been rapidly increasing with regard to location-based services. As a cost-effective choice, inertial measurement unit (IMU)-based pedestrian dead reckoning (PDR) systems have been developed for years because they do not require external devices to be installed in the environment. In this paper, we propose a PDR system based on a chest-mounted IMU as a novel installation position for body-suit-type systems. Since the IMU is mounted on a part of the upper body, the framework of the zero-velocity update cannot be applied because there are no periodical moments of zero velocity. Therefore, we propose a novel regression model for estimating step lengths only with accelerations to correctly compute step displacement by using the IMU data acquired at the chest. In addition, we integrated the idea of an efficient map-matching algorithm based on particle filtering into our system to improve positioning and heading accuracy. Since our system was designed for 3D navigation, which can estimate position in a multifloor building, we used a barometer to update pedestrian altitude, and the components of our map are designed to explicitly represent building-floor information. With our complete PDR system, we were awarded second place in 10 teams for the IPIN 2018 Competition Track 2, achieving a mean error of 5.2 m after the 800 m walking event.

    DOI: 10.3390/s19020420

  • Identifying solar panel defects with a CNN

    R. Sireyjol, P. Granberg, A. Shimada, T. Minematsu, R. Taniguchi

    14th International Conference on Quality Control by Artificial Vision, QCAV 2019 Fourteenth International Conference on Quality Control by Artificial Vision   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    With the development of green energy and its means of production, more and more companies chose to build solar panel farms. However, those technologies remain relatively expensive to maintain, and prone to damages (due to natural hazards, or internal defects). Since any kind of damage on a panel cell drastically reduce a panel's efficiency, solar panels must be kept under tight supervision. With more solar panel that must be checked for damage relatively often, a cheap, accurate and fast way to find those damages must be settled. Some processes have been developed to identify panels in a true color image [1], and various ways to identify defective panels exist through image processing [2], [3] or other ways [4]. On another hand, handmade features suggest the input data obeys to some specific conditions (color, illumination), and small changes can impact accuracy. CNN [5], however, can be trained to face such changes with the appropriate dataset, and therefore be more resilient. They represent a reliable solution for identification and classification of complex features [2], [6], and can be improved more easily than handmade feature detection. In this paper is detailed the pipeline of such process, combining the straightforward approach of handmade feature detection for preprocessing to reduce the input's complexity, with the resilience of neural networks for the final identification. Detailed explanations for the different steps of the process are given: Dataset acquisition, preprocessing, and finally classification. The various leads that were followed to improve the quality of the results are also given, before comparing results with a previously used handmade detection process, and finally proposing a web user interface to exploit this process, and enrich its dataset.

    DOI: 10.1117/12.2522098

  • Educational data mining for discovering hidden browsing patterns using non-negative matrix factorization 査読

    Kousuke Mouri, Fumiya Suzuki, Atsushi Shimada, Noriko Uosaki, Chengjiu Yin, Keiichi Kaneko, Hiroaki Ogata

    Interactive Learning Environments   2019年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    This paper describes a method to collect data of which section of pages learners were browsing in digital textbooks without eye-tracking technologies. In previous researches on digital textbook systems, it was difficult to collect such data without using eye-tackers. However, eye-trackers cost a massive budget. Our proposed system automatically hides the texts in the digital textbooks with mask processing before the learners browse the texts in the digital textbooks. If they click the hidden texts, the system gets rid of the masks and the texts appear letter by letter. We used NMF to discover learners’ browsing patterns from the collected logs. Evaluation experiments were conducted to examine the effectiveness of our system in terms of fascination, understandableness and enhancement of thinking and to discover learners’ browsing patterns. It was found that our method could enhance thinking skills. A browsing pattern of diligent learners with high learning achievements was also found.

    DOI: 10.1080/10494820.2019.1619594

  • Clustering of learners based on knowledge maps

    Akira Onoue, Atsushi Shimada, Tsubasa Minematsu, Rin Ichiro Taniguchi

    16th International Conference on Cognition and Exploratory Learning in Digital Age, CELDA 2019 16th International Conference on Cognition and Exploratory Learning in Digital Age, CELDA 2019   363 - 370   2019年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This study aimed to cluster learners based on the structures of the knowledge maps they created. Learners drew their own knowledge maps to reflect their learning activities. Our system collected individual knowledge maps from many learners and clustered them to generate an integrated version of the knowledge maps of each cluster. We applied the graph analysis method to extract important keywords from the knowledge map. The results of the analysis showed that the utilization of the knowledge map helped to improve lectures and grasp the learners' level of understanding. We conducted surveys asking course managers to evaluate the effectiveness of the integrated knowledge maps of learners included in the cluster and received both positive and negative responses.

  • An automatic quiz generation system utilizing digital textbook logs 査読

    Kousuke Mouri, Noriko Uosaki, Mohammad Hasnine, Atsushi Shimada, Chengjiu Yin, Keiichi Kaneko, Hiroaki Ogata

    Interactive Learning Environments   2019年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    This paper describes an automatic quiz generation system designed to support language learning that utilizes digital textbook logs. Learners often memorize words in digital textbooks while preparing for an examination, and they often use the highlight function for the words. Previous studies regarding annotations and highlights have shown that learning only by using the highlight function on important content in textbooks did not affect learning achievements. Therefore, in this study, we developed a system that can support the repeated learning by analyzing digital textbook logs and providing appropriate quizzes. An evaluation experiment involving 31 international students was conducted to assess whether the quizzes provided by our proposed system are able to enhance the learning achievements as compared to teacher-created quizzes. The results show that the quizzes by our proposed system and the teacher-created quizzes were both equally effective. A correlation analysis was conducted to identify the correlation among the learning achievements, the number of quizzes, and each variable in questionnaires. We found that there is a positive correlation between the number of quizzes and the students’ learning achievements.

    DOI: 10.1080/10494820.2019.1620291

  • Real-time learning analytics system for improvement of on-site lectures 査読

    Atsushi Shimada, Shin’ichi Konomi, Hiroaki Ogata

    Interactive Technology and Smart Education   15 ( 4 )   314 - 331   2018年11月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Purpose: The purpose of this study is to propose a real-time lecture supporting system. The target of this study is on-site classrooms where teachers give lectures and a lot of students listen to teachers’ explanations, conduct exercises, etc. Design/methodology/approach: The proposed system uses an e-learning system and an e-book system to collect teaching and learning activities from a teacher and students in real time. The collected data are immediately analyzed to provide feedback to the teacher just before the lecture starts and during the lecture. For example, the teacher can check which pages were well previewed and which pages were not previewed by students using the preview achievement graph. During the lecture, real-time analytics graphs are shown on the teacher’s PC. The teacher can easily grasp students’ status and whether or not students are following the teacher’s explanation. Findings: Through the case study, the authors first confirmed the effectiveness of each tool developed in this study. Then, the authors conducted a large-scale experiment using a real-time analytics graph and investigated whether the proposed system could improve the teaching and learning in on-site classrooms. The results indicated that teachers could adjust the speed of their lecture based on the real-time feedback system, which also resulted in encouraging students to put bookmarks and highlights on keywords and sentences. Originality/value: Real-time learning analytics enables teachers and students to enhance their teaching and learning during lectures. Teachers should start considering this new strategy to improve their lectures immediately.

    DOI: 10.1108/ITSE-05-2018-0026

  • Yield visualization based on farm work information measured by smart devices 査読

    Yoshiki Hashimoto, Daisaku Arita, Atsushi Shimada, Takashi Yoshinaga, Takashi Okayasu, Hideaki Uchiyama, Rin Ichiro Taniguchi

    Sensors (Switzerland)   18 ( 11 )   2018年11月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    This paper proposes a new approach to visualizing spatial variation of plant status in a tomato greenhouse based on farm work information operated by laborers. Farm work information consists of a farm laborer’s position and action. A farm laborer’s position is estimated based on radio wave strength measured by using a smartphone carried by the farm laborer and Bluetooth beacons placed in the greenhouse. A farm laborer’s action is recognized based on motion data measured by using smartwatches worn on both wrists of the farm laborer. As experiment, harvesting information operated by one farm laborer in a part of a tomato greenhouse is obtained, and the spatial distribution of yields in the experimental field, called a harvesting map, is visualized. The mean absolute error of the number of harvested tomatoes in each small section of the experimental field is 0.35. An interview with the farm manager shows that the harvesting map is useful for intuitively grasping the states of the greenhouse.

    DOI: 10.3390/s18113906

  • Sparse cost volume for efficient stereo matching 査読

    Chuanhua Lu, Hideaki Uchiyama, Diego Thomas, Atsushi Shimada, Rin ichiro Taniguchi

    Remote Sensing   10 ( 11 )   2018年11月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Stereo matching has been solved as a supervised learning task with convolutional neural network (CNN). However, CNN based approaches basically require huge memory use. In addition, it is still challenging to find correct correspondences between images at ill-posed dim and sensor noise regions. To solve these problems, we propose Sparse Cost Volume Net (SCV-Net) achieving high accuracy, low memory cost and fast computation. The idea of the cost volume for stereo matching was initially proposed in GC-Net. In our work, by making the cost volume compact and proposing an efficient similarity evaluation for the volume, we achieved faster stereo matching while improving the accuracy. Moreover, we propose to use weight normalization instead of commonly-used batch normalization for stereo matching tasks. This improves the robustness to not only sensor noises in images but also batch size in the training process. We evaluated our proposed network on the Scene Flow and KITTI 2015 datasets, its performance overall surpasses the GC-Net. Comparing with the GC-Net, our SCV-Net achieved to: (1) reduce 73.08% GPU memory cost; (2) reduce 61.11% processing time; (3) improve the 3PE from 2.87% to 2.61% on the KITTI 2015 dataset.

    DOI: 10.3390/rs10111844

  • Seamless learning infrastructure for finding relationships between lectures and practical training

    Kousuke Mouri, Mohammad Nehal Hasnine, Takafumi Tanaka, Uosaki Noriko, Chengjiu Yin, Atsushi Shimada, Hiroaki Ogata

    26th International Conference on Computers in Education, ICCE 2018 ICCE 2018 - 26th International Conference on Computers in Education, Main Conference Proceedings   530 - 532   2018年11月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper describes an infrastructure for seamless learning analytics to bridge digital textbook learning and practical training such as programming and conceptual modeling education. To realize the infrastructure for seamless learning analytics, we propose the integration of a digital textbook system into a software learning support system. By using our proposed infrastructure, all learning data will be sent by xAPI and collected in an independent LRS. We believe that analyzing and visualizing the relationships between the learning in the digital textbook system and practical training in the software learning support system leads to improving the quality of learning and teaching.

  • Poster Early change detection based on Spotrank

    Akira Onoue, Atsushi Shimada, Maiya Hori, Rin-Ichiro Taniguchi

    2018 Joint ACM International Conference on Pervasive and Ubiquitous Computing, UbiComp 2018 and 2018 ACM International Symposium on Wearable Computers, ISWC 2018 UbiComp/ISWC 2018 - Adjunct Proceedings of the 2018 ACM International Joint Conference on Pervasive and Ubiquitous Computing and Proceedings of the 2018 ACM International Symposium on Wearable Computers   198 - 201   2018年10月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper proposes a new method of early change detection for people flow analysis. Some conventional methods often focus on a single location (spot) to demonstrate how the number of people changes over time. In contrast, our proposed method takes into account the links between the spots to grasp a foretaste of congestion of a specific spot as early as possible. The main advantage of the proposed method is that it not only describes the characteristics of each spot, but also the relationships among spots, i.e., whether the connectivities are strong/weak. We introduce an idea of PageRank, which is based on a centrality of graph theory and extend that idea to represent the amount of people flow among spots. We call the extended method “SpotRank”. SpotRank assigns an importance score to each spot. The score of a particular spot is calculated by the number of paths and the amount of people flow from other spots. Therefore, the more paths and people flow, the importance score (ranking) increases. The proposed method begins with the calculation of SpotRank every 10 min, followed by change detection, i.e., how much the ranking changes over time. In our experiments, we measured people flow using Wi-Fi packet sensors for a period of over 16 weeks. We confirmed the effectiveness of the proposed method, which successfully grasped a foretaste of congestion at a restaurant in our university.

    DOI: 10.1145/3267305.3267565

  • Redesign of a Data Collection in Digital Textbook Systems

    Kousuke Mouri, Noriko Uosaki, Atsushi Shimada, Chengjiu Yin, Keiichi Kaneko, Hiroaki Ogata

    7th International Congress on Advanced Applied Informatics, IIAI-AAI 2018 Proceedings - 2018 7th International Congress on Advanced Applied Informatics, IIAI-AAI 2018   942 - 943   2018年7月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper describes redesign of data collection in digital textbook systems. Previous studies in the digital textbook systems allow us to collect the data which pages learners were browsing in the digital textbooks. However, it is difficult to collect the data which positions of the pages learners were browsing in the digital textbooks unless using eye-tracking technologies. This study developed a digital textbook system called SEA (Smart E-textbook Application) to collect the data which positions of the pages the learners were browsing in the digital textbooks without eye-tracking technologies. The system automatically hides the texts in the digital textbook system with mask processing. An evaluation experiment was conducted to evaluate the user acceptance regarding our developed system.

    DOI: 10.1109/IIAI-AAI.2018.00192

  • Automatic Summarization of Lecture Slides for Enhanced Student Preview-Technical Report and User Study 査読

    Atsushi Shimada, Fumiya Okubo, Chengjiu Yin, Hiroaki Ogata

    IEEE Transactions on Learning Technologies   11 ( 2 )   165 - 178   2018年4月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    This paper is an extension of research originally reported in [1]. Here, we propose a novel method for summarizing lecture slides to enhance students' preview efficiency and understanding of the content. Students are often asked to prepare for a class by reading lecture materials. However, because the attention span of students is limited, this is not always beneficial. We surveyed 326 students regarding the preview of lecture materials, revealing a preference for summarized materials to preview. Therefore, we developed an automatic summarization method for condensing original lecture materials into a summarized set. Our proposed approach utilizes image and text processing to extract important pages from lecture materials, optimizing selection of pages in accordance with a specified preview time. We applied the proposed summarization method to a set of lecture slides. In an experiment with 372 students, we compared the effectiveness of the summarized slides and the original materials in terms of quiz scores, preview achievement ratio, and time spent previewing. We found that students who previewed the summarized slides achieved better scores on pre-lecture quizzes, even though they spent less time previewing the material.

    DOI: 10.1109/TLT.2017.2682086

  • Reconstruction-based change detection with image completion for a free-moving camera 査読

    Tsubasa Minematsu, Atsushi Shimada, Hideaki Uchiyama, Vincent Charvillat, Rin Ichiro Taniguchi

    Sensors (Switzerland)   18 ( 4 )   2018年4月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Reconstruction-based change detection methods are robust for camera motion. The methods learn reconstruction of input images based on background images. Foreground regions are detected based on the magnitude of the difference between an input image and a reconstructed input image. For learning, only background images are used. Therefore, foreground regions have larger differences than background regions. Traditional reconstruction-based methods have two problems. One is over-reconstruction of foreground regions. The other is that decision of change detection depends on magnitudes of differences only. It is difficult to distinguish magnitudes of differences in foreground regions when the foreground regions are completely reconstructed in patch images. We propose the framework of a reconstruction-based change detection method for a free-moving camera using patch images. To avoid over-reconstruction of foreground regions, our method reconstructs a masked central region in a patch image from a region surrounding the central region. Differences in foreground regions are enhanced because foreground regions in patch images are removed by the masking procedure. Change detection is learned from a patch image and a reconstructed image automatically. The decision procedure directly uses patch images rather than the differences between patch images. Our method achieves better accuracy compared to traditional reconstruction-based methods without masking patch images.

    DOI: 10.3390/s18041232

  • Online change detection for monitoring individual student behavior via clickstream data on E-book system

    Atsushi Shimada, Yuta Taniguchi, Fumiya Okubo, Shin’ichi Konomi, Hiroaki Ogata

    8th International Conference on Learning Analytics and Knowledge, LAK 2018 Proceedings of the 8th International Conference on Learning Analytics and Knowledge Towards User-Centred Learning Analytics, LAK 2018   446 - 450   2018年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a new change detection method using clickstream data collected through an e-Book system. Most of the prior work has focused on the batch processing of clickstream data. In contrast, the proposed method is designed for online processing, with the model parameters for change detection updated sequentially based on observations of new click events. More specifically, our method generates a model for an individual student and performs minute-by-minute change detection based on click events during a classroom lecture. We collected clickstream data from four face-to-face lectures, and conducted experiments to demonstrate how the proposed method discovered change points and how such change points correlated with the students’ performances.

    DOI: 10.1145/3170358.3170412

    リポジトリ公開URL: https://hdl.handle.net/2324/7341548

  • Sensing technologies for advanced smart agricultural systems

    Hideaki Uchiyama, Shunsuke Sakurai, Yoshiki Hashimoto, Atsutoshi Hanasaki, Daisaku Arita, Takashi Okayasu, Atsushi Shimada, Rin Ichiro Taniguchi

    11th International Conference on Sensing Technology, ICST 2017 2017 11th International Conference on Sensing Technology, ICST 2017   1 - 4   2018年2月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We introduce our sensing technologies to acquire agricultural information, such as image-based plant phenotyping, harvest quantity data, and localization information using a camera in a greenhouse. Commercial systems exist that support agriculture, but many unresolved issues remain regarding optimization of farming sustainability and productivity. Therefore, we intend to apply state-of-the-art information and communication technology (ICT) to tackle these agricultural issues and to investigate their limitations for developing advanced smart agricultural systems.

    DOI: 10.1109/ICSensT.2017.8304451

  • Br-MAP Concept map system using e-book logs

    Masanori Yamada, Atsushi Shimada, Misato Oi, Yuta Taniguchi, Shinichi Konomi

    15th International Conference on Cognition and Exploratory Learning in the Digital Age, CELDA 2018 Proceedings of the 15th International Conference on Cognition and Exploratory Learning in the Digital Age, CELDA 2018   248 - 254   2018年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This preliminary study developed the concept map tool “BR-Map” using learning logs on eBook viewer, and investigated the relationships between self-regulated learning (SRL) awareness, learning behaviors (usage of BR-Map, and one-minute paper and report submission), and learning performance. Psychometric data and learning logs were collected in the lecture course, and their relationships were analyzed using Spearman’s correlation analysis. The results indicated that awareness of intrinsic value, use of cognitive learning strategies, and self-regulation had significant correlations with the usage of BR-Map. The awareness of cognitive learning strategies had significant correlation with standard deviation of one-minute paper submission hours. With regard to relationships between the BR-Map usage and learning behaviors, the relationships between the usage of BR-Map and one-minute paper submissions, which was a regularly weekly assigned task, were found.

  • Visualization of farm field information based on farm worker activity sensing

    Daisaku Arita, Yoshiki Hashimoto, Atsushi Shimada, Hideaki Uchiyama, Rin ichiro Taniguchi

    6th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2018 Held as Part of HCI International 2018 Distributed, Ambient and Pervasive Interactions Understanding Humans - 6th International Conference, DAPI 2018, Held as Part of HCI International 2018, Proceedings   191 - 202   2018年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Our research goal is to construct a system to measure farm labor activities in a farm field and visualize farm field information based on the activities. As the first step for the goal, this paper proposes a method to measure harvesting information of farm labors in a tomato greenhouse and to visualize the tomato yield distribution in the greenhouse, we call it a harvesting map, for supporting the farm managers making decisions. A harvesting map shows daily, weekly and monthly tomato yields in small sections into which the tomato greenhouse is divided.

    DOI: 10.1007/978-3-319-91125-0_16

  • Two-step transfer learning for semantic plant segmentation

    Shunsuke Sakurai, Hideaki Uchiyama, Atsushi Shimada, Daisaku Arita, Rin ichiro Taniguchi

    7th International Conference on Pattern Recognition Applications and Methods, ICPRAM 2018 ICPRAM 2018 - Proceedings of the 7th International Conference on Pattern Recognition Applications and Methods   332 - 339   2018年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We discuss the applicability of a fully convolutional network (FCN), which provides promising performance in semantic segmentation tasks, to plant segmentation tasks. The challenge lies in training the network with a small dataset because there are not many samples in plant image datasets, as compared to object image datasets such as ImageNet and PASCAL VOC datasets. The proposed method is inspired by transfer learning, but involves a two-step adaptation. In the first step, we apply transfer learning from a source domain that contains many objects with a large amount of labeled data to a major category in the plant domain. Then, in the second step, category adaptation is performed from the major category to a minor category with a few samples within the plant domain. With leaf segmentation challenge (LSC) dataset, the experimental results confirm the effectiveness of the proposed method such that F-measure criterion was, for instance, 0.953 for the A2 dataset, which was 0.355 higher than that of direct adaptation, and 0.527 higher than that of non-adaptation.

    DOI: 10.5220/0006576303320339

  • Design and evaluation of seamless learning analytics

    Kousuke Mouri, Noriko Uosaki, Atsushi Shimada

    6th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2018 Held as Part of HCI International 2018 Distributed, Ambient and Pervasive Interactions Technologies and Contexts - 6th International Conference, DAPI 2018, Held as Part of HCI International 2018, Proceedings   101 - 111   2018年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper describes a learning analytics perspective for designing to implement a seamless learning environment. Seamless learning has been focused on supporting learning across formal and informal learning contexts, individual and social learning and physical world and cyberspace. Majority of the current researches have realized a seamless learning environment by using the technologies such as smart-phone and GPS at schools or universities. However, utilization of the collected learning logs still remains a challenge yet to be explored. In this study, to construct a seamless learning environment, this study developed a system that integrated a digital textbook system called AETEL with a ubiquitous learning system called SCROLL. The system enables learners to bridge the learning between digital textbook learning and real-life learning. To analyze and visualize the relationships between them, this study developed an innovative system called VASCORLL 2.0 (Visualization and analysis System for Connecting Relationships of Learning Logs). An experiment was conducted to evaluate whether VASCORLL 2.0 can increase learners’ learning opportunities. As a result, they were able to increase their learning opportunities by using VASCORLL 2.0. It contributed to enhancing learning activities in the seamless learning environment by utilizing the collected learning logs with well-designed analysis and visualization approaches.

    DOI: 10.1007/978-3-319-91131-1_8

  • Analytics of deep neural network-based background subtraction 査読

    Tsubasa Minematsu, Atsushi Shimada, Hideaki Uchiyama, Rin ichiro Taniguchi

    Journal of Imaging   4 ( 6 )   2018年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Deep neural network-based (DNN-based) background subtraction has demonstrated excellent performance for moving object detection. The DNN-based background subtraction automatically learns the background features from training images and outperforms conventional background modeling based on handcraft features. However, previous works fail to detail why DNNs work well for change detection. This discussion helps to understand the potential of DNNs in background subtraction and to improve DNNs. In this paper, we observe feature maps in all layers of a DNN used in our investigation directly. The DNN provides feature maps with the same resolution as that of the input image. These feature maps help to analyze DNN behaviors because feature maps and the input image can be simultaneously compared. Furthermore, we analyzed important filters for the detection accuracy by removing specific filters from the trained DNN. From the experiments, we found that the DNN consists of subtraction operations in convolutional layers and thresholding operations in bias layers and scene-specific filters are generated to suppress false positives from dynamic backgrounds. In addition, we discuss the characteristics and issues of the DNN based on our observation.

    DOI: 10.3390/jimaging4060078

  • リアルタイム学習分析に基づく講義支援 (教育工学)

    Atsushi Shimada, 緒方 広明, Shinichi Konomi

    IEICE technical report   117 ( 421 )   5 - 8   2018年1月

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    記述言語:日本語   掲載種別:研究論文(学術雑誌)  

    Lecture Support based on Real-time Learning Analytics

  • Visualization of real world activity on group work

    Daisuke Deguchi, Kazuaki Kondo, Atsushi Shimada

    6th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2018 Held as Part of HCI International 2018 Distributed, Ambient and Pervasive Interactions Technologies and Contexts - 6th International Conference, DAPI 2018, Held as Part of HCI International 2018, Proceedings   23 - 37   2018年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Group work is widely introduced and practiced as a method to achieve the learning goal efficiently by collaborating group members. However, since most types of group works are carried out in the real environment, it is very difficult to perform formative assessment and real time evaluation without students’ feedbacks. Therefore, there is a strong demand to develop a method that supports evaluation of group work. To support evaluation of group work, this paper proposes a method to visualize the real world activity during group work by using first person view cameras and wearable sensors. Here, the proposed method visualizes three scores: (1) individual attention, (2) hand visibility, (3) individual activity. To evaluate the performance and analyze the relationships between scores, we conducted experiments of “Marshmallow challenge” that is a collaborative work to construct a tower using marshmallow and spaghetti within a limit of time. Through the experiments, we confirmed that the proposed method has potential to become a evaluation tool for visualizing the activity of the group work.

    DOI: 10.1007/978-3-319-91131-1_2

  • Towards supporting multigenerational co-creation and social activities Extending learning analytics platforms and beyond

    Shinichi Konomi, kohei hatano, Miyuki Inaba, Misato Oi, Tsuyoshi Okamoto, Fumiya Okubo, Atsushi Shimada, Jingyun Wang, Masanori Yamada, Yuki Yamada

    6th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2018 Held as Part of HCI International 2018 Distributed, Ambient and Pervasive Interactions Technologies and Contexts - 6th International Conference, DAPI 2018, Held as Part of HCI International 2018, Proceedings   82 - 91   2018年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    As smart technologies pervade our everyday environments, they change what people should learn to live meaningfully as valuable participants of our society. For instance, ubiquitous availability of smart devices and communication networks may have reduced the burden for people to remember factual information. At the same time, they may have increased the benefits to master the uses of new digital technologies. In the midst of such a social and technological shift, we could design novel integrated platforms that support people at all ages to learn, work, collaborate, and co-create easily. In this paper, we discuss our ideas and first steps towards building an extended learning analytics platform that elderly people and unskilled adults can use. By understanding the characteristics and needs of elderly learners and addressing critical user interface issues, we can build pervasive and inclusive learning analytics platforms that trigger contextual reminders to support people at all ages to live and learn actively regardless of age-related differences of cognitive capabilities. We discuss that resolving critical usability problems for elderly people could open up a plethora of opportunities for them to search and exploit vast amount of information to achieve various goals.

    DOI: 10.1007/978-3-319-91131-1_6

  • Simulation of energy management by controlling crowd behavior

    Maiya Hori, Keita Nakayama, Atsushi Shimada, Rin ichiro Taniguchi

    6th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2018 Held as Part of HCI International 2018 Distributed, Ambient and Pervasive Interactions Understanding Humans - 6th International Conference, DAPI 2018, Held as Part of HCI International 2018, Proceedings   232 - 241   2018年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a method of energy management aimed at reducing the emission of carbon dioxide by changing people’s behavior in small and medium-sized electricity communities. In the conventional energy management system, a power peak is cut and shifted mainly using solar power generation and batteries. In this research, a power peak is cut and shifted by controlling the power demand. The power demand for each facility in small communities is controlled by changing crowd behavior. In experiments, models for predicting power demand according to crowd congestion are constructed for each facility and the accuracies of prediction are verified.

    DOI: 10.1007/978-3-319-91125-0_20

  • Potential of wearable technology for super-aging societies

    Atsushi Shimada

    6th International Conference on Distributed, Ambient and Pervasive Interactions, DAPI 2018 Held as Part of HCI International 2018 Distributed, Ambient and Pervasive Interactions Technologies and Contexts - 6th International Conference, DAPI 2018, Held as Part of HCI International 2018, Proceedings   214 - 226   2018年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    The paper discusses the potential of wearable devices and mainly focuses on smartwatches for super-aging societies. A smartwatch is designed to be worn on the wrist similar to a traditional watch. Additionally, smartwatches involve touch screens, software applications, and IMU (inertial measurement unit) sensors. Smartphones are mainly utilized for notifications related to phone calls, mails, SNS, or healthcare applications to measure and record heart rate and other vital signals. Conversely, smartwatches exhibit significant potential to generate new value in our daily life. In the paper, we introduce three applications with smartwatches published in extant studies and discuss the applicability of smartwatch applications to super-aging societies.

    DOI: 10.1007/978-3-319-91131-1_17

  • On the prediction of students’ quiz score by recurrent neural network 査読

    Fumiya Okubo, Takayoshi Yamashita, Atsushi Shimada, Yuta Taniguchi, Konomi Shin’ichi

    2nd Multimodal Learning Analytics Across (Physical and Digital) Spaces, CrossMMLA 2018 CEUR Workshop Proceedings   2163   2018年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, we explore the factor for improving the performance of prediction of students’ quiz scores by using a Recurrent Neural Network. The proposed method is applied to the log data of 2693 students in 15 courses that were conducted with following the common syllabus by 10 teachers. The experimental results show that in the case where the same teacher is not included in both training and test data, the accuracy of prediction slightly lower. We also show that at the beginning of a course, it is better to construct a prediction model including various items of learning logs, however, in the latter half, it is better to update the model by using selected information only.

  • Congestion analysis across locations based on wi-fi signal sensing

    Atsushi Shimada, Kaito Oka, Masaki Igarashi, Rin-Ichiro Taniguchi

    6th International Conference on Pattern Recognition Applications and Methods, ICPRAM 2017 Pattern Recognition Applications and Methods - 6th International Conference, ICPRAM 2017, Revised Selected Papers   204 - 221   2018年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Many studies related to congestion analysis focus on estimating quantitative values such as actual number of people, mobile devices, and crowd density. In contrast, we focus on perceptual congestion rather than quantitative congestion; however, we also analyze the relationship between quantitative and perceptual congestion. We construct a system for estimating and visualizing congestion and collecting user reports about congestion. We use the number of mobile devices as quantitative congestion measurements obtained from Wi-Fi packet sensors and a user report-based congestion as a perceptual congestion measurement collected via our Web system. In our experiments, we investigate the relationship between these values. In addition, we apply Non-negative Tensor Factorization to extract latent patterns between locations and congestion. These latent features help us to understand the relationship of the characteristics among the locations.

    DOI: 10.1007/978-3-319-93647-5_12

  • Adapting local features for face detection in thermal image 査読

    Chao Ma, Ngo Thanh Trung, Hideaki Uchiyama, Hajime Nagahara, Atsushi Shimada, Rin Ichiro Taniguchi

    Sensors (Switzerland)   17 ( 12 )   2017年12月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    A thermal camera captures the temperature distribution of a scene as a thermal image. In thermal images, facial appearances of different people under different lighting conditions are similar. This is because facial temperature distribution is generally constant and not affected by lighting condition. This similarity in face appearances is advantageous for face detection. To detect faces in thermal images, cascade classifiers with Haar-like features are generally used. However, there are few studies exploring the local features for face detection in thermal images. In this paper, we introduce two approaches relying on local features for face detection in thermal images. First, we create new feature types by extending Multi-Block LBP. We consider a margin around the reference and the generally constant distribution of facial temperature. In this way, we make the features more robust to image noise and more effective for face detection in thermal images. Second, we propose an AdaBoost-based training method to get cascade classifiers with multiple types of local features. These feature types have different advantages. In this way we enhance the description power of local features. We did a hold-out validation experiment and a field experiment. In the hold-out validation experiment, we captured a dataset from 20 participants, comprising 14 males and 6 females. For each participant, we captured 420 images with 10 variations in camera distance, 21 poses, and 2 appearances (participant with/without glasses). We compared the performance of cascade classifiers trained by different sets of the features. The experiment results showed that the proposed approaches effectively improve the performance of face detection in thermal images. In the field experiment, we compared the face detection performance in realistic scenes using thermal and RGB images, and gave discussion based on the results.

    DOI: 10.3390/s17122741

  • Learning analytics of the relationships among self-regulated learning, learning behaviors, and learning performance 査読

    Masanori Yamada, Atsushi Shimada, Fumiya Okubo, Misato Oi, Kentaro Kojima, Hiroaki Ogata

    Research and Practice in Technology Enhanced Learning   12 ( 1 )   2017年12月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    This research aims to investigate the relationship between self-regulated learning awareness, learning behaviors, and learning performance in ubiquitous learning environments. In order to conduct this research, psychometric data about self-regulated learning and log data, such as slide pages that learners read, marker, and annotate, was collected. The accessing activity of device types that stored the learning management system was collected and analyzed by applying path analysis and correlation analysis using data divided into high and low performers. The results indicated that the slide pages which learners read for a duration of between 240 and 299 s had positive effects on the promotion of annotation and the learning performance directly, and albeit indirectly, the enhancement of self-efficacy was affected by other self-regulated learning factors. The results of the correlation analysis indicated that self-efficacy and test anxiety are a key factor that has different effects on the number of the read slide pages in both high and low performers.

    DOI: 10.1186/s41039-017-0053-9

  • Analytics of deep neural network in change detection

    Tsubasa Minematsu, Atsushi Shimada, Rin Ichiro Taniguchi

    14th IEEE International Conference on Advanced Video and Signal Based Surveillance, AVSS 2017 2017 14th IEEE International Conference on Advanced Video and Signal Based Surveillance, AVSS 2017   2017年10月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Recently, deep neural networks (DNNs) have demonstrated excellent performance for change detection. The DNN-based background subtraction automatically discovers background features from datasets and outperforms traditional background modeling based on handcraft features and/or subtraction strategies. Most researchers mainly discuss the accuracy of foreground detection and do not analyze how and why the DNN works well for change detection tasks. It is necessary to understand what the DNN learns as background features in order to discuss the potential of the DNN in background subtraction. In this paper, we focus on the filters in the first convolution layer and the activations of neurons in the last fully connected layer to understand the behavior of the DNN. From the experiment, we found that 1) the first layer performs the role of background subtraction using several filters, and 2) the last layer categorizes some background changes into a group without supervised signals. These findings suggest the possibility of a new background modeling strategy based on data-driven extracted features.

    DOI: 10.1109/AVSS.2017.8078550

  • Adaptive background model registration for moving cameras 査読

    Tsubasa Minematsu, Hideaki Uchiyama, Atsushi Shimada, Hajime Nagahara, Rin ichiro Taniguchi

    Pattern Recognition Letters   96   86 - 95   2017年9月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose a framework for adaptively registering background models with an image for background subtraction with moving cameras. Existing methods search for a background model using a fixed window size, to suppress the number of false positives when detecting the foreground. However, these approaches result in many false negatives because they may use inappropriate window sizes. The appropriate size depends on various factors of the target scenes. To suppress false detections, we propose adaptively controlling the method parameters, which are typically determined heuristically. More specifically, the search window size for background registration and the foreground detection threshold are automatically determined using the re-projection error computed by the homography based camera motion estimate. Our method is based on the fact that the error at a pixel is low if it belongs to background and high if it does not. We quantitatively confirmed that the proposed framework improved the background subtraction accuracy when applied to images from moving cameras in various public datasets.

    DOI: 10.1016/j.patrec.2017.03.010

  • Face-to-Face Teaching Analytics Extracting Teaching Activities from E-Book Logs via Time-Series Analysis

    Daiki Suehiro, Yuta Taniguchi, Hiroaki Ogata

    17th IEEE International Conference on Advanced Learning Technologies, ICALT 2017 Proceedings - IEEE 17th International Conference on Advanced Learning Technologies, ICALT 2017   267 - 268   2017年8月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    To discover teaching knowledge efficiently, we must extract the various teaching activities from educational data. In this paper, through the use of e-book logs and techniques of time-series analysis, we describe a method of practicing teaching analytics in face-to-face classes, one which enable us to extract the teaching activity efficiently and accurately.

    DOI: 10.1109/ICALT.2017.75

  • Revealing Hidden Impression Topics in Students' Journals Based on Nonnegative Matrix Factorization

    Yuta Taniguchi, Daiki Suehiro, Hiroaki Ogata

    17th IEEE International Conference on Advanced Learning Technologies, ICALT 2017 Proceedings - IEEE 17th International Conference on Advanced Learning Technologies, ICALT 2017   298 - 300   2017年8月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Students' reflective writings are useful not only for students themselves but also teachers. It is important for teachers to know which concepts were understood well by students and which concepts were not, to continuously improve their classes. However, it is difficult for teachers to thoroughly read the journals of more than one hundred students. In this paper, we propose a novel method to extract common topics and students' common impressions against them from students' journals. Weekly keywords are discovered from journals by scoring noun words with a measure based on TF-IDF term weighting scheme, and then we analyze co-occurrence relationships between extracted keywords and adjectives. We employs nonnegative matrix factorization, one of the topic modeling techniques, to discover the hidden impression topics from the co-occurrence relationships. As a case study, we applied our method on students' journals of the course 'Information Science' held in our university. Our experimental results show that conceptual keywords are successfully extracted, and four significant impression topics are identified. We conclude that our analysis method can be used to collectively understand the impressions of students from journal texts.

    DOI: 10.1109/ICALT.2017.113

  • Real-Time Learning Analytics of e-Book Operation Logs for On-site Lecture Support

    Atsushi Shimada, Kousuke Mouri, Hiroaki Ogata

    17th IEEE International Conference on Advanced Learning Technologies, ICALT 2017 Proceedings - IEEE 17th International Conference on Advanced Learning Technologies, ICALT 2017   274 - 275   2017年8月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    A real-time learning analytics system is proposed for in-classroom use. We used an e-learning system and an e-book system to collect real-time learning activities during lectures. The collected logs were analyzed and presented visually on a web-based system for the teacher. The teacher can monitor how many students are viewing the same page as the teacher, whether they are following the explanation, or if they are reading previous or subsequent pages. Through a case study, we confirmed the effectiveness of the real-time learning analytics system, in terms of high synchronization between the teacher and the students, i.e., that the majority of students followed the teacher's explanation and added more bookmarks, highlights, or notes on the e-book, compared with the control group where the teacher did not use our system.

    DOI: 10.1109/ICALT.2017.74

  • An Easy-to-Setup 3D Phenotyping Platform for KOMATSUNA Dataset

    Hideaki Uchiyama, Shunsuke Sakurai, Masashi Mishima, Daisaku Arita, Takashi Okayasu, Atsushi Shimada, Rin Ichiro Taniguchi

    16th IEEE International Conference on Computer Vision Workshops, ICCVW 2017 Proceedings - 2017 IEEE International Conference on Computer Vision Workshops, ICCVW 2017   2038 - 2045   2017年7月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We present a 3D phenotyping platform that measures both plant growth and environmental information in small indoor environments for plant image datasets. Our objective is to construct a compact and complete platform by using commercial devices to allow any researcher to begin plant phenotyping in their laboratory. In addition, we introduce our annotation tool to manually but effectively create leaf labels in plant images on a pixel-by-pixel basis. Finally, we show our RGB-D and multiview datasets containing images in the early growth stages of the Komatsuna with leaf annotation.

    DOI: 10.1109/ICCVW.2017.239

  • Learning analytics for E-book-based educational big data in higher education

    Hiroaki Ogata, Misato Oi, Kousuke Mohri, Fumiya Okubo, Atsushi Shimada, Masanori Yamada, Jingyun Wang, Sachio Hirokawa

    Smart Sensors at the IoT Frontier   327 - 350   2017年5月

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    記述言語:英語  

    DOI: 10.1007/978-3-319-55345-0_13

  • A neural network approach for students' performance prediction

    F. Okubo, A. Shimada, T. Yamashita, H. Ogata

    7th International Conference on Learning Analytics and Knowledge, LAK 2017 LAK 2017 Conference Proceedings - 7th International Learning Analytics and Knowledge Conference Understanding, Informing and Improving Learning with Data   598 - 599   2017年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we propose a method for predicting final grades of students by a Recurrent Neural Network (RNN) from the log data stored in the educational systems. We applied this method to the log data from 108 students and examined the accuracy of prediction. From the experimental results, comparing with multiple regression analysis, it is confirmed that an RNN is effective to early prediction of final grades.

    DOI: 10.1145/3027385.3029479

  • Reproducibility of findings from educational big data A preliminary study

    Misato Oi, Masanori Yamada, Fumiya Okubo, Atsushi Shimada, Hiroaki Ogata

    7th International Conference on Learning Analytics and Knowledge, LAK 2017 LAK 2017 Conference Proceedings - 7th International Learning Analytics and Knowledge Conference Understanding, Informing and Improving Learning with Data   536 - 537   2017年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we examined whether previous findings on educational big data consisting of e-book logs from a given academic course can be reproduced with different data from other academic courses. The previous findings showed that (1) students who attained consistently good achievement more frequently browsed different e-books and their pages than low achievers and that (2) this difference was found only for logs of preparation for course sessions (preview), not for reviewing material (review). Preliminarily, we analyzed e-book logs from four courses. The results were reproduced in only one course and only partially, that is, (1) high achievers more frequently changed e-books than low achievers (2) for preview. This finding suggests that to allow effective usage of learning and teaching analyses, we need to carefully construct an educational environment to ensure reproducibility.

    DOI: 10.1145/3027385.3029445

  • Real-time learning analytics for C programming language courses

    Xinyu Fu, Atsushi Shimada, Hiroaki Ogata, Yuta Taniguchi, Daiki Suehiro

    7th International Conference on Learning Analytics and Knowledge, LAK 2017 LAK 2017 Conference Proceedings - 7th International Learning Analytics and Knowledge Conference Understanding, Informing and Improving Learning with Data   280 - 288   2017年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Many universities choose the C programming language (C) as the first one they teach their students, early on in their program. However, students often consider programming courses difficult, and these courses often have among the highest dropout rates of computer science courses offered. It is therefore critical to provide more effective instruction to help students understand the syntax of C and prevent them losing interest in programming. In addition, homework and paper-based exams are still the main assessment methods in the majority of classrooms. It is difficult for teachers to grasp students' learning situation due to the large amount of evaluation work. To facilitate teaching and learning of C, in this article we propose a system-LAPLE (Learning Analytics in Programming Language Education)-that provides a learning dashboard to capture the behavior of students in the classroom and identify the different difficulties faced by different students looking at different knowledge. With LAPLE, teachers may better grasp students' learning situation in real time and better improve educational materials using analysis results. For their part, novice undergraduate programmers may use LAPLE to locate syntax errors in C and get recommendations from educational materials on how to fix them.

    DOI: 10.1145/3027385.3027407

  • A lecture supporting system based on real-time learning analytics

    Atsushi Shimada, Shinichi Konomi

    14th International Conference on Cognition and Exploratory Learning in the Digital Age, CELDA 2017 14th International Conference on Cognition and Exploratory Learning in the Digital Age, CELDA 2017   197 - 204   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    A new lecture supporting system based on real-time learning analytics is proposed. Our target is on-site classrooms where teachers give their lectures, and a lot of students listen to teachers' explanation, conduct exercises etc. We utilize not only an e-Learning system, but also an e-Book system to collect real-time learning activities during the lectures. The proposed system is useful for a teacher just before lecture starts and during the lecture. The system provides summary reports of the previews of given materials and quiz results. The teacher can check which pages were well previewed and which pages were not previewed by students using the preview achievement graph. Additionally, the teacher can check which quizzes were difficult for students, and the suggested pages that should be explained in the lecture to aid students. During the lecture, real-time analytics graphs are shown on the teacher's PC. The teacher can easily grasp students status whether or not students are following the teacher's explanation. Through a case study, we confirmed the effectiveness of the proposed system, in terms of high synchronization between a teacher and students, i.e., the teacher adjusted the speed of his lecture based on the real-time feedback, and many students followed the teacher's explanation.

  • Real-time analysis of digital textbooks What keywords make lecture difficult?

    Kousuke Mouri, Atsushi Shimada, Chengjiu Yin, Uosaki Noriko, Vachirawit Tengchaisri, Keiichi Kaneko

    25th International Conference on Computers in Education, ICCE 2017 Proceedings of the 25th International Conference on Computers in Education, ICCE 2017 - Main Conference Proceedings   733 - 735   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper describes a real-time learning analytics to find learning contents or keywords that students don't understand in digital textbooks. We developed a digital textbook viewer system that can collect students' learning logs. By analyzing and visualizing the collected learning logs in real time, teachers can visually find the keywords that students don't understand during a class. This paper describes the contribution of real-time learning analytics for supporting teachers.

  • What are good design gestures? -Towards user- and machine-friendly interface-

    Ryo Kawahata, Atsushi Shimada, Rin Ichiro Taniguchi

    23rd International Conference on MultiMedia Modeling, MMM 2017 MultiMedia Modeling - 23rd International Conference, MMM 2017, Proceedings   429 - 440   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper discusses gesture design for man-machine interfaces. Traditionally, gesture-interface studies have focused on improving performance, in terms of increasing speed and accuracy, in particular reducing false positives. Many studies neglect to consider the gestures’ intrinsic machine friendliness, which can improve recognition accuracy, and user friendliness, which makes a gesture easier to use and to remember. In this paper, we investigate machine-and user-friendly gestures and analyze the results of an Internet-based questionnaire in which 351 individuals were asked to assign gestures to eight operations.

    DOI: 10.1007/978-3-319-51811-4_35

  • Students' performance prediction using data of multiple courses by recurrent neural network

    Fumiya Okubo, Takayoshi Yamashita, Atsushi Shimada, Shin'ichi Konomi

    25th International Conference on Computers in Education, ICCE 2017 Proceedings of the 25th International Conference on Computers in Education, ICCE 2017 - Main Conference Proceedings   439 - 444   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we show a method to predict students' final grades using a recurrent neural network (RNN). An RNN is a variant of a neural network that handles time series data. For this purpose, the learning logs from 937 students who attended one of six courses by two teachers were collected. Nine kinds of learning logs are selected as the input of the RNN. We examine the prediction of final grades, where the training data and test data are the logs of courses conducted in 2015 and in 2016, respectively. We also show a way to identify the important learning activities for obtaining a specific final grade by observing the values of weight of the trained RNN.

  • Simple Combination of Appearance and Depth for Foreground Segmentation

    Tsubasa Minematsu, Atsushi Shimada, Hideaki Uchiyama, Rin Ichiro Taniguchi

    19th International Conference on Image Analysis and Processing, ICIAP 2017 New Trends in Image Analysis and Processing – ICIAP 2017 - ICIAP International Workshops, WBICV, SSPandBE, 3AS, RGBD, NIVAR, IWBAAS, and MADiMa 2017, Revised Selected Papers   266 - 277   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In foreground segmentation, the depth information is robust to problems of the appearance information such as illumination changes and color camouflage; however, the depth information is not always measured and suffers from depth camouflage. In order to compensate for the disadvantages of the two pieces of information, we define an energy function based on the two likelihoods of depth and appearance backgrounds and minimize the energy using graph cuts to obtain a foreground mask. The two likelihoods are obtained using background subtraction. We use the farthest depth as the depth background in the background subtraction according to the depth information. The appearance background is defined as the appearance with a large likelihood of the depth background to eliminate appearances of foreground objects. In the computation of the likelihood of the appearance background, we also use the likelihood of the depth background for reducing false positives owing to illumination changes. In our experiment, we confirm that our method is sufficiently accurate for indoor environments using the SBM-RGBD 2017 dataset.

    DOI: 10.1007/978-3-319-70742-6_25

  • Non-Linear Matrix Completion for Social Image Tagging 査読

    Xing Xu, Li He, Huimin Lu, Atsushi Shimada, Rin Ichiro Taniguchi

    IEEE Access   5   6688 - 6696   2017年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, we address the problem of social image tagging using practical vocabulary for mobile users on the social media. On the social media, images usually have an incomplete or noisy set of social tags provided by the mobile users, and we consider this issue as defective tag assignments. Previous studies on social image tagging have mostly focused on multi-label classification without considering the defective tags. In these studies, the usage of multi-label classification techniques is expected to synergically exploit the linear relations between the image features and the semantic tags. However, these approaches usually aimed to capture the linear relations from the training data while ignoring the helpful information from the test data. In addition, they failed to incorporate the non-linear associations residing in the visual features as well as in the semantic tags. To overcome these drawbacks, we introduce a novel approach based on non-linear matrix completion for image tagging task with defective tags. Specifically, we first construct the entire feature-tag matrix based on the visual features with non-linear kernel mapping. Then, we present a formal methodology together with an optimization method under the matrix completion framework to jointly complete the tags of training and test images. Experimental evaluations demonstrate that our method shows promising results on image tagging task on two benchmark social image datasets with defective tags, and establishes a baseline for such models in this research domain.

    DOI: 10.1109/ACCESS.2016.2624267

  • Mixed features for face detection in thermal image

    Chao Ma, Ngo Thanh Trung, Hideaki Uchiyama, Hajime Nagahara, Atsushi Shimada, Rin Ichiro Taniguchi

    13th International Conference on Quality Control by Artificial Vision, QCAV 2017 Thirteenth International Conference on Quality Control by Artificial Vision 2017   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    An infrared (IR) camera captures the temperature distribution of an object as an IR image. Because facial temperature is almost constant, an IR camera has the potential to be used in detecting facial regions in IR images. However, in detecting faces, a simple temperature thresholding does not always work reliably. The standard face detection algorithm used is AdaBoost with local features, such as Haar-like, MB-LBP, and HOG features in the visible images. However, there are few studies using these local features in IR image analysis. In this paper, we propose an AdaBoost-based training method to mix these local features for face detection in thermal images. In an experiment, we captured a dataset from 20 participants, comprising 14 males and 6 females, with 10 variations in camera distance, 21 poses, and participants with and without glasses. Using leave-one-out cross-validation, we show that the proposed mixed features have an advantage over all the regular local features.

    DOI: 10.1117/12.2266836

  • Finding traces of high and low achievers by analyzing undergraduates' e-book logs 査読

    Misato Oi, Masanori Yamada, Fumiya Okubo, Atsushi Shimada, Hiroaki Ogata

    Joint 6th Multimodal Learning Analytics Workshop and the Second Cross-LAK Workshop, MMLA-CrossLAK 2017 CEUR Workshop Proceedings   1828   15 - 22   2017年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We investigated the learning behavior of undergraduates with e-book logs. E-book logs from 99 undergraduates taking an information science course were collected. First, we analyzed differences between nine high-achieving students and three low-achieving students. A log recorded before a class session in which the same e-book was used as a textbook was considered a preview log, and one recorded after a class session was considered a review log. The analysis of preview frequency indicates that the low achievers did not perform the previews, but many high achievers frequently did. The review frequency demonstrates that regardless of high and low achievements, students performed reviews. We added the logs of six relatively low achievers and analyzed more details of the preview logs of high and low achievers. The number of page flips and durations of preview logs revealed that relatively low achievers tried to perform previews, but they gave the endeavor up easily.

  • Extracting latent behavior patterns of people from probe request data A non-negative tensor factorization approach

    Kaito Oka, Masaki Igarashi, Atsushi Shimada, Rin Ichiro Taniguchi

    6th International Conference on Pattern Recognition Applications and Methods, ICPRAM 2017 ICPRAM 2017 - Proceedings of the 6th International Conference on Pattern Recognition Applications and Methods   157 - 164   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Although people flow analysis is widely studied because of its importance, there are some difficulties with previous methods, such as the cost of sensors, person re-identification, and the spread of smartphone applications for collecting data. Today, Probe Request sensing for people flow analysis is gathering attention because it conquers many of the difficulties of previous methods. We propose a framework for Probe Request data analysis for extracting the latent behavior patterns of people. To make the extracted patterns understandable, we apply a Non-negative Tensor Factorization with a sparsity constraint and initialization with prior knowledge to the analysis. Experimental result showed that our framework helps the interpretation of Probe Request data.

    DOI: 10.5220/0006193901570164

  • Exploring students' learning journals with web-based interactive report tool

    Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada, Shin'Ichi Konomi

    14th International Conference on Cognition and Exploratory Learning in the Digital Age, CELDA 2017 14th International Conference on Cognition and Exploratory Learning in the Digital Age, CELDA 2017   251 - 254   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Students' journal writings could be useful resources for teachers to grasp their understandings and to see their own teaching objectively. However, reading a large number of journals thoroughly is not always realistic for teachers. Although various automatic analysis methods have been proposed to understand learning journals, they does not necessarily fit needs of teachers and tend to overlook minor opinions. In this paper, we propose an interactive report tool for exploring journal writings. Focusing on the efficiency of reading learning journals, it employs weekly keywords extracted from journals as entry points for journal sentences. It enables us to read journal sentences selectively. The tool also provides lists of most used adjectives from week to week, which is helpful for teachers to grasp the temporal variation of opinions through a semester. We conducted a preliminary questionnaire about the usefulness of the report tool targeting teachers of the course "Information Science" in our university. Most of them evaluated our tool positively although the number of answers were small.

  • Cross analytics of student and course activities from e-book operation logs

    Atsushi Shimada, Shinichi Konomi

    25th International Conference on Computers in Education, ICCE 2017 Proceedings of the 25th International Conference on Computers in Education, ICCE 2017 - Main Conference Proceedings   433 - 438   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we propose a cross analytics methodology of student activities and course activities using e-Book operation logs collected in 15 courses with face-to-face lecture style over 4 weeks. These courses commonly use the same lecture materials, but are conducted by different teachers. The new aspect of our research is that we perform cross analysis over courses. Most past researches focus on students' activities in a specific course, and give discussions about how the students behaved, how the behaviors differ from each other. In contrast, our research focuses on the course activities and conducts a comparison among courses. First, we begin with data alignment for row data to rectify a student activity every 10 seconds. Through our analytics, it becomes clear that whether students' activities varies with teachers or their teaching styles. In the experiments, we applied the proposed analytics to 1.1-million operation logs, and found out interesting characteristics through the comparison across courses.

  • Analysis on students' usage of highlighters on e-textbooks in classroom

    Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada, Shin'ichi Konomi

    25th International Conference on Computers in Education, ICCE 2017 Proceedings of the 25th International Conference on Computers in Education, ICCE 2017 - Main Conference Proceedings   514 - 516   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    E-book has been gradually getting popularity in educational contexts. Reading textbooks on computers or hand-held devices enables us to track the learning activities of students regardless of situations. In our university, several courses for first year students employs our e-book system, and we have been collecting its usage logs. From the logs, it seems that the highlighter function of the e-book reader plays an important role in learning because it is used most by the students. Though many researches studied the effectiveness of e-textbooks, only limited studies addressed how students utilize highlighters and how marking activity affects their learning. In this paper, we focus on highlighted portions of e-textbooks, and analyze how students use highlighters in their learning. We also attempt to provide recommendations to students for highlighting based on the highlighter usage in other classes.

  • Analysis of Wi-Fi-Based and perceptual congestion

    Masaki Igarashi, Atsushi Shimada, Kaito Oka, Rin Ichiro Taniguchi

    6th International Conference on Pattern Recognition Applications and Methods, ICPRAM 2017 ICPRAM 2017 - Proceedings of the 6th International Conference on Pattern Recognition Applications and Methods   225 - 232   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Conventional works for congestion estimates focus on estimating quantitative congestion (e.g., actual number of people, mobile devices, and crowd density). Meanwhile, we focus on perceptual congestion rather than quantitative congestion toward providing perceptual congestion information. We analyze the relationship between quantitative and perceptual congestion. For this analysis, we construct a system for estimating and visualizing congestion and collecting user reports about congestion. We use the number of mobile devices as quantitative congestion measurements obtained from Wi-Fi packet sensors, and user-report-based congestion as a perceptual congestion measurement collected via our Web service. Base on the obtained quantitative and perceptual congestion, we investigate the relationship between these values.

    DOI: 10.5220/0006206102250232

  • A visualization system for predicting learning activities using state transition graphs

    Fumiya Okubo, Atsushi Shimada, Yuta Taniguchi, Shin'Ichi Konomi

    14th International Conference on Cognition and Exploratory Learning in the Digital Age, CELDA 2017 14th International Conference on Cognition and Exploratory Learning in the Digital Age, CELDA 2017   173 - 180   2017年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we present a system for visualizing learning logs of a course in progress together with predictions of learning activities of the following week and the final grades of students by state transition graphs. Data are collected from 236 students attending the course in progress and from 209 students attending the past course for prediction. From these data, the system constructs a state transition graph, where the prediction is based on the Markov property. We verify the performance of predictions by experiments in which the accuracy of prediction using the data of the course in progress and the one by 5-fold cross validation.

  • Real time vision/sensor based features processing for efficient HCI employing canonical correlation analysis 査読

    Ehab H. El-Shazly, Moataz M. Abdelwahab, Atsushi Shimada, Rin-Ichiro Taniguchi

    Journal of Reliable Intelligent Environments   2 ( 4 )   187 - 195   2016年12月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, a global algorithm for facial and gesture recognition is presented. The algorithm basically consists of three modules: features sensing and processing, dominant features selection and finally features matching. Depending on the type of data used (vision or sensor based), the proposed algorithm exploits multiple features employing 2DPCA that efficiently compact features’ descriptors maintain the spatial and temporal alignment of features’ components. Canonical Correlation Analysis (CCA) is employed to fuse different features from different descriptors or different performers. CCA also transforms training and testing features sets into new space where similar pairs become highly correlated pairs. Different experiments were conducted using well known data sets in addition to our newly collected data sets to verify the efficiency of the proposed algorithm. Excellent recognition accuracy, and fast performance are factors that promotes the proposed algorithm for real time implementation.

    DOI: 10.1007/s40860-016-0028-4

  • Bayesian network for predicting students' final grade using e-book logs in university education

    Kousuke Mouri, Fumiya Okubo, Atsushi Shimada, Hiroaki Ogata

    16th IEEE International Conference on Advanced Learning Technologies, ICALT 2016 Proceedings - IEEE 16th International Conference on Advanced Learning Technologies, ICALT 2016   85 - 89   2016年11月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper describes visualization and analysis methods using educational big data collected by research project at Kyushu University in Japan. The project uses an e-book system called BookLooper, Moodle, and Mahara. Logs for this analytics were collected from 99 first-year students in an information science course at Kyushu University. The number of logs are collected approximately 330,000, and this paper visualize and analyze the collected logs. The purpose of this study is to predict students' final grade and to profile visualization and analysis results. The prediction of this study shows that it leads to discoveries of students who fail to make the grade.

    DOI: 10.1109/ICALT.2016.27

  • Learning unified binary codes for cross-modal retrieval via latent semantic hashing 査読

    Xing Xu, Li He, Atsushi Shimada, Rin ichiro Taniguchi, Huimin Lu

    Neurocomputing   213   191 - 203   2016年11月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Nowadays the amount of multimedia data such as images and text is growing exponentially on social websites, arousing the demand of effective and efficient cross-modal retrieval. The cross-modal hashing based methods have attracted considerable attention recently as they can learn efficient binary codes for heterogeneous data, which enables large-scale similarity search. Generally, to effectively construct the cross-correlation between different modalities, these methods try to find a joint abstraction space where the heterogeneous data can be projected. Then a quantization rule is applied to convert the abstraction representation to binary codes. However, these methods may not effectively bridge the semantic gap through the latent abstraction space because they fail to capture latent information between heterogeneous data. In addition, most of these methods apply the simplest quantization scheme (i.e. sign function) which may cause information loss of the abstraction representation and result in inferior binary codes. To address these challenges, in this paper, we present a novel cross-modal hashing based method that generates unified binary codes combining different modalities. Specifically, we first extract semantic features from the modalities of images and text to capture latent information. Then these semantic features are projected to a joint abstraction space. Finally, the abstraction space is rotated to produce better unified binary codes with much less quantization loss, while preserving the locality structure of projected data. We integrate the binary code learning procedures above to develop an iterative algorithm for optimal solutions. Moreover, we further exploit the useful class label information to reduce the semantic gap between different modalities to benefit the binary code learning. Extensive experiments on four multimedia datasets show that the proposed binary coding schemes outperform several other state-of-the-art methods under cross-modal scenarios.

    DOI: 10.1016/j.neucom.2015.11.133

  • Early gesture recognition with adaptive window selection employing canonical correlation analysis for gaming 査読

    E. H. El-Shazly, M. M. Abdelwahab, A. Shimada, R. Taniguchi

    Electronics Letters   52 ( 16 )   1379 - 1381   2016年8月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    A new early gesture recognition system that uses different features obtained from MYO sensor is presented. The beginning part of each gesture is detected and used by the system to train the authors' recognition algorithm. To preserve the different features temporal alignment for each movement, two-dimensional (2D) principal component analysis was employed to obtain the dominant features by processing the obtained data in its 2D form. Canonical correlation analysis (CCA) is used to find a space where the projection of similar training testing pairs becomes highly correlated. Finally, the testing sequence is matched to the training set that gives maximum correlation in the new space obtained by CCA. Low processing complexity, storage requirement, accurate and fast decision obtained on the newly collected data set are factors that promotes the authors' algorithm for real-time implementation.

    DOI: 10.1049/el.2016.1540

  • Background light ray modeling for change detection 査読

    Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    Journal of Visual Communication and Image Representation   38   55 - 64   2016年7月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    This paper is an extension of the work that was originally reported in Shimada et al. (2013). This paper proposes a change detection method based on spatio-temporal light ray consistency. The proposed method introduces light field sensing, which is used to generate an arbitrary in-focus plane. Change detection is performed in a surveillance scene, where the background region can be filtered out by an out-focusing process. This approach resolves a longstanding issue in background modeling-based object detection, which often suffers from false positives in the background regions. To realize this new change detection method, a new feature representation, called the local ray pattern (LRP), is introduced. The LRP evaluates the spatial consistency of the light rays, and this plays an important role in distinguishing whether the light rays come from the in-focus plane or elsewhere. A combination of the LRP and Gaussian mixture model (GMM)-based background modeling realizes change detection in the in-focus plane. Experimental results demonstrate the proposed method's effectiveness and its applicability to video surveillance.

    DOI: 10.1016/j.jvcir.2016.02.013

  • Real time algorithm for efficient HCI employing features obtained from MYO sensor

    Ehab H. El-Shazly, Moataz M. Abdelwahab, Atsushi Shimada, Rin Ichiro Taniguchi

    59th IEEE International Midwest Symposium on Circuits and Systems, MWSCAS 2016 2016 IEEE 59th International Midwest Symposium on Circuits and Systems, MWSCAS 2016   2016年7月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper presents a new gesture recognition algorithm that uses different features obtained from MYO sensor. To preserve the spatial and temporal alignment for different features of each movement, Two Dimensional Principal Component Analysis 2DPCA is employed to obtain the dominant features by processing the obtained data in its 2D form. Canonical Correlation Analysis CCA is used to find a space where the projection of similar training/testing pairs become highly correlated. The testing sequences is matched to the training set that gives maximum correlation in the new space obtained by CCA. Two new data sets for common HCI applications (gaming and air writing) were collected at LIMU lab, Kyushu university and used to verify the efficiency of the proposed algorithm. Low processing complexity, efficient storage requirement, high accuracy and fast decision are factors that promotes our algorithm for real time implementation.

    DOI: 10.1109/MWSCAS.2016.7870154

  • Learning multi-task local metrics for image annotation 査読

    Xing Xu, Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    Multimedia Tools and Applications   75 ( 4 )   2203 - 2231   2016年2月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    The goal of image annotation is to automatically assign a set of textual labels to an image to describe the visual contents thereof. Recently, with the rapid increase in the number of web images, nearest neighbor (NN) based methods have become more attractive and have shown exciting results for image annotation. One of the key challenges of these methods is to define an appropriate similarity measure between images for neighbor selection. Several distance metric learning (DML) algorithms derived from traditional image classification problems have been applied to annotation tasks. However, a fundamental limitation of applying DML to image annotation is that it learns a single global distance metric over the entire image collection and measures the distance between image pairs in the image-level. For multi-label annotation problems, it may be more reasonable to measure similarity of image pairs in the label-level. In this paper, we develop a novel label prediction scheme utilizing multiple label-specific local metrics for label-level similarity measure, and propose two different local metric learning methods in a multi-task learning (MTL) framework. Extensive experimental results on two challenging annotation datasets demonstrate that 1) utilizing multiple local distance metrics to learn label-level distances is superior to using a single global metric in label prediction, and 2) the proposed methods using the MTL framework to learn multiple local metrics simultaneously can model the commonalities of labels, thereby facilitating label prediction results to achieve state-of-the-art annotation performance.

    DOI: 10.1007/s11042-014-2402-7

  • Automatic generation of personalized review materials based on across-learning-system analysis 査読

    Atsushi Shimada, Fumiya Okubo, Chengjiu Yin, Hiroaki Ogata

    CEUR Workshop Proceedings   1601   22 - 27   2016年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, we propose a novel method to make a summary set of lecture slides for supporting students' review study. Quizzes are often conducted in a lecture to check students' understanding level. The aim of our study is to support a student who wrongly answers the quiz. The quiz statement is analyzed to extract nouns in the statement. Then, text mining is performed to find the pages related to the quiz statement in the relevant lecture materials. The proposed SummaryRank algorithm evaluates the topic similarity among pages in material with emphasizing the related page to the quiz statement. In addition, our proposed method considers the preview status of each student, resulting in the generation of adaptive review materials tailored for each student. Through experiments, we confirmed that the proposed method could find appropriate pages with respect to the quiz statements.

  • Learning analytics in ubiquitous learning environments Self-regulated learning perspective

    Masanori Yamada, Fumiya Okubo, Misato Oi, Atsushi Shimada, Kentaro Kojima, Hiroaki Ogata

    24th International Conference on Computers in Education, ICCE 2016 ICCE 2016 - 24th International Conference on Computers in Education Think Global Act Local - Main Conference Proceedings   306 - 314   2016年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This research aims to investigate the relationship between self-regulated learning awareness, learning behaviors, and learning performance in ubiquitous learning environments. In order to do so, psychometric data about self-regulated learning and log data such as marker, annotation, accessing device types that stored the learning management system were collected and analyzed using multiple regression analysis with stepwise method. The results indicated that self-efficacy, internal value, and the number of read slides had a significant influence on the final score, and the awareness of cognitive learning strategy use has slightly significant power to predict the final score.

  • Learning activity features of high performance students 査読

    Fumiya Okubo, Sachio Hirokawa, Misato Oi, Atsushi Shimada, Kojima Kentaro, Masanori Yamada, Hiroaki Ogata

    1st International Workshop on Learning Analytics Across Physical and Digital Spaces, CrossLAK 2016 CEUR Workshop Proceedings   1601   28 - 33   2016年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, we present a method of identifying learning activities that are important for students to achieve good grades. For this purpose, the data of 99 students were collected from a learning management system and an e-book system, including attendance, time on preparation and review, submission of reports, and quiz scores. We applied a support vector machine to these data to calculate a score of importance for each learning activity reflecting its contribution to the attainment of an A grade. Selecting certain important learning activities by following several evaluation measures, we verified that these learning activities played a crucial role in predicting final student achievements. One of the obtained results implies that time on preparation and review in the middle part of a course influences a student's final achievement.

  • Image annotation with incomplete labelling by modelling image specific structured loss 査読

    Xing Xu, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi, Li He

    IEEJ Transactions on Electrical and Electronic Engineering   11 ( 1 )   73 - 82   2016年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, we address the problem of image annotation with incomplete labeling, where multiple objects in each training image are not fully labeled. The conventional one-versus-all support vector machine (OVA-SVM), which performs fairly well on full labeling, decays drastically under the setting of incompleteness. Recently, a structured output learning method termed OVA-SSVM was proposed to boost the performance of OVA-SVM by modeling the structured associations of labels and show efficiency under the setting of incompleteness. OVA-SSVM assumes that each training sample includes a single label and adopts an loss measure of classification style where, as long as one of the predicted label is correct, the overall prediction should be considered correct. However, this may not be appropriate for the multilabel annotation task. Therefore, we extend the OVA-SSVM method to the multilabel situation and design a novel image-specific structured loss to account for the dependences between predicted labels relying on image label associations. The superiority of the proposed image-specific structured loss is that it can directly learn the semantic relationships of labels from training data without predefined semantic hierarchy. Extensive empirical results on a variety of benchmark datasets show that the proposed method performs significantly better than OVA-SSVM on image annotation tasks with incomplete labeling and achieves competitive performance compared to other state-of-the-art methods.

    DOI: 10.1002/tee.22190

  • Exponentially weighted update of histogram for background modeling reducing memory usage 査読

    Tsubasa Minematsu, Masaki Igarashi, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    Journal of the Institute of Image Electronics Engineers of Japan   45 ( 2 )   191 - 200   2016年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, we propose a background model by using an exponentially weighted updating method. We realize to reduce memory usage for construction of background model. Our background model is represented as a histogram according to pixel values. Our model uses an exponential increasing weight for updating our model. In our model, recently observed pixels have a bigger influence on the background model than older ones. Therefore, our model gradually ignores the effect of old-observed value on a background model without retaining past pixel values. We apply our method to background subtraction for comparing with conventional methods using kernel density estimation. In experiments, we conformed that the detection accuracy of our background model is comparable to that of conventional methods.

  • Design of a low-false-positive gesture for awearable device

    Ryo Kawahata, Atsushi Shimada, Takayoshi Yamashita, Hideaki Uchiyama, Rin Ichiro Taniguchi

    5th International Conference on Pattern Recognition Applications and Methods, ICPRAM 2016 ICPRAM 2016 - Proceedings of the 5th International Conference on Pattern Recognition Applications and Methods   581 - 588   2016年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    As smartwatches are becoming more widely used in society, gesture recognition, as an important aspect of interaction with smartwatches, is attracting attention. An accelerometer that is incorporated in a device is often used to recognize gestures. However, a gesture is often detected falsely when a similar pattern of action occurs in daily life. In this paper, we present a novel method of designing a new gesture that reduces false detection. We refer to such a gesture as a low-false-positive (LFP) gesture. The proposed method enables a gesture design system to suggest LFP motion gestures automatically. The user of the system can design LFP gestures more easily and quickly than what has been possible in previous work. Our method combines primitive gestures to create an LFP gesture. The combination of primitive gestures is recognized quickly and accurately by a random forest algorithm using our method. We experimentally demonstrate the good recognition performance of our method for a designed gesture with a high recognition rate and without false detection.

    DOI: 10.5220/0005701905810588

  • Background initialization based on bidirectional analysis and consensus voting

    Tsubasa Minematsu, Atsushi Shimada, Rin Ichiro Taniguchi

    23rd International Conference on Pattern Recognition, ICPR 2016 2016 23rd International Conference on Pattern Recognition, ICPR 2016   126 - 131   2016年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Background modeling and subtraction are essential to video surveillance applications. There are two main issues related to background modeling: how to initialize the background model, and how to update the model based on observations. In this paper, we consider the first issue with the aim of generating a clear background image that does not contain foreground objects or noise. We used a bidirectional analysis and consensus voting strategy to achieve this goal. We demonstrated the effectiveness of our technique using open access datasets.

    DOI: 10.1109/ICPR.2016.7899620

  • Profiling high-achieving students for e-book-based learning analytics 査読

    Kousuke Mouri, Fumiya Okubo, Atsushi Shimada, Hiroaki Ogata

    1st International Workshop on Learning Analytics Across Physical and Digital Spaces, CrossLAK 2016 CEUR Workshop Proceedings   1601   5 - 9   2016年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    The purpose of this paper is to mine or detect meaningful learning patterns for profiling high-achieving students using e-book-based activity logs and questionnaire. The analysis of this study uses association analysis with Apriori algorithm. Logs for this analysis were collected from 99 first-year students who use a document viewer system called BookLooper, questionnaires and Moodle in an information science course at Kyushu University. From the results of the association analysis, we found that high-achieving students and BookLooer have significant relationships in terms of preparation and review time. This paper believes that the profiling and analysis can be used to predict their final grades and to detect effective learning patterns.

  • A knowledge comparison environment for supporting meaningful learning of E-book users 査読

    Jingyun Wang, Hiroaki Ogata, Atsushi Shimada

    Systems   4 ( 2 )   2016年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    DOI: 10.3390/systems4020021

  • Video object segmentation based on superpixel trajectories

    Mohamed A. Abdelwahab, Moataz M. Abdelwahab, Hideaki Uchiyama, Atsushi Shimada, Rin-Ichiro Taniguchi

    13th International Conference on Image Analysis and Recognition, ICIAR 2016 Image Analysis and Recognition - 13th International Conference, ICIAR 2016, Proceedings   191 - 197   2016年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, a video object segmentation method utilizing the motion of superpixel centroids is proposed. Our method achieves the same advantages of methods based on clustering point trajectories, furthermore obtaining dense clustering labels from sparse ones becomes very easy. Simply for each superpixel the label of its centroid is propagated to all its entire pixels. In addition to the motion of superpixel centroids, histogram of oriented optical flow, HOOF, extracted from superpixels is used as a second feature. After segmenting each object, we distinguish between foreground objects and the background utilizing the obtained clustering results.

    DOI: 10.1007/978-3-319-41501-7_22

  • Adaptive search of background models for object detection in images taken by moving cameras

    Tsubasa Minematsu, Hideaki Uchiyama, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    IEEE International Conference on Image Processing, ICIP 2015 2015 IEEE International Conference on Image Processing, ICIP 2015 - Proceedings   2626 - 2630   2015年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a strategy of background subtraction for an image sequence captured by a moving camera. To adapt for camera motion, it is necessary to estimate the relation between consecutive frames in background subtraction. However, simple background subtraction using the relation between consecutive frames results in many false detections. We use re-projection error to handle this problem. The re-projection error has a low value in a background region. According to re-projection error, our method searches neighboring background models and tunes a threshold value for detection in order to reduce false detections. We evaluated the accuracy of detection of our method in experiments. Our method provided better detection than a method that does not search neighboring background models. Our method thus reduced the number of false detections.

    DOI: 10.1109/ICIP.2015.7351278

  • Change detection on light field for active video surveillance

    Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    12th IEEE International Conference on Advanced Video and Signal Based Surveillance, AVSS 2015 AVSS 2015 - 12th IEEE International Conference on Advanced Video and Signal Based Surveillance   2015年10月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Existing background model based change detection methods have difficulty in distinguishing between foreground and background changes when both changes are caused by the same factors. We explore the possibility of using a light field camera to resolve the problem of existing single-view camera-based approaches. We present a new change detection strategy that processes light rays captured by the light field camera. The light rays are used for three purposes: 1) generating an active surveillance field (ASF) to determine in-focus and out-focus areas, 2) evaluating focusness to determine whether the light rays come from the ASF, and 3) creating and updating light-ray background models to capture temporal changes in light rays. To investigate the effectiveness of the proposed approach, we evaluated several video sequences captured by a light field camera. Experimental results show that our change detection scheme can robustly handle challenging situations that cannot be resolved by existing single-view approaches.

    DOI: 10.1109/AVSS.2015.7301785

  • Semi-supervised coupled dictionary learning for cross-modal retrieval in internet images and texts

    Xing Xu, Yang Yang, Atsushi Shimada, Rin Ichiro Taniguchi, Li He

    23rd ACM International Conference on Multimedia, MM 2015 MM 2015 - Proceedings of the 2015 ACM Multimedia Conference   847 - 850   2015年10月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Nowadays massive amount of images and texts has been emerging on the Internet, arousing the demand of effective cross-modal retrieval. To eliminate the heterogeneity be-tween the modalities of images and texts, the existing sub-space learning methods try to learn a common latent sub-space under which cross-modal matching can be performed. However, these methods usually require fully paired sam-ples (images with corresponding texts) and also ignore the class label information along with the paired samples. In-deed, the class label information can reduce the semantic gap between different modalities and explicitly guide the subspace learning procedure. In addition, the large quan-tities of unpaired samples (images or texts) may provide useful side information to enrich the representations from learned subspace. Thus, in this paper we propose a novel model for cross-modal retrieval problem. It consists of 1) a semi-supervised coupled dictionary learning step to generate homogeneously sparse representations for different modali-ties based on both paired and unpaired samples; 2) a coupled feature mapping step to project the sparse representations of different modalities into a common subspace defined by class label information to perform cross-modal matching. Exper-iments on a large scale web image dataset MIRFlickr-1M with both fully paired and unpaired settings show the effec-tiveness of the proposed model on the cross-modal retrieval task.

    DOI: 10.1145/2733373.2806346

  • Person re-identification visualization tool for object tracking across non-overlapping cameras

    Etienne Pot, Maiya Hori, Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    12th IEEE International Conference on Advanced Video and Signal Based Surveillance, AVSS 2015 AVSS 2015 - 12th IEEE International Conference on Advanced Video and Signal Based Surveillance   2015年10月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we present a visualization tool for person re-identification when tracking objects across non-overlapping cameras. Tracking objects across non-overlapping cameras is challenging because the observations from different cameras are widely separated in both time and space. Hence, these systems need a large amount of labeled training data. Commonly, this training data is constructed manually at significant human cost. We support this process efficiently by visualizing the correspondences of objects across multiple cameras. Our tool facilitates the construction of a database for person re-identification with ease. Moreover, the accuracy of person re-identification can be increased using the generated database because the amount of training data is increased. In the experiments, we apply the proposed tool to real world situations to verify the validity of the proposed system.

    DOI: 10.1109/AVSS.2015.7301740

  • Informal learning behavior analysis using action logs and slide features in e-textbooks

    Atsushi Shimada, Fumiya Okubo, Chengjiu Yin, Kojima Kentaro, Masanori Yamada, Hiroaki Ogata

    15th IEEE International Conference on Advanced Learning Technologies, ICALT 2015 Proceedings - IEEE 15th International Conference on Advanced Learning Technologies Advanced Technologies for Supporting Open Access to Formal and Informal Learning, ICALT 2015   116 - 117   2015年9月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper discusses learning behavior analysis using a learning management system (LMS) and an e-textbook system. We collected a large number of operation logs from e-textbooks to analyze the process of learning. In addition, we conducted a quiz to check the level of understanding. In our study, we especially focus on an analysis of the relationship between learning behavior in informal learning and its effectiveness in the corresponding quiz. We apply a machine learning and classification methodology for behavior analysis. Our experimental results demonstrate that students who undertake good informal learning achieve better scores in quizzes.

    DOI: 10.1109/ICALT.2015.78

  • Preliminary research on self-regulated learning and learning logs in a ubiquitus learning environment

    Masanori Yamada, Chengjiu Yin, Atsushi Shimada, Kojima Kentaro, Fumiya Okubo, Hiroaki Ogata

    15th IEEE International Conference on Advanced Learning Technologies, ICALT 2015 Proceedings - IEEE 15th International Conference on Advanced Learning Technologies Advanced Technologies for Supporting Open Access to Formal and Informal Learning, ICALT 2015   93 - 95   2015年9月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This preliminary research investigates the relationship between psychometric data and learning behaviors in the learning analytics research field, specifically, the relationship between self-regulated learning and learning behavior. The results of this limited research show that marker and annotation use have a weak significant relationship with self-efficacy and the intrinsic value of learning materials.

    DOI: 10.1109/ICALT.2015.74

  • Coupled dictionary learning and feature mapping for cross-modal retrieval

    Xing Xu, Atsushi Shimada, Rin-Ichiro Taniguchi, Li He

    IEEE International Conference on Multimedia and Expo, ICME 2015 2015 IEEE International Conference on Multimedia and Expo, ICME 2015   2015-August   2015年8月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we investigate the problem of modeling images and associated text for cross-modal retrieval tasks such as text-to-image search and image-to-text search. To make the data from image and text modalities comparable, previous cross-modal retrieval methods directly learn two projection matrices to map the raw features of the two modalities into a common subspace, in which cross-modal data matching can be performed. However, the different feature representations and correlation structures of different modalities inhibit these methods from efficiently modeling the relationships across modalities through a common subspace. To handle the diversities of different modalities, we first leverage the coupled dictionary learning method to generate homogeneous sparse representations for different modalities by associating and jointly updating their dictionaries. We then use a coupled feature mapping scheme to project the derived sparse representations from different modalities into a common subspace in which cross-modal retrieval can be performed. Experiments on a variety of cross-modal retrieval tasks demonstrate that the proposed method outperforms the state-of-the-art approaches.

    DOI: 10.1109/ICME.2015.7177396

  • Light field distortion feature for transparent object classification 査読

    Yichao Xu, Kazuki Maeno, Hajime Nagahara, Atsushi Shimada, Rin Ichiro Aniguchi

    Computer Vision and Image Understanding   139   122 - 135   2015年8月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Local features, such as scale-invariant feature transform (SIFT) and speeded up robust features (SURF), are widely used for describing an object in the applications of visual object recognition and classification. However, these approaches cannot apply to transparent objects made of glass or plastic, as such objects take on the visual features of background scenes, and the appearance of such objects dramatically varies with changes in the scenes. Indeed, transparent objects have the unique characteristic of distorting the background by refraction. In this paper, we use a single-shot light field image as input and model the distortion of the light field caused by the refractive property of a transparent object. We propose a new feature which is called the light field distortion (LFD) feature. The proposed feature is background-invariant so that it is able to describe a transparent object without knowing the texture of the scene. The proposal incorporates this LFD feature into the bag-of-features approach for classifying transparent objects. We evaluated its performance and analyzed the limitations in various settings.

    DOI: 10.1016/j.cviu.2015.02.009

  • Spatially-multiplexed MIMO markers

    Hideaki Uchiyama, Shinichiro Haruyama, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    2015 10th IEEE Symposium on 3D User Interfaces, 3DUI 2015 2015 IEEE Symposium on 3D User Interfaces, 3DUI 2015 - Proceedings   191 - 192   2015年6月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We present spatially-multiplexed fiducial markers with the framework of code division multiple access (CDMA), which is a technique in the field of communications. Since CDMA based multiplexing is robust to signal noise and interference, multiplexed markers can be demultiplexed under several image noises and transformation. With this framework, we explore the paradigm of multiple-input and multiple-output (MIMO) for fiducial markers so that the data capacity of markers can be improved and different users can receive different data from a multiplexed marker.

    DOI: 10.1109/3DUI.2015.7131765

  • Evaluation of foreground detection methodology for a moving camera

    Tsubasa Minematsu, Hideaki Uchiyama, Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    2015 21st Korea-Japan Joint Workshop on Frontiers of Computer Vision, FCV 2015 2015 Frontiers of Computer Vision, FCV 2015   2015年5月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Detection of moving objects is one of the key steps for vision based applications. Many previous works leverage background subtraction using background models and assume that image sequences are captured from a stationary camera. These methods are not directly applied to image sequences from a moving camera because both foreground and background objects move with respect to the camera. One of the approaches to tackle this problem is to estimate background movement by computing pixel correspondences between frames such as homography. With this approach, moving objects can be detected by using existing background subtraction. In this paper, we evaluate detection of foreground objects for image sequences from a moving camera. Especially, we focus on homography as a camera motion. In our evaluation we change the following parameters: changing feature points, the number of them and estimation methods of homography. We analyze its effect on detection of moving objects in regard to detection accuracy, processing time. Through experiments, we show requirement of background models in image sequences form a moving camera.

    DOI: 10.1109/FCV.2015.7103752

  • TransCut Transparent object segmentation from a light-field image

    Yichao Xu, Hajime Nagahara, Atsushi Shimada, Rin Ichiro Taniguchi

    15th IEEE International Conference on Computer Vision, ICCV 2015 2015 International Conference on Computer Vision, ICCV 2015   3442 - 3450   2015年2月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    The segmentation of transparent objects can be very useful in computer vision applications. However, because they borrow texture from their background and have a similar appearance to their surroundings, transparent objects are not handled well by regular image segmentation methods. We propose a method that overcomes these problems using the consistency and distortion properties of a light-field image. Graph-cut optimization is applied for the pixel labeling problem. The light-field linearity is used to estimate the likelihood of a pixel belonging to the transparent object or Lambertian background, and the occlusion detector is used to find the occlusion boundary. We acquire a light field dataset for the transparent object, and use this dataset to evaluate our method. The results demonstrate that the proposed method successfully segments transparent objects from the background.

    DOI: 10.1109/ICCV.2015.393

  • Analysis of Links among E-books in undergraduates E-Book Logs

    Misato Oi, Chengjiu Yin, Fumiya Okubo, Atsushi Shimada, Kentaro Kojima, Masanori Yamada, Hiroaki Ogata

    23rd International Conference on Computers in Education, ICCE 2015 Workshop Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   665 - 669   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    The purpose of this study is to investigate the relationship between academic achievement and learning patterns of students using e-book logs. Specifically, we examined how students who maintain good academic achievement link among knowledge of different e-books. We hypothesized that good achievers might access e-books sequentially those were used in the same class session and/or consecutive class sessions, for systematically linking among the different knowledge of related e-books. Logs were collected from first-year students in an information science course at Kyushu University. The present study revealed that the good achievers more frequently linked e-books which were used in the same class sessions than the poor achievers. This result suggests that the good achievers more frequently linked knowledge of e-books which deeply related each other.

  • 基幹教育課題協学科目 査読

    Kenji Furuya, Yutaka Okochi, Atsushi Shimada, 田中 岳, Takeru Nose, Shinji Yamagata

    基幹教育紀要 = Bulletin of kikan education   1   63 - 69   2015年1月

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    記述言語:日本語   掲載種別:研究論文(学術雑誌)  

    KIKAN education KADAI-KYOGAKU (interdisciplinary collaborative learning of social issues)

    DOI: 10.15017/1495422

  • Visualization supports for E-book users from meaningful learning perspective

    Jingyun Wang, Hiroaki Ogata, Cheng Jiu Yin, Atsushi Shimada

    23rd International Conference on Computers in Education, ICCE 2015 Workshop Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   643 - 648   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we present a meaningful learning environment to visually support e-book learners to effectively construct their knowledge framework. This personalized visualization support is intended to encourage learners to actively locate new knowledge in their own knowledge framework and check the logical consistency of their ideas for clearing up misunderstandings. On the other hand, we also propose to visually support e-book instructors to decide the group distribution for collaborative learning activities based on knowledge structure of learners. To facilitate those visualization supports, we present a method to semi-Automatically construct a course-centered ontology to describe the required information in a map structure.

  • Visualization and prediction of learning activities by using discrete graphs

    Fumiya Okubo, Atsushi Shimada, Chengjiu Yin, Hiroaki Ogata

    23rd International Conference on Computers in Education, ICCE 2015 Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   739 - 744   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper presents a method for visualizing students' learning logs using discrete graphs. These logs contain the following four items: attendance, time spent browsing slides, submission of a report and the quiz score for each lesson. The data were collected using learning management systems and the e-text systems. By using these data, we construct graphs for each grade of which the nodes represent all combinations of achievements and failures for the four items. The graphs enable us to observe the features of students' learning activities for each obtained grade. The order in which the above four items are presented changes the visual features of the graph. Moreover, the construction of a graph from the data of the same class held previously enables us to inform students of the learning activities they should avoid. Finally, future research plans regarding this method are presented.

  • Toward social services based on cyber physical systems

    Rin Ichiro Taniguchi, Kauzaki Murakami, Atsushi Shimada, Shigeru Takano, Akira Fukuda, Hiroto Yasuura

    Smart Sensors and Systems   427 - 446   2015年1月

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    記述言語:英語  

    Cyber physical system (CPS) is a general computation concept, in which “Computers (Cyber world)” and “Real world” are integrated via computer networks. In a cyber physical system, there is a loop structure of “observation,” “processing” and “feedback” in the real world: (i) various kinds of data are acquired from our real world using various sensors; (ii) then those data are transferred to computers, or cyber world, and are processed and analyzed; (iii) the analyzed results are fed back to the real world and the real world are modified according to the feedback. Based on this loop structure, the real world is changed, or adjusted. The concept of cyber physical system is well suited for the framework of various IT-based social services, and, in this chapter, we present our research project applying the CPS to social services, especially to an energy management problem, which is one of the most crucial issues for our future society.

    DOI: 10.1007/978-3-319-14711-6_17

  • Query expansion with pairwise learning in object retrieval challenge

    Hao Liu, Atsushi Shimada, Xing Xu, Hajime Nagahara, Hideaki Uchiyama, Rin-Ichiro Taniguchi

    2015 21st Korea-Japan Joint Workshop on Frontiers of Computer Vision, FCV 2015 2015 Frontiers of Computer Vision, FCV 2015   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Making a reasonable ranking on images in dataset is one of the main objectives for object retrieval challenge, and in this paper we intend to improve the ranking quality. We follow the idea of query expansion in previous researches. Based on the use of bag-of-visual-words model, tf-idf scoring and spatial verification, previous method applied a pointwise style learning in query expansion stage, using but not fully exploring verification results. We intend to extend their learning approach for better discriminative power in retrieval. In re-ranking stage we propose a method using pairwise learning, instead of pointwise learning previously used. We could obtain more reliable ranking on a shortlist of examples. If this verification itself is reliable, a good re-ranking should best preserve this sub-ranking order. Thus in our proposed method, we are motivated to leverage a pairwise learning method to incorporate the ranking sequential information more efficiently. We evaluate and compare our proposed method with previous methods over Oxford 5k dataset, a standard benchmark dataset, where our method achieve better mean average precision and showed better discriminative power.

    DOI: 10.1109/FCV.2015.7103703

  • Identifying and analyzing the learning behaviors of students using e-books

    Chengjiu Yin, Fumiya Okubo, Atsushi Shimada, Misato Oi, Sachio Hirokawa, Hiroaki Ogata

    23rd International Conference on Computers in Education, ICCE 2015 Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   118 - 120   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Analyses on students' learning behaviors comprise an important thrust in education research. This study focused on e-books system used in the classroom and this system recorded students' learning logs in their daily academic life. These learning logs can be used to analysis students' learning behaviors. By performing partial correlation analysis, the study found that a number of learning behaviors have a significant relation with students' test scores.

  • Exploring image specific structured loss for image annotation with incomplete labelling

    Xing Xu, Atsushi Shimada, Rin Ichiro Taniguch

    12th Asian Conference on Computer Vision, ACCV 2014 Computer Vision - ACCV 2014 - 12th Asian Conference on Computer Vision, Revised Selected Papers   704 - 719   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we address the problem of image annotation with incomplete labelling, where the multiple objects in each training image are not fully labeled. The conventional one-versus-all SVM (OVA-SVM) that performs fairly well on full labelling decays drastically under the incomplete setting. Recently, structured learning method termed OVA-SSVM is proposed to boost the performance of OVA-SVM by modeling the structured associations of labels and show efficiency under incomplete setting. The OVA-SSVM assumes that each training sample includes a single label and adopts an loss measure of classification style that as long as one of the predicted label is correct, the overall prediction should be considered correct. However, this may not be appropriate for the multi-label annotation task. In this paper, we extend the OVA-SSVM method to the multi-label situation and design a novel image specific structured loss measure to account for the dependencies between predicted labels relying on the image-label associations. Then we develop an efficient optimization algorithm to learn the model parameters. Finally, we present extensive empirical results on two benchmark datasets with various degree of incompletion, and show that proposed method outperforms OVA-SSVM and achieves competitive performance compared with other state-of-the-art methods which are also designed for the issue of incomplete labelling.

    DOI: 10.1007/978-3-319-16865-4_46

  • Error log analysis in C programming language courses

    Xinyu Fu, Chengjiu Yin, Atsushi Shimada, Hiroaki Ogata

    23rd International Conference on Computers in Education, ICCE 2015 Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   641 - 650   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Many universities choose the C programming language (C) as the first programming language to teach to students. As novice programmers, students frequently make simple mistakes such as syntax and typographical errors. Students often find it difficult to locate these errors, as students are not yet thoroughly familiar with C's syntax. This situation often causes students to consider programming very dull. It is therefore critical to provide clearer explanation in class, to prevent students losing interest in programming. This study aims to facilitate teaching and learning of C. We propose a system that undergraduate novice programmers may use to locate syntax errors in C. We analyze error types and resolutions using data collected during a programming course, and discuss key findings and their implications for programming education.

  • Error log analysis for improving educational materials in C programming language courses

    Xinyu Fu, Chengjiu Yin, Atsushi Shimada, Hiroaki Ogata

    23rd International Conference on Computers in Education, ICCE 2015 Workshop Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   412 - 417   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Many universities choose the C programming language (C) as the first programming language to teach to students. As novice programmers, students frequently make simple mistakes such as syntax and typographical errors. Students often find it difficult to locate these errors, as students are not yet thoroughly familiar with C's syntax. Usually educational materials are very useful tools for students to locate errors and find solutions. This study aims to facilitate teaching and learning of C. We propose a system that undergraduate novice programmers may use to easily locate syntax errors in C and get recommendations from educational materials. We analyze error logs of programming and reading logs of educational materials, with the learning by doing mode (learning-practicing-reflection) to discuss key findings and their implications for programming education.

  • E-book-based learning analytics in University education

    Hiroaki Ogata, Chengjiu Yin, Misato Oi, Fumiya Okubo, Atsushi Shimada, Kentaro Kojima, Masanori Yamada

    23rd International Conference on Computers in Education, ICCE 2015 Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   401 - 406   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper provides an overview of the Educational Big Data research project at Kyushu University, Japan. This project uses an e-book system called BookLooper. which allows students to browse e-books in Web browser, PC, mobile devices such as smartphone. This paper shows research issues in this project. Currently, about 2,700 first-year students are using the e-book system and approximately 2.2 million log data have been accumulated as of May 20, 2015. This paper describes why we introduce e-book in the University education and initial findings.

  • Automatic summarization of lecture slides for enhanced student preview

    Atsushi Shimada, Fumiya Okubo, Chengjiu Yin, Hiroaki Ogata

    23rd International Conference on Computers in Education, ICCE 2015 Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   218 - 227   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we propose a novel method of summarizing lecture slides to enhance preview efficiency and improve students' understanding of the content. Students are often asked to prepare for a class by reading lecture materials. However, this does not always produce good results because the attention span of students is limited. We conducted a survey involving preview of lecture materials by more than 300 students and found that they want summarized materials to preview. Therefore, we developed an automatic summarization method to reduce the original preview materials to a summarized set. Our approach is based on the use of image processing and text processing to extract important pages from lecture materials, and then optimizing the selection of pages in accordance with a specified preview time. We applied the proposed summarization method to lecture slides. In our user study involving more than 300 students, we compared the relative effectiveness of the summarized slides and the original materials in terms of quiz scores, preview achievement ratio, and time spent previewing. We found that students who previewed the summarized slides achieved better scores on pre-lecture quizzes even though they spent less time previewing the material.

  • Analyzing the features of learning behaviors of students using e-Books

    Chengjiu Yin, Fumiya Okubo, Atsushi Shimada, Misato Oi, Sachio Hirokawa, Masanori Yamada, Kentaro Kojima, Hiroaki Ogata

    23rd International Conference on Computers in Education, ICCE 2015 Workshop Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   616 - 626   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    The analysis of learning behavior and identification of learning style from learning logs are expected to benefit instructors and learners. This study describes methods for processing learning logs, such as data collection, integration, and cleansing, developed in Kyushu University. The research aims to analyze learning behavior and identify students' learning style using student's learning logs. Students were clustered into four groups using k-means clustering, and features of their learning behavior were analyzed in detail. We found that Digital Backtrack Learning style is better than Digital Sequential Learning style.

  • Analysis of preview and review patterns in undergraduates' e-book logs

    Misato Oi, Fumiya Okubo, Atsushi Shimada, Chengjiu Yin, Hiroaki Ogata

    23rd International Conference on Computers in Education, ICCE 2015 Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   166 - 171   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    The purpose of this study is to investigate the relationship between academic achievement and learning patterns of students using e-book logs. Specifically, we examined patterns of students' e-book logs before and after the main content learning in class (that is, 'Preview' and 'Review'). Logs were collected from first-year students in an information science course at Kyushu University. To measure preview and review learning, we analyzed data using three types of measurement: Change indicates how many times a student changed e-books over the course of one hour. Duration indicates how many seconds a student access a given e-book for during one Change (i.e., one turn). Page flip indicates how many pages of a given e-book a student flipped through during one Change. To analyze the relationship between academic achievement and preview/review, the students were categorized into six groups according to their scores on midterm and final (term-end) examinations. For preview, students who had consistent good achievement showed higher values for all three measurements than students who showed poor achievement. In contrast, for review, none of the three measurements showed differences among the six groups. These results suggest that preview is more deeply relevant to academic achievement and assessment than review.

  • Analysis of preview behavior in E-Book system

    Atsushi Shimada, Fumiya Okubo, Chengjiu Yin, Misato Oi, Kentaro Kojima, Masanori Yamada, Hiroaki Ogata

    23rd International Conference on Computers in Education, ICCE 2015 Workshop Proceedings of the 23rd International Conference on Computers in Education, ICCE 2015   593 - 600   2015年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper proposes a method to analyze preview behaviors of students using a learning management system (LMS) and an e-book system. We collected a large number of operation logs from e-books to analyze the process of learning. In addition, we conducted a quiz to test the level of understanding. This study especially focuses on an analysis of the relationship between learning behavior in preview and its effectiveness in the corresponding quiz. We apply a machine learning and classification methodology for behavior analysis. Experimental results report that students who undertake good preview achieve better scores in quizzes.

  • Tag completion with defective tag assignments via image-tag re-weighting 査読

    Xing Xu, Atsushi Shimada, Rin-Ichiro Taniguchi

    2014 IEEE International Conference on Multimedia and Expo, ICME 2014 Proceedings - IEEE International Conference on Multimedia and Expo   2014-September ( Septmber )   2014年9月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    User-provided image tags are usually incomplete or noisy to describe the visual content of corresponding images. In this paper, we consider defective tagging which covers both incomplete and noisy situations, and address the problem of tag completion where tag assignments of training images are defective. While previous studies on tag completion usually assign equal penalty to empirical loss when processing each missing or noisy tag for each image, we show that this may be suboptimal as the relatedness of each tag to each image varies due to the defective setting. Thus, we introduce an image-tag re-weighting scheme to re-weight the penalty term of each tag to each image considering both image similarities and tag associations, and formulate a unified re-weighted empirical loss function. Experimental evaluations show that embedding proposed re-weighted empirical loss function in state-of-the-art tag completion algorithms achieves significant improvement in dealing with defective tag assignments.

    DOI: 10.1109/ICME.2014.6890154

  • Object detection based on spatiotemporal background models 査読

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    Computer Vision and Image Understanding   122   84 - 91   2014年5月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We present a robust background model for object detection and its performance evaluation using the database of the Background Models Challenge (BMC). Background models should detect foreground objects robustly against background changes, such as "illumination changes" and "dynamic changes". In this paper, we propose two types of spatiotemporal background modeling frameworks that can adapt to illumination and dynamic changes in the background. Spatial information can be used to absorb the effects of illumination changes because they affect not only a target pixel but also its neighboring pixels. Additionally, temporal information is useful in handling the dynamic changes, which are observed repeatedly. To establish the spatiotemporal background model, our frameworks model an illumination invariant feature and a similarity of intensity changes among a set of pixels according to statistical models, respectively. Experimental results obtained for the BMC database show that our models can detect foreground objects robustly against background changes.

    DOI: 10.1016/j.cviu.2013.10.015

  • Case-based background modeling Associative background database towards low-cost and high-performance change detection 査読

    Atsushi Shimada, Yosuke Nonaka, Hajime Nagahara, Rin-Ichiro Taniguchi

    Machine Vision and Applications   25 ( 5 )   1121 - 1131   2014年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Background modeling and subtraction is an essential task in video surveillance applications. Many researchers have discussed about an improvement of performance of a background model, and a reduction of memory usage or computational cost. To adapt to background changes, a background model has been enhanced by introducing various information including a spatial consistency, a temporal tendency, etc. with a large memory allocation. Meanwhile, an approach to reduce a memory cost cannot provide better accuracy of a background subtraction. To tackle the trade-off problem, this paper proposes a novel framework named "case-based background modeling". The characteristics of the proposed method are (1) a background model is created, or removed when necessary, (2) case-by-case model sharing by some of the pixels, (3) pixel features are divided into two groups, one for model selection and the other for modeling. These approaches realize a low-cost and high accurate background model. The memory usage and the computational cost could be reduced by half of a traditional method and the accuracy was superior to the method.

    DOI: 10.1007/s00138-013-0563-4

  • Spatio-temporal background models for object detection

    Satoshi Yoshinaga, Yosuke Nonaka, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    Background Modeling and Foreground Detection for Video Surveillance   13 - 1-13-20   2014年1月

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    記述言語:英語  

    One of the fundamental problems in computer vision is detecting regions or objects of interest from an image sequence. Background subtraction, which removes a background image from the input image, is widely used for detecting foreground objects in practical applications, since it enables us to detect foreground objects without any previous knowledge of them. However, simple background subtraction often detects not only foreground objects but also a lot of noise regions, because it is quite sensitive to background changes. In general, background changes which occur in outdoor scenes can be mainly classified into two types: • Illumination changes – changes caused by lighting conditions such as the sun rising, setting, or being blocked by clouds, • Dynamic changes – changes caused by the swaying motion of tree branches, leaves and grass, fleeting cloud, waves on water and so on.

    DOI: 10.1201/b17223

  • Smart phone based data collecting system for analyzing learning behaviors

    Chengjiu Yin, Fumiya Okubo, Atsushi Shimada, Kentaro Kojima, Masanori Yamada, Hiroaki Ogata, Naomi Fujimura

    22nd International Conference on Computers in Education, ICCE 2014 Proceedings of the 22nd International Conference on Computers in Education, ICCE 2014   575 - 577   2014年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Nowadays, it is a hot topic to analyze the huge amount of data in the world. This issue also exists in the learning during students' life. The learning data are collected only to record students' learning status. As a result, most learning data are not used to improve the quality of learning for students. In this paper, we propose an order made education system, which can recommend students to select the courses they want to learn. In order to analyze students' learning behaviors, we collect students' learning data by using mobile devices.

  • MLIA at imageCLFE 2014 scalable concept image annotation challenge 査読

    Xing Xu, Atsushi Shimada, Rin-Ichiro Taniguchi

    2014 Cross Language Evaluation Forum Conference, CLEF 2014 CEUR Workshop Proceedings   1180   411 - 420   2014年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, we propose a large-scale image annotation system for the ImageCLEF 2014 Scalable Concept Image Annotation task. The annotation task, of this year, concentrated on developing annotation algorithms that rely only on data obtained automatically from the web. Since the sophisticated SVM based annotation techniques had been widely applied in the task last year (ImageCLEF 2013), for the task this year, we also adopt the SVM based annotation techniques and put our effort mainly on obtaining more accurate concepts assignment for training images. More specifically, we proposed a two-fold scheme to assign concepts to unlabeled training images: (1) A traditional process which stems the extracted web data of each training image from textual aspect, and make concepts assignment based on the appearance of each concept. (2) An additional process which leverages the deep convolutional network toolbox Overfeat to predict labels (in ImageNet nouns) for each training image from visual aspect, then the predicted tags are mapped to concepts in ImageCLEF based on WordNet synonyms and hyponyms with semantic relations. Finally, the allocated concepts for each training image are generated based on a fusion step of the two-fold concepts assignment processes. Experimental results show that the proposed concepts assignment scheme is efficient to improve the assignment results of traditional textual processing and to allocate reasonable concepts for training images. Consequently, with an efficient SVMs solver based on S-tochastic Gradient Descent, our annotation systems achieves competitive performance in the annotation task.

  • Incremental learning of hand gestures based on submovement sharing

    Ryo Kawahata, Yanrung Wang, Atsushi Shimada, Takayoshi Yamashita, Rin-Ichiro Taniguchi

    11th International Conference on Image Analysis and Recognition, ICIAR 2014 Image Analysis and Recognition - 11th International Conference, ICIAR 2014, Proceedings   58 - 65   2014年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper presents an incremental learning method for hand gesture recognition that learns the individual movements in each gesture of a user. To recognize the movement, we use a subunit-based dynamic time warping method, which treats a hand movement as a sequence of ubmovements. In our method, each hand movement is decomposed into submovements and the arrangement of submovements is reflected in the training sample database. Experimental results from the lassification of ten gestures demonstrate that our method can improve the recognition rate compared with a method without incremental learning. In addition, the experimental results show that incremental learning of a single class of gestures can improve the recognition rate of multi-class gestures using our method.

    DOI: 10.1007/978-3-319-11755-3_7

  • A subunit-based dynamic time warping approach for hand movement recognition

    Yanrung Wang, Atsushi Shimada, Takayoshi Yamashita, Rin Ichiro Taniguchi

    17th International Conference on Image Analysis and Processing, ICIAP 2013 Image Analysis and Processing, ICIAP 2013 - 17th International Conference, Proceedings   672 - 681   2013年10月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    A subunit-based Dynamic Time Warping (DTW) approach is proposed for hand movement recognition. Two major contributions distinguish the proposed approach from conventional DTW. (1) A set of hand movement subunits is constructed using a data-driven method. The common sub-movements (subunits) are shared across hand gestures to obtain a smaller training data size and search space to improve recognition performance. (2) A similarity measure robust to variability is offered using subunit-to-subunit matching to absorb the difference between two similar sub-sequences belonging to the same subunit, and only keeping the distances between sub-sequences that relate to different subunits. Our experimental results demonstrate the efficiency and accuracy of the proposed approach.

    DOI: 10.1007/978-3-642-41181-6_68

  • Latent topic model for image annotation by modeling topic correlation

    Xing Xu, Atsushi Shimada, Rin-Ichiro Taniguchi

    2013 IEEE International Conference on Multimedia and Expo, ICME 2013 2013 IEEE International Conference on Multimedia and Expo, ICME 2013   2013年10月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    For the task of image annotation, traditional probabilistic topic models based on Latent Dirichlet Allocation (LDA) [1], assume that an image is a mixture of latent topics. An inevitable limitation of LDA is the inability to model topic correlation since topic proportions of an image are generated independently. Motivated by Correlated Topic Model (CTM) [2] which derives from natural language processing to model topic correlation of a document, we extend the popular LDA based models (corrLDA [3], sLDA-bin [4], trmmLDA [5]) to CTM based models (corrCTM, sCTM-bin, trmmCTM). We present a comprehensive comparison between CTM based and LDA based models on three benchmark datasets, illustrating the superior annotation performance of proposed CTM based models, by means of propagating topic correlation among image features and annotation words.

    DOI: 10.1109/ICME.2013.6607531

  • Image annotation by learning label-specific distance metrics

    Xing Xu, Atsushi Shimada, Rin Ichiro Taniguchi

    17th International Conference on Image Analysis and Processing, ICIAP 2013 Image Analysis and Processing, ICIAP 2013 - 17th International Conference, Proceedings   101 - 110   2013年10月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Recently, weighted k nearest neighbor based label prediction model combined with distance metric learning (KNN+ML) [10,14,17], has become more attractive and showed exciting results on image annotation task. Usually, in KNN+ML framework, a uniform distance metric is learned given a collection of similar/dissimilar image pairs from training data. Thus, for a couple of images, their distance is globally unique. However, this might not be sufficient for label prediction on annotation task because it is impossible to distinguish the multiple labels attached to each image. In this paper, we are motivated to learn multiple label-specific distance metrics, and measure the distance of an image pair under different labels' distance metrics. We also propose a novel label specific prediction model, in which the weight of each label is determined by its specific distance value rather than previous global distance value. Compared with previous KNN+ML methods, our proposed method is able to exactly discriminate each label in each neighbor, and efficiently reduce the prediction of false positive and false negative labels. Extensive experimental results on three benchmark datasets demonstrate that proposed method achieves more accurate annotation results and competitive overall performance.

    DOI: 10.1007/978-3-642-41181-6_11

  • Kitchen scene context based gesture recognition A contest in ICPR2012

    Atsushi Shimada, Kazuaki Kondo, Daisuke Deguchi, Géraldine Morin, Helman Stern

    International Workshop on Advances in Depth Image Analysis and Applications, WDIA 2012 Advances in Depth Image Analysis and Applications - International Workshop, WDIA 2012, Selected and Invited Papers   168 - 185   2013年9月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper introduces a new open dataset "Actions for Cooking Eggs (ACE) Dataset" and summarizes results of the contest on "Kitchen Scene Context based Gesture Recognition", in conjunction with ICPR2012. The dataset consists of naturally performed actions in a kitchen environment. Five kinds of cooking menus were actually performed by five different actors, and the cooking actions were recorded by a Kinect Sensor. Color image sequences and depth image sequences are both available. Besides, action label was given to each frame. To estimate the action label, action recognition method has to analyze not only actor's action, but also scene contexts such as ingredients and cooking utensils. We compare the submitted algorithms and the results in this paper.

    DOI: 10.1007/978-3-642-40303-3_18

  • Object detection based on spatio-temporal light field sensing 査読

    Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    IPSJ Transactions on Computer Vision and Applications   5   129 - 133   2013年7月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    This paper discusses about object detection based on spatio-temporal light field sensing. Our proposed method generates an arbitrary in-focus plane in the surveillance scene, and the background region can be filtered out by out-focusing. A new feature representation, called Local Ray Pattern (LRP), is introduced to evaluate the spatial consistency of light rays. The combination of LRP and GMM-based background modeling realizes object detection on the in-focus plane. Experimental results demonstrate the effectiveness and applicability for video surveillance.

    DOI: 10.2197/ipsjtcva.5.129

  • Contribution estimation of participants for human interaction recognition 査読

    Yanli Ji, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    IEEJ Transactions on Electrical and Electronic Engineering   8 ( 3 )   269 - 276   2013年5月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, we propose an efficient algorithm to recognize actions of human interaction. Unlike previous algorithms using two participants' actions, the proposed algorithm estimates the action contribution of participants to determine which participant's action is the major action for correct interaction recognition. To estimate this contribution, we construct a contribution interaction model for each interaction category in which both participants carry out major actions. Using the contribution models, we design a method that automatically estimates the contribution of participants and classifies interaction samples into "co-contribution" and "single-contribution" interactions. At the same time, the major actions in the "single-contribution" interactions are determined. We evaluate our method on the UT-interaction dataset and our original interaction dataset (LIMU). Recognition results indicate the robustness of the proposed method and the high estimation accuracy obtained: estimation accuracies of 96 and 98% in set 1 and set 2 of the UT dataset, respectively, and 97.8% in the LIMU dataset. Based on the estimation results, we extract the major action information for interaction recognition. Average recognition accuracies of 93.3% in set 1 and 91.7% in set 2 of the UT dataset were obtained. Our result is at least 5% better than those obtained with previous algorithms. For the LIMU dataset, recognition accuracy reached 91.1%. It was 8.9% higher than the recognition result without contribution estimation.

    DOI: 10.1002/tee.21850

  • 'Clickable real world' information retrieval application based on geo-visual clustering

    Takashi Ito, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    19th Korea-Japan Joint Workshop on Frontiers of Computer Vision, FCV 2013 FCV 2013 - Proceedings of the 19th Korea-Japan Joint Workshop on Frontiers of Computer Vision   22 - 25   2013年4月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose an intuitive operation based information retrieval system 'Clickable Real World (CRW)'. If a user which uses this system takes a picture of a landmark in the world, some related information is displayed on a smartphone. One of the key research issues is how to estimate appropriate keywords in order to retrieve information related to the target. Our strategy utilizes a lot of training samples, which consist of images, tags and geolocation where the image was taken, shared on the Web (such as flickr and Picasa). Then, a keyword table is created based on the consistency of geolocation and visual feature. We developed a prototype version of CRW on a smartphone, and conducted a field experiment in Kyoto city, Japan.

    DOI: 10.1109/FCV.2013.6485453

  • Hand gesture based TV control system - Towards both user - & Machine-friendly gesture applications

    Atsushi Shimada, Takayoshi Yamashita, Rin-Ichiro Taniguchi

    19th Korea-Japan Joint Workshop on Frontiers of Computer Vision, FCV 2013 FCV 2013 - Proceedings of the 19th Korea-Japan Joint Workshop on Frontiers of Computer Vision   121 - 126   2013年4月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    A man-machine interface plays an important role to convey an intention from a user to machine. Nowadays, vision-based solution has been attracting a lot of attention since it does not require any attachment sensors on the body. One of the most famous applications is to control TV operations by hand gestures. Instead of bothersome operations using a specific controller, a user can send a command to a system by intuitive hand gestures. Most of previous studies have been focused on a strategy to detect/recognize hand motions, and the design concept to realize high usability of the application got less attention. This paper discusses how to design a user-friendly and also machine-friendly hand gesture application. Our concept gives a user an opportunity to customize a TV control interface by selecting hand shapes and hand motions through interaction with a hand gesture selection system.

    DOI: 10.1109/FCV.2013.6485473

  • Correlated topic model for image annotation

    Xing Xu, Atsushi Shimada, Rin-Ichiro Taniguchi

    19th Korea-Japan Joint Workshop on Frontiers of Computer Vision, FCV 2013 FCV 2013 - Proceedings of the 19th Korea-Japan Joint Workshop on Frontiers of Computer Vision   201 - 208   2013年4月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    For the task of image annotation, traditional methods based on probabilistic topic model, such as correspondence Latent Dirichlet Allocation (corrLDA) [1], assumes that image is a mixture of latent topics. However, this kind of models is unable to directly model correlation between topics since topic proportions of an image are generated independently. Our model, called correspondence Correlated Topic Model (corrCTM), extends Correlated Topic Model (CTM) [2] from natural language processing to capture topic correlation from covariance structure of more flexible model distribution. Unlike previous LDA based models, topic proportions are correlated with each other in proposed corrCTM. And the topic correlation propagates from image features to annotation words through a generative process, and finally correspondence between images and words could be generated. We derive an approximate inference and estimation algorithm based on variational method. We examine the performance of our model on two benchmark image datasets, show improved performance over corrLDA for both annotation and modeling word correlation.

    DOI: 10.1109/FCV.2013.6485488

  • Background model based on intensity change similarity among pixels

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    19th Korea-Japan Joint Workshop on Frontiers of Computer Vision, FCV 2013 FCV 2013 - Proceedings of the 19th Korea-Japan Joint Workshop on Frontiers of Computer Vision   276 - 280   2013年4月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Object detection is an important task for computer vision applications. Many researchers have proposed a lot of methods to detect the objects through the background modeling. Most of previous approaches model the background independently for each pixel and detect foreground objects based on it. Then, it is difficult for the background model to deal with illumination changes, which cause significant intensity changes as in the case that a foreground object appears. To solve this problem, in this paper, we propose a new background model considering the similarity in the intensity changes among pixels. In particular, we classify all the pixels into several clusters based on the similarity of their intensity changes. Then, focusing on each cluster, we can easily identify whether the significant intensity changes are caused by foreground objects or illumination changes. This is because, if the illumination changes, most of the pixels belonging to the same cluster exhibit the similar intensity changes.

    DOI: 10.1109/FCV.2013.6485504

  • Background model based on statistical local difference pattern

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    11th Asian Conference on Computer Vision, ACCV 2012 Computer Vision - ACCV 2012 International Workshops, Revised Selected Papers   327 - 332   2013年4月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We present a robust background model for object detection and report its evaluation results using the database of Background Models Challenge (BMC). Our background model is based on a statistical local feature. In particular, we use an illumination invariant local feature and describe its distribution by using a statistical framework. Thanks to the effectiveness of the local feature and the statistical framework, our method can adapt to both illumination and dynamic background changes. Experimental results, which are done thanks to the database of BMC, show that our method can detect foreground objects robustly against background changes.

    DOI: 10.1007/978-3-642-37410-4_30

  • A compact descriptor CHOG3D and its application in human action recognition 査読

    Yanli Ji, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    IEEJ Transactions on Electrical and Electronic Engineering   8 ( 1 )   69 - 77   2013年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In this paper, we propose a new method to calculate local features. We extend the FAST corner detector to the spatiotemporal space to extract the shape and motion information of human actions. And a compact peak-kept histogram of oriented spatiotemporal gradients (CHOG3D) is proposed to calculate local features. CHOG3D is calculated in a small support region of a feature point, and it employs the simplest gradient, the first-order gradient, for descriptor calculation. Through parameter training, the proper length of the CHOG3D is determined to be 80 elements, which is 1/12.5 times the dimension of HOG3D in the KTH dataset. In addition, it keeps the peak value of quantized gradient to represent human actions more exactly and distinguish them more correctly. CHOG3D overcomes the disadvantages of the complex calculation and huge length of the descriptor HOG3D. From a comparison of the computation cost, CHOG3D is 7.56 times faster than HOG3D in the KTH dataset. We apply the algorithm for human action recognition with support vector machine. The results show that our method outperforms HOG3D and some other currently used algorithms.

    DOI: 10.1002/tee.21793

  • Walking velocity model for accurate and massive pedestrian simulator 査読

    Yosuke Nonaka, Masaki Onishi, Tomohisa Yamashita, Takashi Okada, Atsushi Shimada, Rin Ichiro Taniguchi

    IEEJ Transactions on Electronics, Information and Systems   133 ( 9 )   1779 - 1786+17   2013年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Recently, office buildings and commercial facilities are getting larger, and emergency evacuation guidance procedures are urgently required. To support evacuation planning, several kinds of evacuation simulations have been proposed. These use walking velocity models that were generated depending on actual pedestrian flow to define an agent's velocity. However, most of these conventional models have been simplified and it is difficult to reproduce complex evacuation scenarios faithfully. In this paper, we propose a walking velocity model for accurate pedestrian simulations. The model presents the relation between pedestrian density and velocity distribution; it was generated through analyzing flows observed from actual evacuation drills. We modeled dense pedestrian flows using the flow data with conventional models to improve simulation performance. In addition, we introduced a method of representing difference among individuals. The validity of the model is confirmed by experimenting with the pedestrian simulator.

    DOI: 10.1541/ieejeiss.133.1779

  • Light field distortion feature for transparent object recognition 査読

    Kazuki Maeno, Hajime Nagahara, Atsushi Shimada, Rin Ichiro Taniguchi

    26th IEEE Conference on Computer Vision and Pattern Recognition, CVPR 2013 Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition   2786 - 2793   2013年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Current object-recognition algorithms use local features, such as scale-invariant feature transform (SIFT) and speeded-up robust features (SURF), for visually learning to recognize objects. These approaches though cannot apply to transparent objects made of glass or plastic, as such objects take on the visual features of background objects, and the appearance of such objects dramatically varies with changes in scene background. Indeed, in transmitting light, transparent objects have the unique characteristic of distorting the background by refraction. In this paper, we use a single-shot light field image as an input and model the distortion of the light field caused by the refractive property of a transparent object. We propose a new feature, called the light field distortion (LFD) feature, for identifying a transparent object. The proposal incorporates this LFD feature into the bag-of-features approach for recognizing transparent objects. We evaluated its performance in laboratory and real settings.

    DOI: 10.1109/CVPR.2013.359

  • Geolocation based landmark detection and annotation-towards clickable real world- 査読

    Atsushi Shimada, Vincent Charvillat, Hajime Nagahara, Rin Ichiro Taniguchi

    IEEJ Transactions on Electronics, Information and Systems   133 ( 1 )   142 - 149   2013年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Clickable Real World is a new framework to realize an intuitive information search with a mobile terminal. To achieve the goal, we tackle two challenging tasks. One is landmark detection from an observing scene. Our approach detects a landmark based on an image prior. The prior is not given manually. Instead, it is generated automatically from the training samples collected from photo sharing website. Another challenging task is image annotation assisted by geolocation. We use the location of a user who uses a mobile terminal, and geolocation where the training sample images were taken. Two probabilistic models are generated to achieve image annotation. One is image-based labeling which utilizes the co-occurrence between image features and label features. The other is label-based localization which uses the consensus about the label given around the geolocation among photographers. We combine two probabilistic approaches to improve the accuracy of image annotation. We demonstrate this approach for 87 scenes in the world.

    DOI: 10.1541/ieejeiss.133.142

  • Background modeling based on bidirectional analysis 査読

    Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    Unknown Journal   1979 - 1986   2013年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Background modeling and subtraction is an essential task in video surveillance applications. Most traditional studies use information observed in past frames to create and update a background model. To adapt to background changes, the background model has been enhanced by introducing various forms of information including spatial consistency and temporal tendency. In this paper, we propose a new framework that leverages information from a future period. Our proposed approach realizes a low-cost and highly accurate background model. The proposed framework is called bidirectional background modeling, and performs background subtraction based on bidirectional analysis, i.e., analysis from past to present and analysis from future to present. Although a result will be output with some delay because information is taken from a future period, our proposed approach improves the accuracy by about 30% if only a 33-millisecond of delay is acceptable. Furthermore, the memory cost can be reduced by about 65% relative to typical background modeling.

    DOI: 10.1109/CVPR.2013.258

  • A method for analyzing the image disparity of 3D video 査読

    Yoshitomo Nakamura, Koutaro Kudo, Masanori Takemoto, Satoru Kubota, Atsushi Shimada

    Kyokai Joho Imeji Zasshi/Journal of the Institute of Image Information and Television Engineers   67 ( 11 )   J400 - J406   2013年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    A method is described for analyzing the image disparity of 3D video. This method was used to analyze the image disparity charactristics of forty 3D movies. The percentage of image disparities that were out-of-range by one degree or more was higher in the convergent direction than in the divergent direction. Characteristics of the image disparity for 3D video are discussed in relation to the results.

    DOI: 10.3169/itej.67.J400

  • Hash-based early recognition of gesture patterns 査読

    Yoshiyasu Ko, Atsushi Shimada, Hajime Nagahara, Rin ichiro Taniguchi

    Artificial Life and Robotics   17 ( 3-4 )   476 - 482   2013年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    In these days, "early recognition" of gesture patterns has been studied by many researchers. Early recognition is a method to make a decision of gesture recognition at the beginning part of it. In traditional method, the key postures for a gesture are utilized for recognition and early recognition is performed frame-by-frame. However, this method has a problem that computational time in recognition processing increases in proportion to size of posture database. If the processing time becomes longer, some input frames will be ignored from the processing. It results in lower recognition accuracy. In this paper, we introduce a hash-based approach to search the posture database. It realizes real-time processing, and keep high performance of recognition.

    DOI: 10.1007/s10015-012-0085-6

  • Evaluation report of integrated background modeling based on spatio-temporal features

    Yosuke Nonaka, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    2012 IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops, CVPRW 2012 2012 IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops, CVPRW 2012   9 - 14   2012年8月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We report evaluation results of an integrated background modeling based on spatio-temporal features. The background modeling method consists of three complementary approaches: pixel-level background modeling, region-level one and frame-level one. The pixel-level background model uses the probability density function to approximate background model. The PDF is estimated non-parametrically by using Parzen density estimation. The region-level model is based on the evaluation of the local texture around each pixel while reducing the effects of variations in lighting. The frame-level model detects sudden, global changes of the the image brightness and estimates a present background image from input image referring to a background model image. Then, objects are extracted by background subtraction. Fusing these approaches realizes robust object detection under varying illumination.

    DOI: 10.1109/CVPRW.2012.6238920

  • Howto select useful hand shapes for hand gesture recognition system

    Atsushi Shimada, Takayoshi Yamashita, Rin Ichiro Taniguchi

    1st International Conference on Pattern Recognition Applications and Methods, ICPRAM 2012 ICPRAM 2012 - Proceedings of the 1st International Conference on Pattern Recognition Applications and Methods   394 - 399   2012年6月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    This paper discusses hand shapes for Human Computer Interface. Usually, a hand gesture based Human Computer Interface is developed by human centered design concept. A system designer or developer tends to select hand shapes by himself/herself without verifying practical effectiveness from the standpoint of system aspect. Instead, a methodology of training and recognition of hand shapes is often discussed. On the other hand, this paper listens to system's voice; which hand shape is easy to be recognized, which is easy to be confused and so on. Actually, 37 kinds of tentative hand shapes were investigated from the viewpoint of system-friendly hand shape. Based on the result, a supporting system was developed for a system designer, which helps to find appropriate hand shapes which satisfy both "user-friendly" and "system- friendly" demand.

  • SOM-based human action recognition using local feature descriptor CHOG3D 査読

    Yanli Ji, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    Research Reports on Information Science and Electrical Engineering of Kyushu University   17 ( 1 )   1 - 8   2012年5月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Human action recognition is applied in a wide field, such as video surveillance, intelligent interface, and intelligent robots. However, since various action classes, complex surrounding, interaction with objects, et al., it is still a complex problem to be solved. In this paper, we propose a method combining the Self-Organizing Map(SOM) and the classifier k-Nearest Neighbor algorithm (k-NN) to recognize human actions. We represent human actions in the form of local features using a compact descriptor, a histogram of oriented gradient in spatio-temporal 3D space(CHOG3D), which was proposed by us in the paper 1). Then we adopt SOM for feature training to extract key features of action information. With these key features, we adopt k-NN for action recognition. In our experiments, we test the optimal map size of SOM and the proper value k of k-NN for correct recognition. Our method is tested on KTH, Weizmann and UCF datasets, and results certify its efficiency.

  • Cooking gesture recognition using local feature and depth image

    Yanli Ji, Yoshiyasu Ko, Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    ACM Multimedia 2012 4th Workshop on Multimedia for Cooking and Eating Activities, CEA 2012 CEA 2012 - Proceedings of the 2012 ACM Workshop on Multimedia for Cooking and Eating Activities, Co-located with ACM Multimedia 2012   37 - 42   2012年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, we propose a method combining visual local features and depth image information to recognize cooking gestures. We employ the feature calculation method [2] which used extended FAST detector and a compact descriptor CHOG3D to calculate visual local features. We pack the local features by BoW in frame sequences to represent the cooking gestures. In addition, the depth images of hands gestures are extracted and integrated spatio-temporally to represent the position and trajectory information of cooking gestures. The two kinds of features are used to describe cooking gestures, and recognition is realized by employing the SVM. In our method, we determine the gesture class for each frame in cooking sequences. By analyzing the results of frames, we recognize cooking gestures in a continue frame sequences of cooking menus, and find the temporal positions of the recognized gestures.

    DOI: 10.1145/2390776.2390785

  • WiP abstract Estimation of electric power consumption of individuals by observing people's activity

    Atsushi Shimada, Shigeru Takano, Shigeaki Tagashira, Rin-Ichiro Taniguchi, Hiroto Yasuura

    2012 IEEE/ACM 3rd International Conference on Cyber-Physical Systems, ICCPS 2012 Proceedings - 2012 IEEE/ACM 3rd International Conference on Cyber-Physical Systems, ICCPS 2012   206   2012年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Estimation of electric power consumption of individuals based on human action analysis is presented. It is a key tool to reduce the energy consumption.

    DOI: 10.1109/ICCPS.2012.29

  • Adaptive template method for early recognition of gestures

    Manabu Kawashima, Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    2011 17th Korea-Japan Joint Workshop on Frontiers of Computer Vision, FCV 2011 2011 17th Korea-Japan Joint Workshop on Frontiers of Computer Vision, FCV 2011   2011年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a new approach for early gesture recognition. Early gesture recognition is a method to recognize sequential posture patterns at their beginning parts. Using early gesture recognition, we can reduce the delay and increase the interactivity of the system. The key issue of early recognition problem is how to recognize the beginning part of gesture. Generally, a reference gesture consists of a sequence of postures. Therefore, to realize early recognition we have to select beginning parts of the posture sequences. In this paper, we propose a method to obtain such beginning parts of the posture sequences, and demonstrate its effectiveness through some experiments.

    DOI: 10.1109/FCV.2011.5739719

  • Statistical local difference pattern for background modeling 査読

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    IPSJ Transactions on Computer Vision and Applications   3   198 - 210   2011年12月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Object detection is an important task for computer vision applications. Many researchers have proposed a number of methods to detect the objects through background modeling. To adapt to "illumination changes" in the background, local feature-based background models are proposed. They assume that local features are not affected by background changes. However, "motion changes", such as the movement of trees, affect the local features in the background significantly. Therefore, it is difficult for local feature-based models to handle motion changes in the background. To solve this problem, we propose a new background model in this paper by applying a statistical framework to a local feature-based approach. Our proposed method combines the concepts of statistical and local feature-based approaches into a single framework. In particular, we use illumination invariant local features and describe their distribution by Gaussian Mixture Models (GMMs). The local feature has the ability to tolerate the effects of "illumination changes", and the GMM can learn the variety of "motion changes". As a result, this method can handle both background changes. Some experimental results show that the proposed method can detect the foreground objects robustly against both illumination changes and motion changes in the background.

    DOI: 10.2197/ipsjtcva.3.198

  • Maintenance of blind background model for robust object detection 査読

    Atsushi Shimada, Satoshi Yoshinaga, Rin Ichiro Taniguchi

    IPSJ Transactions on Computer Vision and Applications   3   148 - 159   2011年12月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    An adaptive background model plays an important role for object detection in a scene which includes illumination changes. An updating process of the background model is utilized to improve the robustness against illumination changes. However, the process sometimes causes a false-negative problem when a moving object stops in an observed scene. A paused object will be gradually trained as the background since the observed pixel value is directly used for the model update. In addition, the original background model hidden by the paused object cannot be updated. If the illumination changes behind the paused object, a false-positive problem will be caused when the object restarts to move. In this paper, we propose 1) a method to inhibit background training to avoid the falsenegative problem, and 2) a method to update an original background region occluded by a paused object to avoid the false-positive problem. We have used a probabilistic approach and a predictive approach of the background model to solve these problems. The great contribution of this paper is that we can keep paused objects from being trained by modeling the original background hidden by them. And also, our approach has an ability to adapt to various illumination changes. Our experimental results show that the proposed method can detect stopped objects robustly, and in addition, it is also robust for illumination changes and as efficient as the state-of-the-art method.

    DOI: 10.2197/ipsjtcva.3.148

  • Geolocation based image annotation

    Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi, Vincent Charvillat

    1st Asian Conference on Pattern Recognition, ACPR 2011 1st Asian Conference on Pattern Recognition, ACPR 2011   657 - 661   2011年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    The growth of photo-sharing website such as Flickr and Picasa enables us to access the billions of images easily. Recent years, many researchers leverage such photo-sharing site to tackle the image annotation problem. The aim of the image annotation is to give a proper label to an unknown image. Generally, image features and label features are used to acquire the relationship between them. Meanwhile, we use not only such image and label features but also geolocation which indicate the information where the image was taken. We formulate the image annotation problem as two important issues; image-based labeling and label-based localization. The former issue is to estimate a proper label from a given image. The latter is the issue to estimate the location from the label. Our approach combine these two estimation strategies. We conducted some experiments and found that our approach outperformed the traditional approach.

    DOI: 10.1109/ACPR.2011.6166619

  • Adaptive background modeling for paused object regions

    Atsushi Shimad, Satoshi Yoshinaga, Rin Ichiro Taniguchi

    International Workshops on Computer Vision, ACCV 2010 Computer Vision - ACCV 2010 Workshops - ACCV 2010 International Workshops, Revised Selected Papers   12 - 22   2011年9月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Background modeling has been widely researched to detect moving objects from image sequences. Most approaches have a falsenegative problem caused by a stopped object. When a moving object stops in an observing scene, it will be gradually trained as background since the observed pixel value is directly used for updating the background model. In this paper, we propose 1) a method to inhibit background training, and 2) a method to update an original background region occluded by stopped object. We have used probabilistic approach and predictive approach of background model to solve these problems. The great contribution of this paper is that we can keep paused objects from being trained.

    DOI: 10.1007/978-3-642-22822-3_2

  • Improvement of early recognition of gesture patterns based on a self-organizing map 査読

    Atsushi Shimada, Manabu Kawashima, Rin ichiro Taniguchi

    Artificial Life and Robotics   16 ( 2 )   198 - 201   2011年9月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose an approach to achieving early recognition of gesture patterns. Early recognition is a method for recognizing sequential patterns at their earliest stage. Therefore, in the case of gesture recognition, we can get a recognition result for human gestures before the gestures are finished. The most difficult problem in early recognition is knowing when the system has determined the result. Most traditional approaches suffer from this problem, since gestures are often ambiguous. At the start of a gesture, in particular, it is very difficult to determinate the recognition result since insufficient input data have been observed. Therefore, we have improved on the traditional approach by using a self-organizing map.

    DOI: 10.1007/s10015-011-0917-9

  • Object detection using local difference patterns

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin Ichiro Taniguchi

    10th Asian Conference on Computer Vision, ACCV 2010 Computer Vision, ACCV 2010 - 10th Asian Conference on Computer Vision, Revised Selected Papers   216 - 227   2011年3月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a new method of background modeling for object detection. Many background models have been previously proposed, and they are divided into two types: "pixel-based models" which model stochastic changes in the value of each pixel and "spatial-based models" which model a local texture around each pixel. Pixel-based models are effective for periodic changes of pixel values, but they cannot deal with sudden illumination changes. On the contrary, spatial-based models are effective for sudden illumination changes, but they cannot deal with periodic change of pixel values, which often vary the textures. To solve these problems, we propose a new probabilistic background model integrating pixel-based and spatial-based models by considering the illumination fluctuation in localized regions. Several experiments show the effectiveness of our approach.

    DOI: 10.1007/978-3-642-19282-1_18

  • Improvement of early recognition of gesture patterns based on self-organizing map

    Atsushi Shimada, Manabu Kawashima, Rin-Ichiro Taniguchi

    16th International Symposium on Artificial Life and Robotics, AROB '11 Proceedings of the 16th International Symposium on Artificial Life and Robotics, AROB 16th'11   777 - 780   2011年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose an approach to achieve early recognition of gesture patterns. Early recognition is a method to recognize sequential patterns at their beginning parts. Therefore, in the case of gesture recognition, we can get a recognition result of human gestures before the gestures have finished. The most difficult problem of early recognition is that when the system determines the recognition result. Most traditional approaches suffer from this problem since the gestures comprehend ambiguity. Especially at the beginning part of them, it is very difficult to determinate the recognition result since enough input data has not been observed yet. Therefore, we have improved traditional approach by using Self-Organizing Map.

  • A compact 3D descriptor in ROI for human action recognition

    Yanli Ji, Atsushi Shimada, Rin Ichiro Taniguchi

    2010 IEEE Region 10 Conference, TENCON 2010 TENCON 2010 - 2010 IEEE Region 10 Conference   454 - 459   2010年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, a new action recognition system is proposed, which employs 3D FAST corner detection in ROI, compact 3D descriptor to represent action information, and SOM to learn and recognize actions. Through detecting 3D FAST corners in ROI, action information of shape and motion can be obtained, and noise corners can be deleted at the same time. Furthermore, based on 3D HOG, we produce a simpler descriptor which is proposed by shortening the support region of interest points, combining symmetric bins after orientation quantization using icosahedron, and keeping the top value bin of quantized histogram. Compared with the descriptor before adjustment, our descriptor uses only 80 bins other than 960 bins to describe one interest point, which saves much computation time and memory. Our frame matching experiment on descriptor also certifies that our descriptor outperforms the previous one. Our descriptor is applied to recognize actions on KTH and Hollywood databases, and the results show that it performs well.

    DOI: 10.1109/TENCON.2010.5686694

  • Towards robust object detection Integrated background modeling based on spatio-temporal features

    Tatsuya Tanaka, Atsushi Shimada, Rin-Ichiro Taniguchi, Takayoshi Yamashita, Daisaku Arita

    9th Asian Conference on Computer Vision, ACCV 2009 Computer Vision, ACCV 2009 - 9th Asian Conference on Computer Vision, Revised Selected Papers   201 - 202   2010年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a sophisticated method for background modeling based on spatio-temporal features. It consists of three complementary approaches: pixel-level background modeling, region-level one and frame-level one. The pixel-level background model uses the probability density function to approximate background model. The PDF is estimated non-parametrically by using Parzen density estimation. The region-level model is based on the evaluation of the local texture around each pixel while reducing the effects of variations in lighting. The frame-level model detects sudden, global changes of the the image brightness and estimates a present background image from input image referring to a background model image. Then, objects are extracted by background subtraction. Fusing their approaches realizes robust object detection under varying illumination, which is shown in several experiments.

    DOI: 10.1007/978-3-642-12307-8_19

  • Structuring and presenting the distributed sensory information in the Sensing web

    Rin-Ichiro Taniguchi, Atsushi Shimada, Yuji Kawaguchi, Yousuke Miyata, Satoshi Yoshinaga

    13th International Conference on Information Processing and Management of Uncertainty, IPMU 2010 Information Processing and Management of Uncertainty in Knowledge-Based Systems Applications, 13th International Conference, IPMU 2010, Proceedings   643 - 652   2010年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In the Sensing Web[1], a variety of sensors are installed dispersively, and, from those sensors, we acquire various information of the real world events. Although we can acquire a certain kind of information from each of the sensors separately, such information is fragmentary and integration or structurization of sensory data captured by multiple sensors is quite important for us to acquire truly meaningful information of the real world. From this point of view, we have researched into organization and presentation of distributed sensory data in the Sensing Web project. In this paper, we will present our research activity, especially wide-area object tracking, and some of demonstrative experiments.

    DOI: 10.1007/978-3-642-14058-7_66

  • Object detection based on combining multiple background modelings 査読

    Tatsuya Tanaka, Satoshi Yoshinaga, Atsushi Shimada, Rin Ichiro Taniguchi, Takayoshi Yamashita, Daisaku Arita

    IPSJ Transactions on Computer Vision and Applications   2   156 - 168   2010年12月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose a new method for background modeling based on combination of multiple models. Our method consists of three complementary approaches. The first one, or the pixel-level background modeling, uses the probability density function to approximate background model, where the PDF is estimated non-parametrically by using Parzen density estimation. Then the pixel-level background modeling can adapt periodical changes of pixel values. The regionlevel background modeling is based on the evaluation of local texture around each pixel, which can reduce the effects of variations in lighting. It can adapt gradual change of pixel value. The frame-level background modeling detects sudden and global changes of the image brightness and estimates a present background image from input image referring to a model background image, and foreground objects can be extracted by background subtraction. In our proposed method, integrating these approaches realizes robust object detection under varying illumination, whose effectiveness is shown in several experiments.

    DOI: 10.2197/ipsjtcva.2.156

  • Human action recognition by SOM considering the probability of spatio-temporal features

    Yanli Ji, Atsushi Shimada, Rin Ichiro Taniguchi

    17th International Conference on Neural Information Processing, ICONIP 2010 Neural Information Processing Models and Applications - 17th International Conference, ICONIP 2010, Proceedings   391 - 398   2010年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    In this paper, an action recognition system was invented by proposing a compact 3D descriptor to represent action information, and employing self-organizing map (SOM) to learn and recognize actions. Histogram Of Gradient 3D (HOG3D) performed better among currently used descriptors for action recognition. However, the calculation of the descriptor is quite complex. Furthermore, it used a vector with 960 elements to describe one interest point. Therefore, we proposed a compact descriptor, which shortened the support region of interest points, combined symmetric bins after orientation quantization. In addition, the top value bin of quantized vector was kept instead of setting threshold experimentally. Comparing with HOG3D, our descriptor used 80 bins to describe a point, which reduced much computation complexity. The compact descriptor was used to learn and recognize actions considering the probability of local features in SOM, and the results showed that our system outperformed others both on KTH and Hollywood datasets.

    DOI: 10.1007/978-3-642-17534-3_48

  • Early recognition based on co-occurrence of gesture patterns

    Atsushi Shimada, Manabu Kawashima, Rin Ichiro Taniguchi

    17th International Conference on Neural Information Processing, ICONIP 2010 Neural Information Processing Models and Applications - 17th International Conference, ICONIP 2010, Proceedings   431 - 438   2010年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose an approach to achieve early recognition of gesture patterns. We assume that there are two people who interact with a machine, a robot or something. In such a situation, a gesture of a person often has a relationship with a gesture of another person. We exploit such a relationship to realize early recognition of gesture patterns. Early recognition is a method to recognize sequential patterns at their beginning parts. Therefore, in the case of gesture recognition, we can get a recognition result of human gestures before the gestures have finished. Recent years, some approaches have been proposed. In this paper, we expand the application range of early recognition to multiple people based on the co-occurrence of gesture patterns. In our approach, we use Self-Organizing Map to represent gesture patterns of each person, and associative memory based approach learns the relationship between co-occurring gestures. In the experiments, we have found that our proposed method achieved the early recognition more accurately and earlier than the traditional approach.

    DOI: 10.1007/978-3-642-17534-3_53

  • Clickable real world Interaction with real-world landmarks using mobile phone camera

    Naoyuki Abe, Wataru Oogami, Atsushi Shimada, Hajime Nagahara, Rin-Ichiro Taniguchi

    2010 IEEE Region 10 Conference, TENCON 2010 TENCON 2010 - 2010 IEEE Region 10 Conference   914 - 917   2010年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    "Clickable Real World" is a new methodology to retrieve real-time real-world information from the web. The key point is that the query here is the name and the attributes of a given landmark, which is given by taking a picture of the landmark by a mobile phone camera. The user can feel to directly click the landmark in front of him/her by the shutter clicks. One of the great advantages of our approach is to use open image database such as Flickr, Picasa, or so on, to identify a landmark. Images on such open databases are automatically updated and some proper keywords are given by photographers in the world. Therefore, we need not prepare reference images which are required to identify a landmark. In addition, a matched image might have proper labels which indicate the landmark. In this paper, we will explain the overview of Clickable Real World and report some experimental results.

    DOI: 10.1109/TENCON.2010.5686550

  • Robust face recognition using multiple self-organized Gabor features and local similarity matching

    Saleh Aly, Atsushi Shimada, Naoyuki Tsuruta, Rin Ichiro Taniguchi

    2010 20th International Conference on Pattern Recognition, ICPR 2010 Proceedings - 2010 20th International Conference on Pattern Recognition, ICPR 2010   2909 - 2912   2010年11月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Gabor-based face representation has achieved enormous success in face recognition. However, one drawback of Gabor-based face representation is the huge amount of data that must be stored. Due to the nonlinear structure of the data obtained from Gabor response, classical linear projection methods like principal component analysis fail to learn the distribution of the data. A nonlinear projection method based on a set of self-organizing maps is employed to capture this nonlinearity and to represent face in a new reduced feature space. The Multiple Self-Organized Gabor Features (MSOGF) algorithm is used to represent the input image using all winner indices from each SOM map. A new local matching algorithm based on the similarity between local features is also proposed to classify unlabeled data. Experimental results on FERET database prove that the proposed method is robust to expression variations.

    DOI: 10.1109/ICPR.2010.713

  • H-029 装着型センサによる農作業認識システム構築に向けて(H分野:画像認識・メディア理解,一般論文)

    Rin-Ichiro Taniguchi, Teruaki Nanseki, 有田 大作, 長原 一, Atsushi Shimada

    情報科学技術フォーラム講演論文集   9 ( 3 )   195 - 196   2010年8月

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    記述言語:日本語   掲載種別:研究論文(学術雑誌)  

    H-029 Construction of agricultural work recognition system using wearable sensors

  • Real-time people counting using blob descriptor 査読

    Satoshi Yoshinaga, Atsushi Shimada, Rin-Ichiro Taniguchi

    1st International Conference on Security Camera Network, Privacy Protection and Community Safety 2009, SPC2009 Procedia - Social and Behavioral Sciences   2 ( 1 )   143 - 152   2010年8月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose a system for counting the number of pedestrians in real-time. This system estimates "how many pedestrians are and where they are in video sequences" by the following procedures. First, candidate regions are segmented into blobs according to background subtraction. Second, a set of features are extracted from each blob and a neural network estimates the number of pedestrians corresponding to each set of features. To realize real-time processing, we used only simple and valid features, and the adaptive background modeling using Parzen density estimation, which realizes fast and accurate object detection in input images. We also validate the effectiveness of the proposed system by several experiments.

    DOI: 10.1016/j.sbspro.2010.01.028

  • Object segmentation under varying illumination Stochastic background model considering spatial locality 査読

    Tatsuya Tanaka, Atsushi Shimada, Daisaku Arita, Rin ichiro Taniguchi

    Progress in Informatics   ( 7 )   21 - 31   2010年3月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose a new method for background modeling. Our method is based on the two complementary approaches. One uses the probability density function (PDF) to approximatebackground model. The PDF is estimated non-parametrically by using Parzen density estimation. Then, foreground object is detected based on the estimated PDF. The method is based on the evaluation of the local texture at pixel-level resolution which reduces the effects of variations in lighting. Fusing those approachs realizes robust object detection under varying illumination. Several experiments show the effectiveness of our approach.

    DOI: 10.2201/NiiPi.2010.7.4

  • Hybrid background modeling for long-term and short-term illumination changes 査読

    Atsushi Shimada, Rin Ichiro Taniguchi

    IEEJ Transactions on Electronics, Information and Systems   130 ( 9 )   1524 - 1529+4   2010年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Background modeling has been widely researched to detect moving objects from image sequences. It is necessary to adapt the background model various changes of illumination condition. Recent years, a hybrid type of background model which consists of more than one background model has been used for object detection since it is very adaptable to illumination changes. In this paper, we also propose a new hybrid type of background model named "Hybrid Spatial-Temporal Background Model". Our model consists of two different kinds of background models. One is pixel-level background model which adapts to long-term illumination changes. The other is spatial-temporal background model which adapts to short-term illumination changes. Our experimental results demonstrate superiority of our method to some related works.

    DOI: 10.1541/ieejeiss.130.1524

  • Hybrid background model using spatial-temporal LBP

    Atsushi Shimada, Rin Ichiro Taniguchi

    6th IEEE International Conference on Advanced Video and Signal Based Surveillance, AVSS 2009 6th IEEE International Conference on Advanced Video and Signal Based Surveillance, AVSS 2009   19 - 24   2009年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Background modeling has been widely researched to detect moving objects from image sequences. It is necessary to adapt the background model various changes of illumination condition. Recent years, a hybrid type of background model which consists of more than one background model has been used for object detection since it is very robust for illumination changes. In this paper, we also propose a new hybrid type of background model named "Hybrid Spatial-Temporal Background Model". Our model consists of two different kinds of background models. One is pixel-level background model which is robust for long-term illumination changes. The other is spatial-temporal background model which is robust for short-term illumination changes. Our experimental results demonstrate superiority of our method to some related works.

    DOI: 10.1109/AVSS.2009.12

  • Vision-based motion capture of interacting multiple people

    Hiroaki Egashira, Atsushi Shimada, Daisaku Arita, Rin-Ichiro Taniguchi

    15th International Conference on Image Analysis and Processing - ICIAP 2009, Proceedings Image Analysis and Processing - ICIAP 2009 - 15th International Conference, Proceedings   451 - 460   2009年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Vision-based motion capture is getting popular for acquiring human motion information in various interactive applications. To enlarge its applicability, we have been developing a vision-based motion capture system which can estimate the postures of multiple people simultaneously using multiview image analysis. Our approach is divided into the following two phases: at first, extraction, or segmentation, of each person in input multiview images; then, posture analysis for one person is applied to the segmented region of each person. The segmentation is realized in the voxel space, which is reconstructed by visual cone intersection of multiview silhouettes. Here, a graph cut algorithm is employed to achieve optimal segmentation. Posture analysis is based on a model-based approach, where a skeleton model of human figure is matched with the multiview silhouettes based on a particle filter and physical constraints on human body movement. Several experimental studies show that the proposed method acquires human postures of multiple people correctly and efficiently even when they touch each otter.

    DOI: 10.1007/978-3-642-04146-4_49

  • Early recognition of gesture patterns using sparse code of self-organizing map

    Manabu Kawashima, Atsushi Shimada, Rin Ichiro Taniguchi

    7th International Workshop on Self-Organizing Maps, WSOM 2009 Advances in Self-Organizing Maps - 7th International Workshop, WSOM 2009, Proceedings   116 - 123   2009年8月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a new gesture recognition method which is called "early recognition". Early recognition is a method to recognize sequential patterns at their beginning parts. Therefore, in the case of gesture recognition, we can get a recognition result of human gestures before the gestures have finished. We realize early recognition by using sparse codes of Self-Organizing Map.

    DOI: 10.1007/978-3-642-02397-2_14

  • Elimination of useless neurons in incremental learnable self-organizing map

    Atsushi Shimada, Rin Ichiro Taniguchi

    7th International Workshop on Self-Organizing Maps, WSOM 2009 Advances in Self-Organizing Maps - 7th International Workshop, WSOM 2009, Proceedings   264 - 271   2009年8月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a method to eliminate unnecessary neurons in Variable-Density Self-Organizing Map. We have defined an energy function which denotes the error of the map, and optimize the energy function by using graph cut algorithm. We conducted experiments to investigate the effectiveness of our approach.

    DOI: 10.1007/978-3-642-02397-2_30

  • Robust human posture analysis using incremental learning and recall based on degree of confidence of feature points 査読

    Atsushi Shimada, Madoka Kanouchi, Daisaku Arita, Rin Ichiro Taniguchi

    International Journal of Intelligent Computing and Cybernetics   2 ( 2 )   304 - 326   2009年6月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    Purpose - The purpose of this paper is to present an approach to improve the accuracy of estimating feature points of human body on a vision-based motion capture system (MCS) by using the variable-density self-organizing map (VDSOM). Design/methodology/approach - The VDSOM is a kind of self-organizing map (SOM) and has an ability to learn training samples incrementally. The authors let VDSOM learn 3D feature points of human body when the MCS succeeded in estimating them correctly. On the other hand, one or more 3D feature point could not be estimated correctly, the VDSOM is used for the other purpose. The SOM including VDSOM has an ability to recall a part of weight vector which have learned in the learning process. This ability is used to recall correct patterns and complement such incorrect feature points by replacing such incorrect feature points with them. Findings - Experimental results show that the approach is effective for estimation of human posture robustly compared with the other methods. Originality/value - The proposed approach is interesting for the collaboration between an MCS and an incremental learning.

    DOI: 10.1108/17563780910959910

  • Object detection under varying illumination based on adaptive background modeling considering spatial locality 査読

    Tatsuya Tanaka, Atsushi Shimada, Daisaku Arita, Rin-Ichiro Taniguchi

    3rd Pacific Rim Symposium on Image and Video Technology, PSIVT 2009 Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)   5414 LNCS   645 - 656   2009年2月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose a new method for background modeling. Our method is based on the two complementary approaches. One uses the probability density function(PDF) to approximate background model. The PDF is estimated non-parametrically by using Parzen density estimation. And foreground object is detected based on the estimated PDF. The other method is based on the evaluation of the local texture at pixel-level resolution while reducing the effects of variations in lighting. Fusing their approach realize robust object detection under varying illumination. Several experiments show the effectiveness of our approach.

    DOI: 10.1007/978-3-540-92957-4_56

  • Object detection based on fast and low-memory hybrid background model 査読

    Atsushi Shimada, Rin-Ichiro Taniguchi

    IEEJ Transactions on Electronics, Information and Systems   129 ( 5 )   2009年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose a new method to create adaptive background models. Traditionally, each pixel has an adaptive background model which consists of Gaussian mixtures. Each model can approximate small changes and periodic changes of pixel values and it helps us to detect moving objects. However, it cannot adapt to some illumination changes such as gradually varying illumination, precipitously varying illumination and so on. The other model such as using a texture or using prediction of pixel value is effective to handle these changes. Therefore, a hybrid background model which is combined with more than two kind of models. In our approach, we use two different types of the background model. The one is the stochastic background model. The other is the predictive background model based on the exponential smoothing.

    DOI: 10.1541/ieejeiss.129.846

  • Billiard instruction system for beginners with a projector-camera system

    Akira Suganuma, Yusuke Ogata, Atsushi Shimada, Daisaku Arita, Rin Ichiro Taniguchi

    2008 International Conference on Advances in Computer Entertainment Technology, ACE 2008 Proceedings of the 2008 International Conference on Advances in Computer Entertainment Technology, ACE 2008   3 - 8   2008年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    The purpose of our work is to develop an instruction system for billiards for beginners using a projector-camera system. The direction and strength of shot are quite important in or- der to make the shot successful. The player's shooting stance is also important to shoot the cue-ball exactly. The direction and strength of shot and the proper shooting stanceare non-symbolic information which is difficult to send to the beginner. It is generally useful that the beginner easily ets these kinds of information. We use a projector to re- solve this problem. In this paper, we describe the method recognizing objects on the table, the method calculating a shooting path and shot difficulty, and the method showing the supporting information. We have confirmed experimental effectiveness of our support information.

    DOI: 10.1145/1501750.1501752

  • Gesture recognition using sparse code of hierarchical SOM

    Atsushi Shimada, Rin Ichiro Taniguchi

    2008 19th International Conference on Pattern Recognition, ICPR 2008   2008年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose an approach to recognize time-series gesture patterns with Hierarchical Self-Organizing Map(HSOM). One of the key issue of the time-series pattern recognition is to absorb the time variant appropriately and to make cluters which include the same gesture class. In our approach. we arrange the SOM hierarchically. In each layer ofthe SOM time series patterns divided into some periods; postures, gesture elements and gestures. They are learned in each layer of HSOM. For example, postures are learned in the first layer, gesture elements are learned in the second layer and so on. Using the sparse code in the bottom layer, the SOM can perform time invarient recognition of the gesture elements and gestures.

    DOI: 10.1109/icpr.2008.4761795

  • Visual feature extraction using variable map-dimension hypercolumn model

    Saleh Aly, Naoyuki Tsuruta, Rin-Ichiro Taniguchi, Atsushi Shimada

    2008 International Joint Conference on Neural Networks, IJCNN 2008 2008 International Joint Conference on Neural Networks, IJCNN 2008   845 - 851   2008年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Hypercolumn model (HCM) is a neural network model previously proposed to solve image recognition problem. In this paper, we propose an improved version of HCM network and demonstrate its ability to solve face recognition problem. HCM network is a hierarchical model based on self-organizing map (SOM) that closely follows the organization of visual cortex and builds an increasingly complex and invariant feature representation. This invariance achieved by alternating between feature extraction and feature integration operation. To improve the recognition rate of HCM, we propose a variable dimension for each map in the feature extraction layer. The number of neurons in each map-side is decided automatically from training data. We demonstrate the performance of the approach using ORL face database.

    DOI: 10.1109/IJCNN.2008.4633896

  • Robust estimation of human posture using incremental learnable self-organizing map

    Atsushi Shimada, Madoka Kanouchi, Daisaku Arita, Rin Ichiro Taniguchi

    2008 International Joint Conference on Neural Networks, IJCNN 2008 2008 International Joint Conference on Neural Networks, IJCNN 2008   939 - 946   2008年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose an approach to improve the accuracy of estimating feature points of human body on a vision-based motion capture system (MCS) by using the Variable-density Self-Organizing Map (VDSOM). The VDSOM is a kind of SelfOrganizing Map (SOM) and has an ability to learn training samples incrementally. We let VDSOM learn 3-D feature points of human body when the MCS succeeded in estimating them correctly. On the other hand, one or more 3-D feature point could not be estimated correctly, we use the VDSOM for the other purpose. The SOM including VDSOM has an ability to recall a part of weight vector which have learned in the learning process. We use this ability to recall correct patterns and complement such incorrect feature points by replacing such incorrect feature points with them.

    DOI: 10.1109/IJCNN.2008.4633912

  • Use of fast algorithm for adaptive background modeling with Parzen density estimation to detect objects 査読

    Tatsuya Tanaka, Atsushi Shimada, Daisaku Arita, Rin-Ichiro Taniguchi, Yoichi Tomiura

    Kyokai Joho Imeji Zasshi/Journal of the Institute of Image Information and Television Engineers   62 ( 12 )   2045 - 2052   2008年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose the use of a fast algorithm for estimating background models. This algorithm makes use of Parzen density estimation in non-stationary scenes. Each pixel has a probability density function this is used to approximate the value of pixels observed in a video sequence. Estimating this function quickly and accurately is important. In our approach, the probability density function is partially updated within the range of a window function based on the value observed. The model quickly adapts to changes in the scene and foreground objects can be robustly detected. Several experiments show the effectiveness of our approach.

    DOI: 10.3169/itej.62.2045

  • A fast algorithm for adaptive background model construction using Parzen density estimation

    Tatsuya Tanaka, Daisaku Arita, Atsushi Shimada, Rin Ichiro Taniguchi

    2007 IEEE Conference on Advanced Video and Signal Based Surveillance, AVSS 2007 2007 IEEE Conference on Advanced Video and Signal Based Surveillance, AVSS 2007 Proceedings   528 - 533   2007年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    Non-parametric representation of pixel intensity distribution is quite effective to construct proper background model and to detect foreground objects accurately. However, from the viewpoint of practical application, the computation cost of the distribution estimation should be reduced. In this paper, we present fast estimation of the probability density function (PDF) of pixel value using Parzen density estimation and foreground object detection based on the estimated PDF. Here, the PDF is computed by partially updating the PDF estimated at the previous frame, and it greatly reduces the computation cost of the PDF estimation. Thus, the background model adapts quickly to changes in the scene and, therefore, foreground objects can be robustly detected. Several experiments show the effectiveness of our approach.

    DOI: 10.1109/AVSS.2007.4425366

  • Non-parametric background and shadow modeling for object detection

    Tatsuya Tanaka, Atsushi Shimada, Daisaku Arita, Rin-Ichiro Taniguchi

    8th Asian Conference on Computer Vision, ACCV 2007 Computer Vision - ACCV 2007 - 8th Asian Conference on Computer Vision, Proceedings   159 - 168   2007年12月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a fast algorithm to estimate background models using Parzen density estimation in non-stationary scenes. Each pixel has a probability density which approximates pixel values observed in a video sequence. It is important to estimate a probability density function fast and accurately. In our approach, the probability density function is partially updated within the range of the window function based on the observed pixel value. The model adapts quickly to changes in the scene and foreground objects can be robustly detected. In addition, applying our approach to cast-shadow modeling, we can detect moving cast shadows. Several experiments show the effectiveness of our approach.

  • Incremental learning in self-organizing map 査読

    Atsushi Shimada, Rin Ichiro Taniguchi

    Research Reports on Information Science and Electrical Engineering of Kyushu University   12 ( 1 )   49 - 54   2007年3月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose a new incremental learning method of Self-Organizing Map. There are three problems in the incremental learning of Self-Organizing Map; 1. neuron depletion, 2. forgetting previous training data, 3. keeping topology. Weights fixed neurons and weights semi-fixed neurons are very effective for the second problem. However the other problems remain. Therefore, we improve the incremental learning method with weights fixed neurons and weights semi-fixed neurons. Our approach can increment neurons effectively in the incremental learning process.

  • Associative learning method in a hypercolumn model 査読

    Atsushi Shimada, Naoyuki Tsuruta, Rin Ichiro Taniguchi

    Artificial Life and Robotics   11 ( 1 )   76 - 81   2007年1月

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    記述言語:英語   掲載種別:研究論文(学術雑誌)  

    We propose an associatively learnable hypercolumn model (AHCM). A hyper-column model is a self-organized, competitive, and hierarchical multilayer neural network. It is derived from the neocognitron by replacing each S cell and C cell with a two-layer hierarchical self-organizing map. The HCM can recognize images with variant object size, position, orientation and spatial resolution. However, feature maps may integrate some features extracted in the lower layer even if the features are extracted from input data which belong to different categories. The learning algorithm of the HCM causes this problem because it is an unsupervised learning used by a self-organizing map. An associative learning method is therefore introduced, which is derived from the HCM by appending associative signals and associative weights to traditional input data and connection weights, respectively. The AHCM was applied to hand-shape recognition. We found that the AHCM could generate an appropriate feature map and higher recognition accuracy compared with the HCM.

    DOI: 10.1007/s10015-006-0404-x

  • Variable-density Self-Organizing Map for incremental learning

    Atsushi Shimada, Rin-Ichiro Taniguchi

    6th Int. Workshop on Self-Organizing Maps, WSOM 2007 WSOM 2007 - 6th Int. Workshop on Self-Organizing Maps   2007年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a new incremental learning method of Self-Organizing Map. Basically, there are three problems in the incremental learning of Self-Organizing Map: 1. depletion of neurons, 2. oblivion of training data previously given, 3. destruction of topological relationship among training samples. Weight-fixed neurons and weight-quasi-fixed neurons are very effective for the second problem. However the other problems still remain. Therefore, we improve the incremental learning method with weight-fixed neurons and weight-quasi-fixed neurons. We solve the problems by introducing a mechanism to increase the number of neurons effectively in the incremental learning process.

  • Dynamic control of adaptive mixture-of-Gaussians background model

    Atsushi Shimada, Daisaku Arita, Rin Ichiro Taniguchi

    IEEE International Conference on Video and Signal Based Surveillance 2006, AVSS 2006 Proceedings - IEEE International Conference on Video and Signal Based Surveillance 2006, AVSS 2006   5   2006年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We propose a method for create a background model in non-stationary scenes. Each pixel has a dynamic Gaussian mixture model Our approach can automatically change the number of Gaussians in each pixel. The number of Gaussians increases when pixel values often change because of Illumination change, object moving and so on. On the other hand, when pixel values are constant in a while, some Gaussians are eliminated or integrated. This process helps reduce computational time. We conducted experiments to investigate the effectiveness of our approach.

    DOI: 10.1109/AVSS.2006.44

  • Automatic camera control system for a distant lecture based on estimation of teacher's behavior

    Atsushi Shimada, Akira Suganuma, Rin Ichiro Taniguchi

    Proceedings of the Seventh IASTED International Conference on Computers and Advanced Technology in Education Proceedings of the Seventh IASTED International Conference on Computers and Advanced Technology in Education   106 - 111   2004年1月

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    記述言語:英語   掲載種別:研究論文(その他学術会議資料等)  

    We are developing an Automatic Camera control system for Education: ACE, which captures a lecture using both a blackboard and a screen. ACE focuses on an oblect explained by a teacher. When this recording strategy is realized, it is necessary for ACE to extract a teacher's behavior and his/her explaining object. In this paper, we describe our algorithm to estimate a teacher's behavior by image processing and the camera control strategy to take suitable shots. We have applied ACE to recording a real lecture to validate it.

▼全件表示

書籍等出版物

  • Spatio-Temporal Background Models for Object Detection, Book Chapter in Background modeling and foreground detection for video surveillance

    Satoshi Yoshinaga, Yosuke Nonaka, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi(担当:共著)

    2014年8月 

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    記述言語:英語   著書種別:学術書

講演・口頭発表等

  • Behavioral Analysis and Visualization on Learning Logs from the CALL Course

    Li Huiyong, Tsuchiya Tomoyuki, Suehiro Daiki, Taniguchi Yuta, Shimada Atsushi, Suzuki Yubun, Ohashi Hiroshi, Ogata Hiroaki

    2017年度 人工知能学会全国大会  2017年5月 

     詳細を見る

    開催年月日: 2018年5月

    記述言語:日本語  

    国名:日本国  

  • 電波接触に基づく人々の多地点移動の可視化とパターン解析

    尾ノ上 晃, 堀 磨伊也, 島田 敬士, 谷口 倫一郎

    火の国情報シンポジウム  2018年3月 

     詳細を見る

    開催年月日: 2018年3月

    記述言語:日本語  

    国名:日本国  

  • CNN for face dection with thermal image

    郭 熠博, 島田 敬士, 内山 英昭, 馬 超, 長原 一, 谷口 倫一郎

    知覚情報/次世代産業システム合同研究会  2018年3月 

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    開催年月日: 2018年3月

    記述言語:日本語  

    国名:日本国  

  • 実世界観測に基づく情報提供による混雑緩和シミュレーション

    中山 経太, 堀 磨伊也, 島田 敬士, 谷口 倫一郎

    火の国情報シンポジウム  2018年3月 

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    開催年月日: 2018年3月

    記述言語:日本語  

    国名:日本国  

  • 農作業者の腕動作認識によるトマト収穫量の空間分布の可視化

    橋本幹基, 有田大作, 島田敬士, 内山英昭, 谷口倫一郎

    信学技報パターン認識・メディア理解 (PRMU2017-134)  2018年1月 

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    開催年月日: 2018年1月

    記述言語:日本語  

    国名:日本国  

  • リアルタイム学習分析に基づく講義支援

    島田 敬士, 緒方 広明, 木實 新一

    信学技報教育工学(ET2017-79)  2018年1月 

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    開催年月日: 2018年1月

    記述言語:日本語  

    国名:日本国  

  • Learning Style Based Collaborative Learning Construction: Can it Improve Group Work in a Learning Environment

    Yiduo Gao, Yuta Taniguchi, Shin'ichi Konomi, Kentaro Kojima, Atsushi Shimada, Hiroaki Ogata

    信学技報教育工学(ET2017-79)  2018年1月 

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    開催年月日: 2018年1月

    記述言語:日本語  

    国名:日本国  

  • Wi-Fiスポット周辺の人の行動分析

    Jeanne Faurie, 島田 敬士, 堀 磨伊也, 尾ノ上 晃, 中山 経太, 谷口 倫一郎

    第15回ITSシンポジウム  2017年12月 

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    開催年月日: 2017年12月

    記述言語:日本語  

    国名:日本国  

  • ニューラルネットワークに基づくパノラマ画像を用いたカメラ位置姿勢推定

    花﨑 厚年, 内山 英昭, 島田 敬士, 谷口 倫一郎

    第209回情報処理学会 コンピュータビジョンとイメージメディア研究会(CVIM)  2017年11月 

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    開催年月日: 2017年11月

    記述言語:日本語  

    国名:日本国  

  • デジタル教科書における学習ログを利活用した教員支援システム

    毛利 考佑, 島田 敬士, 殷 成久, 魚崎 典子, ,金子 敬一

    日本教育工学会第33回全国大会  2017年9月 

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    開催年月日: 2017年9月

    記述言語:日本語  

    国名:日本国  

  • 背景差分法のためのニューラルネットワークの分析

    峰松 翼, 島田 敬士, 内山 英昭, 谷口 倫一郎

    第20回画像の認識・理解シンポジウム(MIRU2017)  2017年8月 

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    開催年月日: 2017年8月

    記述言語:日本語  

    国名:日本国  

  • 組込みシステム開発を題材とした学部生向けPBLの実施と学習経過に関する考察

    中村 啓之, 内山 英昭, 早志 英朗, 島田 敬士, 峯 恒憲

    組込みシステムシンポジウム(ESS2017)  2017年8月 

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    開催年月日: 2017年8月

    記述言語:日本語  

    国名:日本国  

  • Extracting Teaching Activities from E-book Logs Using Time-Series Shapelets

    Daiki Suehiro, Yuta Taniguchi, Atsushi Shimada, Hiroaki Oagata

    第20回画像の認識・理解シンポジウム(MIRU2017)  2017年8月 

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    開催年月日: 2017年8月

    記述言語:日本語  

    国名:日本国  

  • 高等学校におけるラーニングアナリティックスに基づいた授業の試行

    山田 政寛, 大久保 文哉, 谷口 雄太, 毛利 考佑, 島田 敬士, 大井 京, 緒方 広明, 井上 功一, 木實 新一

    第42回教育システム情報学会全国大会  2017年8月 

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    開催年月日: 2017年5月

    記述言語:日本語  

    国名:日本国  

  • Profiling High-achieving Students using E-book-based Logs 国際会議

    Kousuke Mouri, Chengiu Yin, Fumiya Okubo, Atsushi Shimada, Hiroaki Ogata

    Cross-LAK2016  2016年4月 

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    開催年月日: 2016年4月

    記述言語:英語   会議種別:口頭発表(一般)  

    国名:グレートブリテン・北アイルランド連合王国(英国)  

  • Learning Activity Features of High Performance Students 国際会議

    Fumiya Okubo, Sachio Hirokawa, Misato Oi, Chengiu Yin, Atsushi Shimada, Kojima Kentaro, Masanori Yamada, Hiroaki Ogata

    Cross-LAK2016  2016年4月 

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    開催年月日: 2016年4月

    記述言語:英語   会議種別:口頭発表(一般)  

    国名:グレートブリテン・北アイルランド連合王国(英国)  

  • Automatic Generation of Personalized Review Materials Based on Across-Learning-System Analysis 国際会議

    Atsushi Shimada, Fumiya Okubo, Chengiu Yin, Hiroaki Ogata

    Cross-LAK2016  2016年4月 

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    開催年月日: 2016年4月

    記述言語:英語   会議種別:口頭発表(一般)  

    国名:グレートブリテン・北アイルランド連合王国(英国)  

  • Correlated Topic Model for Image Annotation 国際会議

    Xing Xu, Atsushi Shimada, Rin-ichiro Taniguchi

    the 19th Japan-Korea Joint Workshop on Frontiers of Computer Vision  2013年1月 

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    国名:大韓民国  

  • Hand Gesture based TV Control System –Towards Both User- & Machine -friendly Gesture Applications– 国際会議

    Atsushi Shimada, Takayoshi Yamashita, Rin-ichiro Taniguchi

    the 19th Japan-Korea Joint Workshop on Frontiers of Computer Vision  2013年1月 

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    国名:大韓民国  

  • "Clickable Real World" Information Retrieval Application based on Geo-Visual Clustering 国際会議

    Takashi Ito, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 19th Japan-Korea Joint Workshop on Frontiers of Computer Vision  2013年1月 

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    国名:大韓民国  

  • Background Model Based on Intensity Change Similarity Among Pixels 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 19th Japan-Korea Joint Workshop on Frontiers of Computer Vision  2013年1月 

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    国名:大韓民国  

  • ライトフィールドセンシングによる任意注視空間での物体検出

    島田 敬士, 長原 一, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2012-106)  2013年1月 

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    国名:日本国  

  • A Proposal of Background Model Based on Changing Trend Similarity 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    2013 International Symposium on Information Science and Electrical Engineering  2013年1月 

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    国名:日本国  

  • Landmark Annotation Based on Geo-Image Clustering 国際会議

    Atsushi Shimada, Vincent Charvillat, Hajime Nagahara, Rin-ichiro Taniguchi

    2013 International Symposium on Information Science and Electrical Engineering  2013年1月 

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    国名:日本国  

  • Light Field Distortion Feature for Transparent Object Recognition 国際会議

    Kazuki Maeno, Hajime Nagahara, Atsushi Shimada, Rin-ichiro Taniguchi

    2013 International Symposium on Information Science and Electrical Engineering  2013年1月 

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    国名:日本国  

  • Hand gesture recognition using subunit-based dynamic time warping 国際会議

    Yanrung Wang, Atsushi Shimada, Takayoshi Yamashita, Rin-ichiro Taniguchi

    the 18th International Symposium on Artificial Life and Robotics  2013年2月 

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    国名:大韓民国  

  • Wide-area Object Tracking and Link Discovering Across Multiple Non-overlapping Sensors 国際会議

    Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    1st Asian Workshop on Smart Sensor Systems  2013年3月 

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    国名:大韓民国  

  • 第16回PRMU研究会アルゴリズムコンテスト実施報告「これは誰の字?-筆跡鑑定にチャレンジ!-」

    島田 敬士, 斎藤 正孝, 高木 勇一郎, 藤井 聡, 日高 雄太, 横溝 将成, 西田 和博, 宍戸 英彦, 近藤 敏志

    信学技報パターン認識・メディア理解(PRMU2012-211)  2013年3月 

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    国名:日本国  

  • Light Field Distortion Feature for Transparent Object Recognition 国際会議

    Kazuki Maeno, Hajime Nagahara, Atsushi Shimada, Rin-ichiro Taniguchi

    International Conference on Computational Photography  2013年4月 

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    国名:アメリカ合衆国  

  • Effective Walking Velocity Modeling for Pedestrian Simulator 国際会議

    Yosuke Nonaka, Masaki Onishi, Tomohisa Yamashita, Takashi Okada, Atsushi Shimada, Rin-ichiro Taniguchi

    the 11th International Conference on Quality Control by Artificial Vision (QCAV2013)  2013年5月 

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    国名:日本国  

  • Background Modeling based on Bidirectional Analysis 国際会議

    Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    IEEE Conference on Computer Vision and Pattern Recognition  2013年6月 

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    国名:アメリカ合衆国  

  • Light Field Distortion Feature for Transparent Object Recognition 国際会議

    Kazuki Maeno, Hajime Nagahara, Atsushi Shimada, Rin-ichiro Taniguchi

    IEEE Conference on Computer Vision and Pattern Recognition  2013年6月 

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    国名:アメリカ合衆国  

  • 特有姿勢に基づく動作の早期認識

    高 嘉泰, 島田 敬士, 長原一, 谷口 倫一郎

    第19回画像センシングシンポジウム(SSII2013)  2013年6月 

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    国名:日本国  

  • Latent Topic Model for Image Annotation by Modeling Topic Correlation 国際会議

    Xing Xu, Atsushi Shimada, Rin-ichiro Taniguchi

    International Conference of Multimedia and Expo (ICME)  2013年7月 

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    国名:アメリカ合衆国  

  • Object Detection based on Spatio-Temporal Light Field Sensing

    Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    第16回画像の認識・理解シンポジウム(MIRU2013)  2013年8月 

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    国名:日本国  

  • 背景モデル共有化と能動サンプリングによる高速・低コストな物体検出

    松井紗弥佳, 島田敬士, 長原一, 谷口倫一郎

    第16回画像の認識・理解シンポジウム(MIRU2013)  2013年8月 

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    国名:日本国  

  • 動作サブユニットの共有化に基づくハンドジェスチャ認識

    王妍蓉, 島田敬士, 山下隆義, 谷口倫一郎

    第16回画像の認識・理解シンポジウム(MIRU2013)  2013年8月 

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    国名:日本国  

  • Image Annotation by Learning Label-specific Distance Metrics 国際会議

    Xing Xu, Atsushi Shimada, Rin-ichiro Taniguchi

    17th International Conference on Image Analysis and Processing (ICIAP)  2013年9月 

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    国名:イタリア共和国  

  • A Subunit-Based Dynamic Time Warping Approach for Hand Movement Recognition 国際会議

    Yanrung Wang, Atsushi Shimada, Takayoshi Yamashita, Rin-ichiro Taniguchi

    17th International Conference on Image Analysis and Processing (ICIAP)  2013年9月 

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    国名:イタリア共和国  

  • 観光行動解析に基づく代表写真の選出

    伊藤孝史, 島田敬士, 長原一, 谷口倫一郎

    電気関係学会九州支部連合大会  2013年9月 

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    国名:日本国  

  • 時系列モーションデータを利用した農作業認識

    土井惟成, 有田大作, 島田敬士, 谷口倫一郎, 長原一

    電気関係学会九州支部連合大会  2013年9月 

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    国名:日本国  

  • 動作のサブユニットに基づいたハンドジェスチャ認識における追加学習の検討

    河畑凌, 王妍蓉, 島田敬士, 山下隆義, 谷口倫一郎

    電気関係学会九州支部連合大会  2013年9月 

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    国名:日本国  

  • Link Analysis among Sightseeing Spots based on Geo-Image Clustering 国際会議

    Kohei Tashiro, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 9th Joint Workshop on Machine Perception and Robotics  2013年10月 

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    国名:日本国  

  • Multi-layered Background Modeling for Complex Environment Surveillance 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi, Koichiro Kajitani, Takeshi Naito

    Second Asian Conference on Patern Recognition(ACPR2013)  2013年11月 

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    国名:日本国  

  • Real-Time Foreground Segmentation from Moving Camera based on Case-based Trajectory Classification 国際会議

    Yosuke Nonaka, Atsushi Shimada, Hajime Nagahara Rin-ichiro Taniguchi

    Recent Advances in Computer Vision and Pattern Recognition  2013年11月 

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    国名:日本国  

  • Exponentially Weighted Background Modeling 国際会議

    Tsubasa Minematsu, Masaki Igarashi, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 20th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2014年2月 

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    国名:日本国  

  • Spatio-temporal Background Model Considering Intensity Changes 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 20th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2014年2月 

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    国名:日本国  

  • Can a Human be a Sensor? - Towards Real-world Information Retrieval based on Human Cloud Sensing - 国際会議

    Atsushi Shimada, Daisuke Deguchi, Kazuaki Kondo, Takuya Funatomi

    the 20th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2014年2月 

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    国名:日本国  

  • Selection of Representative Photos based on Sightseeing Behavior Analysis 国際会議

    Takashi Ito, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 20th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2014年2月 

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    国名:日本国  

  • 指数加重ヒストグラムを用いた背景モデリング

    峰松 翼, 五十嵐 正樹, 島田 敬士, 長原 一, 谷口 倫一郎

    信学技報パターン認識・メディア理解  2014年2月 

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    国名:日本国  

  • 魚眼カメラ間での人物対応付けに関する検討

    碓井 勇太, 五十嵐 正樹, 島田 敬士, 長原 一, 谷口 倫一郎

    信学技報パターン認識・メディア理解  2014年2月 

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    国名:日本国  

  • サブユニット列におけるハンドジェスチャ認識の追加学習

    河畑 凌, 王 妍蓉, 島田 敬士, 山下 隆義, 谷口 倫一郎

    信学技報パターン認識・メディア理解  2014年2月 

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    国名:日本国  

  • ヒューマンクラウドセンシングの提案

    島田 敬士, 出口 大輔, 近藤 一晃, 舩冨 卓哉

    信学技報パターン認識・メディア理解  2014年2月 

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    国名:日本国  

  • スマートフォンを用いた混雑状況調査におけるヒューマンセンサの負荷測定

    出口 大輔, 近藤 一晃, 舩冨 卓哉, 島田 敬士

    信学技報パターン認識・メディア理解  2014年2月 

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    国名:日本国  

  • スマートフォンを用いた混雑状況伝達におけるモダリティと情報量の影響

    近藤 一晃, 舩冨 卓也, 島田 敬士, 出口 大輔

    信学技報パターン認識・メディア理解  2014年2月 

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    国名:日本国  

  • 時間経過による加重背景モデリング

    峰松 翼, 五十嵐正樹, 島田敬士, 長原 一, 谷口倫一郎

    動的画像処理実利用化ワークショップ  2014年3月 

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    国名:日本国  

  • ヒューマンクラウドセンシングの実現可能性検討

    島田 敬士, 出口 大輔, 近藤 一晃, 舩冨 卓哉

    2014年電子情報通信学会総合大会  2014年3月 

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    国名:日本国  

  • モーションセンサを用いた農作業認識

    土井 惟成, 有田 大作, 島田 敬士, 長原 一, 谷口 倫一郎

    農業情報学会 2014 年度年次大会  2014年5月 

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    国名:日本国  

  • 時空間ライトフィールドセンシングに基づく任意注視空間における物体検出

    島田 敬士, 長原 一, 谷口 倫一郎

    第20回画像センシングシンポジウム(SSII2014)  2014年6月 

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    国名:日本国  

  • 個人消費電力の推定と可視化

    五十嵐 正樹, 内山 英昭, 島田 敬士, 長原 一, 谷口 倫一郎

    第17回画像の認識・理解シンポジウム(MIRU2014)  2014年7月 

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    国名:日本国  

  • Link Analysis among Sightseeing Spots based on Geo-Image Analysis --Towards Majority-based Route Recommendation in Sightseeing-- 国際会議

    Kohei Tashiro, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The Fourth International Conference on Advances in Information Mining and Management(IMMM2014)  2014年7月 

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    国名:フランス共和国  

  • Tag Completion with Defective Tag Assignments via Image-Tag Re-weighting 国際会議

    Xing Xu, Atsushi Shimada, Rin-ichiro Taniguchi

    International Conference of Multimedia and Expo (ICME)  2014年7月 

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    国名:中華人民共和国  

  • 基幹教育「課題協学科目」の実施状況

    大河内 豊, 島田 敬士, 田中 岳, 山形 伸二, 野瀬 健, 古屋 謙治

    九州地区大学一般教育研究会  2014年9月 

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    国名:日本国  

  • 偽陽性の少ない動作設計のための筋電パターンの分析

    河畑 凌, 内山 英昭, 島田 敬士, 長原 一, 谷口 倫一郎

    第19回日本バーチャルリアリティ学会大会  2014年9月 

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    国名:日本国  

  • ライトフィールドカメラを用いた透明物体識別

    長原 一, 徐 軼超, 島田 敬士, 谷口 倫一郎

    視覚情報基礎研究会  2014年9月 

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    国名:日本国  

  • MLIA at ImageCLEF 2014 Scalable Concept Image Annotation Challenge 国際会議

    Xing Xu, Atsushi Shimada, Rin-ichiro Taniguchi

    CLEF 2014 Evaluation Labs and Workshop  2014年9月 

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    国名:グレートブリテン・北アイルランド連合王国(英国)  

  • Image Labelling in Weakly Labeled Dataset by Modeling Image-Label Associations 国際会議

    Xing Xu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 10th Joint Workshop on Machine Perception and Robotics  2014年10月 

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    国名:中華人民共和国  

  • Incremental Learning of Hand Gestures Based on Submovement Sharing 国際会議

    Ryo Kawahata, Yanrung Wang, Atsushi Shimada, Takayoshi Yamashita, Rin-ichiro Taniguchi

    Image Analysis and Recognition. Springer International Publishing  2014年10月 

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    国名:ポルトガル共和国  

  • 教育用デジタルコンテンツの学習ログの分析

    廣川佐千男, 殷 成久, 島田敬士, 大久保文哉, 緒方広明

    信学技報 IEICE-AI2014-21  2014年11月 

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    記述言語:日本語  

    国名:日本国  

  • Smart Phone based Data Collecting System for Analyzing Learning Behaviors 国際会議

    Chengjiu Yin, Fumiya Okubo, Atsushi Shimada, Kojima Kentaro, Masanori Yamada, Hiroaki Ogata, Naomi Fujimura

    22nd International Conference on Computers in Education (ICCE 2014)  2014年11月 

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    国名:日本国  

  • Exploring Image Specific Structured Loss for Image Annotation with Incomplete Labelling 国際会議

    Xing Xu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 12th Asian Conference on Computer Vision (ACCV2012)  2014年11月 

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    国名:シンガポール共和国  

  • RGB-Dカメラに映るPDR利用者の同定

    河畑 凌, 大西 正輝, 興梠 正克, 蔵田 武志, 島田 敬士, 谷口 倫一郎

    ビジョン技術の実利用ワークショップ ViEW2014  2014年12月 

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    国名:日本国  

  • Evaluation of Foreground Detection Methodology for a moving camera 国際会議

    Tsubasa Minematsu, Hideaki Uchiyama, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The 21th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2015年1月 

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    国名:大韓民国  

  • Query Expansion with Pairwise Learning in Object Retrieval Challenge 国際会議

    Hao Liu, Xu Xing, Hideaki Uchiyama, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The 21th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2015年1月 

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    国名:大韓民国  

  • 光線空間における背景モデリングと物体検出への応用

    島田 敬士, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2014-144)  2015年2月 

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    国名:日本国  

  • Identification of Multi-Sensor Trajectory 国際会議

    Masaki Igarashi, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    Proceedings of RISP International Workshop on Nonlinear Circuits, Communications and Signal Processing  2015年2月 

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    国名:マレーシア  

  • 道路平面画像を用いた積雪環境下での路面幅推定

    峰松 翼, 島田 敬士, 長原 一, 猪村 元, 相原 健郎, 谷口 倫一郎

    第21回画像センシングシンポジウム(SSII2015)  2015年6月 

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    記述言語:日本語  

    国名:日本国  

  • 統計的背景モデルと変化点検出手法を用いたハイブリッド型背景差分

    奥田 梨佐, 五十嵐 正樹, 島田 敬士, 長原 一, 谷口 倫一郎

    第21回画像センシングシンポジウム(SSII2015)  2015年6月 

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    記述言語:日本語  

    国名:日本国  

  • COUPLED DICTIONARY LEARNING AND FEATURE MAPPING FOR CROSS-MODAL RETRIEVAL 国際会議

    Xing Xu, Atsushi Shimada, Rin-ichiro Taniguchi, Li He

    International Conference of Multimedia and Expo (ICME)  2015年7月 

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    記述言語:英語  

    国名:イタリア共和国  

  • Informal Learning Behavior Analysis Using Action Logs and Slide Features in E-Textbooks 国際会議

    Atsushi Shimada, Fumiya Okubo, Chengjiu Yin, Kentaro Kojima, Masanori Yamada, Hiroaki Ogata

    2015 IEEE 15th International Conference on Advanced Learning Technologies  2015年7月 

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    記述言語:英語  

    国名:台湾  

  • Preliminary Research on Self-Regulated Learning and Learning Logs in a Ubiquitus Learning Environment 国際会議

    Masanori Yamada, Chengjiu Yin, Atsushi Shimada, Kentaro Kojima, Fumiya Okubo, Hiroaki Ogata

    2015 IEEE 15th International Conference on Advanced Learning Technologies  2015年7月 

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    記述言語:英語  

    国名:台湾  

  • Visualization of Person Re-identification for Object Tracking across Non-overlapping Cameras

    Maiya Hori, Etienne Pot, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    第18回画像の認識・理解シンポジウム(MIRU2015)  2015年7月 

     詳細を見る

    記述言語:日本語  

    国名:日本国  

  • 移動するカメラにおける移動物体検出のための背景モデルの適応的探索

    峰松 翼, 内山 英昭, 島田 敬士, 長原 一, 谷口 倫一郎

    第18回画像の認識・理解シンポジウム(MIRU2015)  2015年7月 

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    記述言語:日本語  

    国名:日本国  

  • 匿名カメラ

    内山 英昭, 島田 敬士, 長原 一, 谷口 倫一郎

    第18回画像の認識・理解シンポジウム(MIRU2015)  2015年7月 

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    記述言語:日本語  

    国名:日本国  

  • 無線位置推定における遮蔽物を考慮したアンカーノード配置

    岡 海人, 五十嵐 正樹, 内山 英昭, 島田 敬士, 長原 一, 谷口 倫一郎

    マルチメディア,分散,協調とモバイルシンポジウム(DICOMO2015)  2015年7月 

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    記述言語:日本語  

    国名:日本国  

  • Change Detection on Light Field for Active Video Surveillance 国際会議

    Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    12th IEEE International Conference on Advanced Video and Signal based Surveillance (AVSS)  2015年8月 

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    記述言語:英語  

    国名:ドイツ連邦共和国  

  • Person Re-identification Visualization Tool for Object Tracking across Non-overlapping Cameras 国際会議

    Etienne Pot, Maiya Hori, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The 3rd Activity Monitoring by Multiple Distributed Sensing (AMMDS 2015)  2015年8月 

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    記述言語:英語  

    国名:ドイツ連邦共和国  

  • 授業外学習支援のためのデジタル教材の自動要約

    島田 敬士, 大久保 文哉, 殷 成久, 緒方 広明

    信学技報パターン認識・メディア理解(PRMU2015-81)  2015年9月 

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    記述言語:日本語  

    国名:日本国  

  • ビーコンを用いた農作業者の位置推定

    橋本幹基, 有田大作, 島田敬士, 内山英昭, 谷口倫一郎

    電気・情報関係学会九州支部連合大会  2015年9月 

     詳細を見る

    記述言語:日本語  

    国名:日本国  

  • 偽陽性の少ないジェスチャの設計

    河畑 凌, 島田 敬士, 山下 隆義, 内山 英昭, 谷口 倫一郎

    第20回日本バーチャルリアリティ学会大会  2015年9月 

     詳細を見る

    記述言語:日本語  

    国名:日本国  

  • Adaptive Search of Background Models for Object Detection in Images Taken by Moving Cameras 国際会議

    Tsubasa Minematsu, Hideaki Uchiyama, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The International Conference on Image Processing (ICIP)  2015年9月 

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    記述言語:英語  

    国名:カナダ  

  • Semi-supervised Coupled Dictionary Learning for Cross-modal Retrieval in Internet Images and Texts 国際会議

    Xing Xu, Yang Yang, Atsushi Shimada, Rin-ichiro Taniguchi, Li He

    ACM Multimedia 2015  2015年10月 

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    記述言語:英語  

    国名:オーストラリア連邦  

  • Analyzing the Features of Learning Behaviors of Students using e-Books 国際会議

    Chengjiu YIN, Fumiya OKUBO, Atsushi SHIMADA, Misato OI, Sachio HIROKAWA, Masanori YAMADA, Kentaro KOJIMA, Hiroaki OGATA

    The 1st workshop on e-Book-based Educational Big Data for Enhancing Teaching and Learning  2015年11月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Analysis of Links among E-books in Undergraduates’ E-Book Logs 国際会議

    Misato OI, Chengjiu YIN, Fumiya OKUBO, Atsushi SHIMADA, Kentaro KOJIMA, Masanori YAMADA, Hiroaki OGATA

    The 1st workshop on e-Book-based Educational Big Data for Enhancing Teaching and Learning  2015年11月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Visualization Supports for E-book Users from Meaningful Learning Perspective 国際会議

    Jingyun WANG, Hiroaki OGATA, Chengjiu YIN, Atsushi SHIMADA

    The 1st workshop on e-Book-based Educational Big Data for Enhancing Teaching and Learning  2015年11月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Analysis of Preview Behavior in E-Book System 国際会議

    Atsushi SHIMADA, Fumiya OKUBO, Chengjiu YIN, Misato OI, Kentaro KOJIMA, Masanori YAMADA, Hiroaki OGATA

    The 1st workshop on e-Book-based Educational Big Data for Enhancing Teaching and Learning  2015年11月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Error Log Analysis for Improving Educational Materials in C Programming Language Courses 国際会議

    Xinyu FU, Chengjiu YIN, Atsushi SHIMADA, Hiroaki OGATA

    The 2nd ICCE workshop on Learning Analytics (LA2015)  2015年11月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Graph-based visualization tool for person re-identification 国際会議

    Maiya Hori, Etienne Pot, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The 11th Joint Workshop on Machine Perception and Robotics(MPR2015)  2015年11月 

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    記述言語:英語  

    国名:日本国  

  • Background subtraction for a moving camera using re-projection error 国際会議

    Tsubasa Minematsu, Hideaki Uchiyama, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The 11th Joint Workshop on Machine Perception and Robotics(MPR2015)  2015年11月 

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    記述言語:英語  

    国名:日本国  

  • TransCut: Transparent Object Segmentation from a Light-Field Image 国際会議

    Yichao Xu, Hajime Nagahara, Atsushi Shimada, Rin-ichiro Taniguchi

    International Conference on Computer Vision (ICCV)  2015年12月 

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    記述言語:英語  

    国名:チリ共和国  

  • Visualization and Prediction of Learning Activities by Using Discrete Graphs 国際会議

    Fumiya Okubo, Atsushi Shimada, Chengjiu Yin, Hiroaki Ogata

    The 23rd International Conference on Computers in Education (ICCE2015)  2015年12月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Error Log Analysis in C Programming Language Courses 国際会議

    Xinyu Fu, Chengjiu Yin, Atsushi Shimada, Hiroaki Ogata

    The 23rd International Conference on Computers in Education (ICCE2015)  2015年12月 

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    記述言語:英語  

    国名:中華人民共和国  

  • E‐Book‐based Learning Analytics in University Education 国際会議

    Hiroaki Ogata, Chengjiu Yin, Misato Oi, Fumiya Okubo, Atsushi Shimada, Kentaro Kojima, Masanori Yamada

    The 23rd International Conference on Computers in Education (ICCE2015)  2015年12月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Automatic Summarization of Lecture Slides for Enhanced Student Preview 国際会議

    Atsushi Shimada, Fumiya Okubo, Chengjiu Yin, Hiroaki Ogata

    The 23rd International Conference on Computers in Education (ICCE2015)  2015年12月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Analysis of Preview and Review Patterns in Undergraduates’ E‐Book Logs 国際会議

    Misato Oi, Fumiya Okubo, Atsushi Shimada, Chengjiu Yin, Hiroaki Ogata

    The 23rd International Conference on Computers in Education (ICCE2015)  2015年12月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Identifying and Analyzing the Learning Behaviors of Students using e‐Books 国際会議

    Chengjiu Yin, Fumiya Okubo, Atsushi Shimada, Sachio Hirokawa, Hiroaki Ogata, Misato Oi

    The 23rd International Conference on Computers in Education (ICCE2015)  2015年12月 

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    記述言語:英語  

    国名:中華人民共和国  

  • Design of a low-false-positive gesture for a wearable device 国際会議

    Ryo Kawahata, Atsushi Shimada, Takayoshi Yamashita, Hideaki Uchiyama, Rin-ichiro Taniguchi

    5th International Conference on Pattern Recognition Applications and Methods  2016年2月 

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    記述言語:英語  

    国名:イタリア共和国  

  • Detection of Road Boundary in Images Captured under Heavy Snow Environments 国際会議

    Tsubasa Minematsu, Atsushi Shimada, Hajime Nagahara, Hajime Imura, Kenro Aihara, Rin-ichiro Taniguchi

    The 22nd Korea-Japan Joint Workshop on Frontiers of Computer Vision  2016年2月 

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    記述言語:英語  

    国名:日本国  

  • Object Video Segmentation Using Superpixel Motion 国際会議

    Mohamed Ahmed Abdelwahab, Tsubasa Minematsu, Hideaki Uchiyama, Atsushi Shimada, Moataz Mahmoud Abdelwahab, Rin-ichiro Taniguchi

    The 22nd Korea-Japan Joint Workshop on Frontiers of Computer Vision  2016年2月 

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    記述言語:英語  

    国名:日本国  

  • 九州大学基幹教育におけるラーニングアナリティクスの研究と実践

    島田敬士,大久保文哉,殷 成久,大井 京,小島健太郎,山田政寛,緒方広明

    電子情報通信学会総合大会  2016年3月 

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    記述言語:日本語  

    国名:日本国  

  • 大学におけるラーニングアナリティクスに基づく授業改善と教育革新

    緒方広明,殷 成久,大井 京,大久保文哉,島田敬士,小島健太郎,山田政寛

    電子情報通信学会総合大会  2016年3月 

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    記述言語:日本語  

    国名:日本国  

  • スマートデバイスを用いた農作業者の動作認識

    橋本幹基,有田大作,島田敬士,内山英昭,谷口倫一郎

    電子情報通信学会総合大会  2016年3月 

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    記述言語:日本語  

    国名:日本国  

  • スマートデバイスを用いた農作業者の位置推定

    橋本幹基,有田大作,島田敬士,内山英昭,谷口倫一郎

    電子情報通信学会総合大会  2016年3月 

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    記述言語:日本語  

    国名:日本国  

  • 気象データと人流データの併用による電力需要予測

    堀 磨伊也, 後藤 孝行, 高野 茂, 松尾 久人, 島田 敬士, 谷口 倫一郎

    電子情報通信学会総合大会  2016年3月 

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    記述言語:日本語  

    国名:日本国  

  • WiP Abstract: Human-Assisted Power Demand Forecasting Based on Action Plan Declaration 国際会議

    Masaki Igarashi, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    ACM/IEEE 7th International Conference on Cyber-Physical Systems (ICCPS2016)  2016年4月 

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    記述言語:英語  

    国名:オーストリア共和国  

  • Farmer position estimation in a tomato plant green house with smart devices 国際会議

    Yoshiki Hashimoto, Daisaku Arita, Atsushi Shimada, Takashi OKAYASU, Hideaki Uchiyama, Rin-ichiro Taniguchi

    International Symposium on Machinery and Mechatronics for Agriculture and Biosystems Engineering (ISMAB)  2016年5月 

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    記述言語:英語  

    国名:日本国  

  • Browsing-Pattern Mining from e-Book Logs with Non-negative Matrix Factorization 国際会議

    Atsushi Shimada, Fumiya Okubo, Hiroaki Ogata

    the 9th International Conference on Educational Data Mining  2016年6月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:アメリカ合衆国  

  • Measurement and Visualization of Farm Work Information 国際会議

    Yoshiki Hashimoto, Daisaku Arita, Atsushi Shimada, Takashi Yoshinaga, Takashi OKAYASU, Hideaki Uchiyama, Rin-ichiro Taniguchi

    International Conference on Agriculture Engineering (CIGR AGEng)  2016年6月 

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    記述言語:英語  

    国名:デンマーク王国  

  • Bayesian Network for predicting students’ final grade using e-book Logs in University Education 国際会議

    Kousuke Mouri, Fumiya Okubo, Atsushi Shimada, Hiroaki Ogata

    IEEE International Conference on Advanced Learning Technologies(ICALT2016)  2016年7月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:アメリカ合衆国  

  • ページ重要度に基づくデジタル教材の自動要約

    島田 敬士, 大久保 文哉, 緒方 広明

    第19回画像の認識・理解シンポジウム(MIRU2016)  2016年8月 

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    記述言語:日本語  

    国名:日本国  

  • 長時間動作計測に基づく低偽陽性ジェスチャの設計

    河畑 凌, 橋本 幹基, 島田 敬士, 山下 隆義, 内山 英昭, 谷口 倫一郎

    第19回画像の認識・理解シンポジウム(MIRU2016)  2016年8月 

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    記述言語:日本語  

    国名:日本国  

  • スマートデバイスを用いた農作業情報の自動計測

    橋本 幹基, 有田 大作, 島田 敬士, 岡安 崇史, 内山 英昭, 谷口 倫一郎

    第19回画像の認識・理解シンポジウム(MIRU2016)  2016年8月 

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    記述言語:日本語  

    国名:日本国  

  • 複数の魚眼カメラを用いた人物の位置推定

    花崎 厚年, 谷口 倫一郎, 島田 敬士, 内山 英昭

    電気・情報関係学会九州支部連合大会  2016年9月 

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    記述言語:日本語  

    国名:日本国  

  • Automatic Summarization System of Lecture Slides 国際会議

    Sébastien ANDRÉ, Atsushi Shimada, Hiroaki Ogata

    日本教育工学会 第32回全国大会  2016年9月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Subjective sensing of real world activity on group study 国際会議

    Daisuke Deguchi, Kazuaki Kondo, Atsushi Shimada

    The Eighth International Conference on Collaboration Technologies (CollabTech 2016)  2016年9月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Automatic Summarization System of Lecture Slides 国際会議

    Sébastien ANDRÉ, Atsushi Shimada, Hiroaki Ogata

    The International Workshop on Learning Analytics and Educational Data Mining (LAEDM 2016)  2016年9月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • 教育データのオープン化に向けて

    末廣 大貴, 毛利 考佑, 谷口 雄太, 大久保 文哉, 島田 敬士, 緒方 広明

    信学技報パターン認識・メディア理解 (PRMU2016-105)  2016年10月 

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    記述言語:日本語  

    国名:日本国  

  • Real Time Algorithm for Efficient HCI Employing Features Obtained From MYO Sensor 国際会議

    Ehab El Shazly, Moataz Abdelwahab, Atsushi Shimada, Rin-ichiro Taniguchi

    59th International Midwest Symposium on Circuits and Systems (MWSCAS)  2016年10月 

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    記述言語:英語  

    国名:アラブ首長国連邦  

  • Mixed Feature for Face Detection in Thermal Image

    馬 超, チュン ゴ タン, 内山 英昭, 長原 一, 島田 敬士, 谷口 倫一郎

    情報処理学会研究報告, Vol.2016-CVIM-204  2016年11月 

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    記述言語:日本語  

    国名:日本国  

  • 3D surveillance system using camera array 国際会議

    Hideaki Uchiyama, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The 11th International Workshop on Information Search, Integration, and Personalization (ISIP2016)  2016年11月 

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    記述言語:英語  

    国名:フランス共和国  

  • Learning Analytics in Ubiquitous Learning Environments: Self-Regulated Learning Perspective 国際会議

    Masanori Yamada, Fumiya Okubo, Misato Oi, Atsushi Shimada, Kojima Kentaro, Hiroaki Ogata

    the 24th International Conference on Computers in Education (ICCE2016)  2016年11月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:インド  

  • Analysis of Effectiveness and Acceptability for Personalized Eco-Feedback 国際会議

    Masaki Igarashi, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The 12th Joint Workshop on Machine Perception and Robotics (MPR2016)  2016年11月 

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    記述言語:英語  

    国名:日本国  

  • Evaluation of Effectiveness and Acceptability of Personalized Feedback for Efficient Energy Usage 国際会議

    Masaki Igarashi, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The 11th International Workshop on Information Search, Integration, and Personalization (ISIP2016), 2016.11  2016年11月 

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    記述言語:英語  

    国名:フランス共和国  

  • Mixed Feature for Face Detection in Thermal Image 国際会議

    Chao Ma, Ngo Thanh Trung, Hideaki Uchiyama, Hajime Nagahara, Atsushi Shimada, Rin-ichiro Taniguchi

    The 12th Joint Workshop on Machine Perception and Robotics(MPR2016)  2016年11月 

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    記述言語:英語  

    国名:日本国  

  • WiFi-based Behavior Analysis using Non-negative Tensor Factorization 国際会議

    Kaito Oka, Atsushi Shimada, Rin-ichiro Taniguchi

    The 12th Joint Workshop on Machine Perception and Robotics(MPR2016)  2016年11月 

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    記述言語:英語  

    国名:日本国  

  • Background Initialization based on Bidirectional Analysis and Consensus Voting 国際会議

    Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    2016 IEEE Scene Background Modeling Contest (SBMC 2016)  2016年12月 

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    記述言語:英語  

    国名:メキシコ合衆国  

  • 歩行運動の両脚相に着目したRGB-Dカメラに映るPDR利用者の同定

    橋本 幹基, 大西 正輝, 興梠 正克, 蔵田 武, 島田 敬士, 有田 大作, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2016-133)  2017年1月 

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    記述言語:日本語  

    国名:日本国  

  • What are Good Design Gestures? -Towards user- and machine-friendly interface- 国際会議

    Ryo Kawahata, Atsushi Shimada, Rin-ichiro Taniguchi

    23rd International Conference on Multimedia Modeling  2017年1月 

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    記述言語:英語  

    国名:アイスランド共和国  

  • 電力ピークカットのためのスケジュール変更要請の受容度評価

    五十嵐 正樹, 島田 敬士, 谷口 倫一郎

    信学技報パターン認識・メディア理解 (PRMU2016-161)  2017年2月 

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    記述言語:日本語  

    国名:日本国  

  • Spatial People Localization on Floor Map using Multiple Fisheye Cameras 国際会議

    Atsutoshi Hanasaki, Hideaki Uchiyama, Atsushi Shimada, Rin-ichiro Taniguchi

    The International Workshop on Frontiers of Computer Vision (FCV)  2017年2月 

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    記述言語:英語  

    国名:大韓民国  

  • Extracting Latent Behavior Patterns of People from Probe Request Data: A Non-negative Tensor Factorization Approach 国際会議

    Kaito Oka, Masaki Igarashi, Atsushi Shimada, Rin-ichiro Taniguchi

    6th International Conference on Pattern Recognition Applications and Methods (ICPRAM2017)  2017年2月 

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    記述言語:英語  

    国名:ポルトガル共和国  

  • Analysis of Wi-Fi-Based and Perceptual Congestion 国際会議

    Masaki Igarashi, Atsushi Shimada, Kaito Oka, Rin-ichiro Taniguchi

    6th International Conference on Pattern Recognition Applications and Methods (ICPRAM2017)  2017年2月 

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    記述言語:英語  

    国名:ポルトガル共和国  

  • M2B System: A Digital Learning Platform for Traditional Classrooms in University 国際会議

    Hiroaki Ogata, Yuta Taniguchi, Daiki Suehiro, Atsushi Shimada, Misato Oi, Fumiya Okubo, Masanori Yamada, Kojima Kentaro

    The 7th International Conference on Learning Analytics & Knowledge Understanding  2017年3月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:カナダ  

  • Reproducibility of Findings from Educational Big Data: A Preliminary Study 国際会議

    Misato Oi, Masanori Yamada, Fumiya Okubo, Atsushi Shimada, Hiroaki Ogata

    The 7th International Conference on Learning Analytics & Knowledge Understanding  2017年3月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:カナダ  

  • A Neural Network Approach for Students’ Performance Prediction 国際会議

    Fumiya Okubo, Takayoshi Yamashita, Atsushi Shimada, Hiroaki Ogata

    The 7th International Conference on Learning Analytics & Knowledge Understanding  2017年3月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:カナダ  

  • Real-time Learning Analytics for C Programming Language Courses 国際会議

    Xinyu Fu, Atsushi Shimada, Yuta Taniguchi, Daiki Suehiro, Hiroaki Ogata

    The 7th International Conference on Learning Analytics & Knowledge Understanding  2017年3月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:カナダ  

  • Finding traces of high and low achievers by analyzing undergraduates’ e-book logs 国際会議

    Misato Oi, Masanori Yamada, Fumiya Okubo, Atsushi Shimada, Hiroaki Ogata

    International Workshop on Learning Analytics Across Physical and Digital Spaces (Cross-LAK 2017)  2017年3月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:カナダ  

  • A Meaningful Discovery Learning Environment for E-book Learners 国際会議

    Jingyun Wang, Hiroaki Ogata, Atsushi Shimada

    IEEE Global Engineering Education Conference (EDUCON 2017)  2017年4月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:ギリシャ共和国  

  • Mixed features for face detection in thermal image 国際会議

    Chao Ma, Ngo Thanh Trung, Hideaki Uchiyama, Hajime Nagahara, Atsushi Shimada, Rin-ichiro Taniguchi

    Thirteenth International Conference on Quality Control by Artificial Vision 2017  2017年5月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Revealing Hidden Impression Topics in Students' Journals Based on Nonnegative Matrix Factorization 国際会議

    Yuta Taniguchi, Daiki Suehiro, Atsushi Shimada, Hiroaki Ogata

    IEEE International Conference on Advanced Learning Technologies(ICALT2017)  2017年7月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Real-time Learning Analytics of e-Book Operation Logs for On-site Lecture Support 国際会議

    Atsushi Shimada, Kousuke Mouri,, Hiroaki Ogata

    IEEE International Conference on Advanced Learning Technologies(ICALT2017)  2017年7月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Face-to-Face Teaching Analytics: Extracting Teaching Activities from E-book Logs via Time-Series Analysis 国際会議

    Daiki Suehiro, Yuta Taniguchi, Atsushi Shimada, Hiroaki Ogata

    IEEE International Conference on Advanced Learning Technologies(ICALT2017)  2017年7月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Analytics of Deep Neural Network in Change Detection 国際会議

    Tsubasa Minematsu, Atsushi Shimada, Rin-Ichiro Taniguchi

    14th IEEE International Conference on Advanced Video and Signal based Surveillance  2017年8月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Towards a Learner-Centric Notification Environment for Multimodal Learning Platforms 国際会議

    Shin'Ichi Konomi, Atsushi Shimada, Masanori Yamada, Fumiya Okubo, Yuta Taniguchi, Jingyun Wang

    Cross Multimodal Learning Analytics Workshop  2017年9月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Simple Combination of Appearance and Depth for Foreground Segmentation 国際会議

    Tsubasa Minematsu, Atsushi Shimada, Hideaki Uchiyama, Rin-Ichiro Taniguchi

    Background learning for detection and tracking from RGBD videos  2017年9月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • An easy-to-setup 3D phenotyping platform for KOMATSUNA dataset 国際会議

    Hideaki Uchiyama, Shunsuke Sakurai, Masashi Mishima, Daisaku Arita, Takashi Okayasu, Atsushi Shimada, Rin-ichiro Taniguch

    Computer Vision Problems in Plant Phenotyping (CVPPP)  2017年10月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • EXPLORING STUDENTS’ LEARNING JOURNALS WITH WEB-BASED INTERACTIVE REPORT TOOL 国際会議

    Yuta Taniguchi, Fumiya Okubo an Atsushi Shimada, Shin’ichi Konomi

    14th INTERNATIONAL CONFERENCE on COGNITION AND EXPLORATORY LEARNING IN THE DIGITAL AGE (CELDA 2017)  2017年10月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • A LECTURE SUPPORTING SYSTEM BASED ON REAL-TIME LEARNING ANALYTICS 国際会議

    Atsushi Shimada, Shin’ichi Konomi

    14th INTERNATIONAL CONFERENCE on COGNITION AND EXPLORATORY LEARNING IN THE DIGITAL AGE (CELDA 2017)  2017年10月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • A VISUALIZATION SYSTEM FOR PREDICTING LEARNING ACTIVITIES USING STATE TRANSITION GRAPHS 国際会議

    Fumiya Okubo, Atsushi Shimada, Yuta Taniguchi, Shin’ichi Konomi

    14th INTERNATIONAL CONFERENCE on COGNITION AND EXPLORATORY LEARNING IN THE DIGITAL AGE (CELDA 2017)  2017年10月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Foreground segmentation based on a simple combination of depth and appearance 国際会議

    Tsubasa Minematsu, Atsushi Shimada, Hideaki Uchiyama, Rin-ichiro Taniguchi

    The 13th Joint Workshop on Machine Perception and Robotics(MPR2017)  2017年10月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Sensing technologies for advanced smart agricultural systems 国際会議

    Hideaki Uchiyama, Shunsuke Sakurai, Yoshiki Hashimoto, Atsutoshi Hanasaki, Daisaku Arita, Takashi Okayasu, Atsushi Shimada, Rin-ichiro Taniguch

    International Conference on Sensing Technology (ICST)  2017年12月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Real-time Analysis of Digital Textbooks: What Keywords Make Lecture Difficult? 国際会議

    Kousuke Mouri, Atsushi Shimada, Chengjiu Yin, Uosaki Noriko, Vachirawit Tengchaisri, Keiichi Kanek

    25th International Conference on Computers in Education (ICCE2017)  2017年12月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Analysis on Students’ Usage of Highlighters on Etextbooks in Classroom 国際会議

    Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada, Shinichi Konomi

    25th International Conference on Computers in Education (ICCE2017)  2017年12月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Students’ Performance Prediction Using Data of Multiple Courses by Recurrent Neural Network 国際会議

    Fumiya Okubo, Takayoshi Yamashita, Atsushi Shimada, Shinichi Konomi

    25th International Conference on Computers in Education (ICCE2017)  2017年12月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Cross Analytics of Student and Course Activities from e-Book Operation Logs 国際会議

    Atsushi Shimada, Shinichi Konomi

    25th International Conference on Computers in Education (ICCE2017)  2017年12月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Two-step Transfer Learning for Semantic Plant Segmentation 国際会議

    Shunsuke Sakurai, Hideaki Uchiyama, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    7th International Conference on Pattern Recognition Applications and Methods (ICPRAM2018)  2018年1月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Visualization of spatial distribution of tomato yields based on action recognition 国際会議

    Yoshiki Hashimoto, Daisaku Arita, Atsushi Shimada, Hideaki Uchiyama, Rin-ichiro Taniguchi

    The International Workshop on Frontiers of Computer Vision (IW-FCV2018)  2018年2月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • How does CNN grasp transparent object features? 国際会議

    Roland Sireyjol, Atsushi Shimada, Tsubasa Minematsu, Hajime Nagahara, Rin-ichiro Taniguchi

    The International Workshop on Frontiers of Computer Vision (IW-FCV2018)  2018年2月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Online Change Detection for Monitoring Individual Student Behavior via Clickstream Data on e-Book System 国際会議

    Atsushi Shimada, Yuta Taniguchi, Fumiya Okubo, Shinichi Konomi, Hiroaki Ogata

    8th International Conference on Learning Analytics & Knowledge (LAK’18)  2018年3月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • On the Prediction of Students’ Quiz Score by Recurrent Neural Network 国際会議

    Fumiya Okubo, Takayoshi Yamashita, Atsushi Shimada, Yuta Taniguchi, Shin'ichi Konomi

    Multimodal Learning Analytics Across Spaces Workshop (CrossMMLA)  2018年3月 

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    記述言語:英語   会議種別:口頭発表(一般)  

    国名:日本国  

  • Transparent Object Classification using 4D CNN

    Roland Sireyjol, Atsushi Shimada, Tsubasa Minematsu, Hajime Nagahara, Rin-ichiro Taniguchi

    コンピュータビジョンとイメージメディア研究会(CVIM)  2018年5月 

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    記述言語:日本語  

  • Face Detection in Thermal Image Based on Two-Stage CNNs

    Yibo Guo, Atsushi Shimada, Hideaki Uchiyama, Chao Ma, Hajime Nagahara, Rin-ichiro Taniguchi

    コンピュータビジョンとイメージメディア研究会(CVIM)  2018年5月 

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    記述言語:日本語  

  • 人流変化をもたらす主要スポット検出のためのSpotRankの提案

    尾ノ上 晃, 堀 磨伊也, 島田 敬士, 谷口 倫一郎

    三者連携シンポジウム  2018年5月 

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    記述言語:日本語  

  • Extending Learning Analytics Platforms to Support Elderly People 国際会議

    Shinichi Konomi, Kohei Hatano, Miyuki Inaba, Misato Oi, Tsuyoshi Okamoto, Fumiya Okubo, Atsushi Shimada, Jingyun Wang, Masanori Yamada, Yuki Yamada

    International Workshop on Information Search, Integration, and Personalization  2018年5月 

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    記述言語:英語  

  • Automatic rigging of facial avatars from a template 国際会議

    Hayato Onizuka, Diego Thomas, Hideaki Uchiyama, Atsushi Shimada, Rin-ichiro Taniguchi

    International Workshop on Information Search, Integration, and Personalization  2018年5月 

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    記述言語:英語  

  • CNN based approach for Transparent Object Classification 国際会議

    Roland Sireyjol, Atsushi Shimada, Tsubasa Minematsu, Hajime Nagahara, Rin-Ichiro Taniguchi

    International Workshop on Information Search, Integration, and Personalization  2018年5月 

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    記述言語:英語  

  • Prediction of congestion based on Wi-Fi packet sensing 国際会議

    Eric Godard, Atsushi Shimada, Maiya Hori, Rin-Ichiro Taniguchi

    International Workshop on Information Search, Integration, and Personalization  2018年5月 

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    記述言語:英語  

  • 非負値行列因子分解を用いたデジタル教科書におけるスクラッチ機能の閲覧パターン分析

    毛利 考佑, 島田 敬士, 殷 成久, 魚崎 典子, 金子 敬一, 緒方 広明

    第25回 情報処理学会 教育学習支援情報システム研究会  2018年6月 

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    記述言語:日本語  

  • スポット重要度推定に基づく適応的変化検出

    尾ノ上 晃, 堀 磨伊也, 島田 敬士, 谷口 倫一郎

    マルチメディア,分散,協調とモバイル(DICOMO2018)シンポジウム  2018年7月 

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    記述言語:日本語  

  • 混雑緩和のための行動推薦モデル

    中山 経太, 堀 磨伊也, 島田 敬士, 谷口 倫一郎

    マルチメディア,分散,協調とモバイル(DICOMO2018)シンポジウム  2018年7月 

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    記述言語:日本語  

  • Relation Analysis between Learning Activities on Digital Learning System and Seating Area in Classrooms 国際会議

    Atsushi Shimada, Fumiya Okubo, Yuta Taniguchi, Hiroaki Ogata, Rin-ichiro Taniguchi, Shin'ichi Konomi

    11th International Conference on Educational Data Mining  2018年7月 

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    記述言語:英語  

  • How are Students Struggling in Programming? Understanding Learning Processes from Multiple Learning Logs 国際会議

    Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada, Shin'ichi Konomi

    11th International Conference on Educational Data Mining  2018年7月 

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    記述言語:英語  

  • Discovering Hidden Browsing Patterns Using Non-Negative Matrix Factorization 国際会議

    Kousuke Mouri, Atsushi Shimada, Chengjiu Yin, Keiichi Kaneko

    11th International Conference on Educational Data Mining  2018年7月 

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    記述言語:英語  

  • Redesign of a data collection in digital textbook systems 国際会議

    Kousuke Mouri, Noriko Uosaki, Atsushi Shimada, Chengjiu Yin, Keiichi Kaneko, Hiroaki Ogata

    International Conference on Learning Technologies and Learning Environments  2018年7月 

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    記述言語:英語  

  • 系列画像からの植物の成長予測モデルの構築

    櫻井 俊輔, 内山 英昭, 島田 敬士, 谷口 倫一郎

    第21回 画像の認識・理解シンポジウム  2018年8月 

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    記述言語:日本語  

  • Deep Plant Growth Prediction 国際会議

    Shunsuke Sakurai, Hideaki Uchiyama, Atsushi Shimada, Rin-ichiro Taniguchi

    COMPUTER VISION PROBLEMS IN PLANT PHENOTYPING (CVPPP 2018)  2018年9月 

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    記述言語:英語  

  • Supporting Teaching/Learning with Automatically Generated Quiz System 国際会議

    Kousuke Mouri, Noriko Uosaki, Mohammad Nehal Hasnine, Atsushi Shimada, Chengjiu Yin, Keiichi Kaneko, HiroakiOgata

    World Conference on e-Learning  2018年10月 

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    記述言語:英語  

  • BR-MAP: CONCEPT MAP SYSTEM USING E-BOOK LOGS 国際会議

    Masanori Yamada, Atsushi Shimada, Misato Oi, Yuta Taniguchi, Shin'ichi Konomi

    15th International Conference on Cognition and Exploratory Learning in Digital Age 2018  2018年10月 

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    記述言語:英語  

  • Early Change Detection Based on SpotRank 国際会議

    Akira Onoue, Maiya Hori, Atsushi Shimada, Rin-ichiro Taniguchi

    The ACM International Joint Conference on Pervasive and Ubiquitous Computing (UbiComp)  2018年10月 

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    記述言語:英語  

  • Seamless Learning Infrastructure for Finding Relationships Between Lectures and Practical Training 国際会議

    Kousuke MOURI, Mohammad Nehal HASNINE, Takafumi TANAKA, Uosaki NORIKO, Chengjiu YIN, Atsushi SHIMADA, Hiroaki OGATA

    26th International Conference on Computers in Education  2018年11月 

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    記述言語:英語  

  • 授業中の学習者のページ遷移のレーベンシュタイン距離による分析の試み

    中野 裕司, 古川 雅子, 大渡 拓朗, 久保田 真一郎, 杉谷 賢一, 島田 敬士

    第26回教育学習支援情報システム(CLE)研究発表会  2018年12月 

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    記述言語:日本語  

  • 実世界混雑解析に基づく行動推薦システム

    中山 経太, 尾ノ上 晃, 堀 磨伊也, 島田 敬士, 谷口 倫一郎

    第16回ITSシンポジウム2018  2018年12月 

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    記述言語:日本語  

  • 授業中の学生の閲覧ページ遷移の分析

    大渡 拓朗, 島田 敬士, 峰松 翼, 谷口 倫一郎

    情報処理学会 第81回全国大会  2019年3月 

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    記述言語:日本語  

  • 農業センシング情報の収集可視化システム

    赤山 直生, 島田 敬士, 有田 大作, 谷口 倫一郎

    情報処理学会 第81回全国大会  2019年3月 

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    記述言語:日本語  

  • デジタル教科書の学習活動ログを利用した教材難易度分析

    椎野 徹也, 島田 敬士, 峰松 翼, 秦埜 晃平, 木實 新一, 谷口 倫一郎

    情報処理学会 第81回全国大会  2019年3月 

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    記述言語:日本語  

  • Learning Activity Analytics across Courses 国際会議

    Atsushi Shimada, Takuro Owatari, Tsubasa Minematsu, Rin-Ichiro Taniguchi

    The 9th International Conference on Learning Analytics & Knowledge (LAK19)  2019年3月 

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    記述言語:英語  

  • Page-wise Difficulty Level Estimation using e-Book Operation Logs 国際会議

    Tetsuya Shiino, Atsushi Shimada, Tsubasa Minematsu, Kohei Hatano, Yuta Taniguchi, Shin’ichi Konomi, Rin-ichiro Taniguchi

    The 9th International Conference on Learning Analytics & Knowledge (LAK19)  2019年3月 

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    記述言語:英語  

  • How Students Flip Pages during Lectures? -Comparison between Power Users and Normal Users- 国際会議

    Takuro Owatari, Atsushi Shimada, Tsubasa Minematsu, Rin-ichiro Taniguchi

    LAK19 Data Challenge  2019年3月 

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    記述言語:英語  

  • Analytics of the relationship between quiz scores and reading behaviors in face-to-face courses 国際会議

    Tsubasa Minematsu, Atsushi Shimada, Rin-Ichiro Taniguchi

    LAK19 Data Challenge  2019年3月 

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    記述言語:英語  

  • Recommending Highlights on Students' E-Textbooks 国際会議

    Yuta Taniguchi, Atsushi Shimada, Masanori Yamada, Shin'ichi Konomi

    Society for Information Technology & Teacher Education International Conference,  2019年3月 

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    記述言語:英語  

  • Learning Support System for Providing Page-wise Recommendation in e-Textbooks 国際会議

    Keita Nakayama, Masanori Yamada, Atsushi Shimada, Tsubasa Minematsu, Rin-ichiro Taniguchi

    Society for Information Technology & Teacher Education International Conference,  2019年3月 

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    記述言語:英語  

  • The Integrated Knowledge Map for Surveying Students’ Learning 国際会議

    Akira Onoue, Masanori Yamada, Atsushi Shimada, Rin-ichiro Taniguchi

    Society for Information Technology & Teacher Education International Conference,  2019年3月 

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    記述言語:英語  

  • Analytics of Reading Patterns Based on Eye Movements in an e-Learning System 国際会議

    Tsubasa Minematsu, Kaori Tamura, Atsushi Shimada, Shin'ichi Konomi, Rin-ichiro Taniguchi

    Society for Information Technology & Teacher Education International Conference,  2019年3月 

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    記述言語:英語  

  • Identifying solar panel defects with a CNN 国際会議

    Roland Sireyjol, Patrick Granberg, Atsushi Shimada, Tsubasa Minematsu, Rin-ichiro Taniguchi

    14th International Conference on Quality Control by Artificial Vision  2019年5月 

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    記述言語:英語  

  • Pilot Study to Estimate “Difficult” Area in e-Learning Material by Physiological Measurements 国際会議

    Kaori Tamura, Tsuyoshi Okamoto, Misato Oi, Atsushi Shimada, Kohei Hatano, Masanori Yamada, Min Lu, Shin'ichi Konomi

    Learning @ Scale 2019  2019年6月 

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    記述言語:英語  

  • Proposal and Implementation of an Elderly-oriented User Interface for Learning Support Systems 国際会議

    Min Lu, Kaori Tamura, Tsuyoshi Okamoto, Misato Oi, Atsushi Shimada, Kohei Hatano, Masanori Yamada, Shin'ichi Konomi

    Learning @ Scale 2019  2019年6月 

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    記述言語:英語  

  • Optimizing Assignment of Students to Courses based on Learning Activity Analytics 国際会議

    Atsushi Shimada, Kousuke Mouri, Yuta Taniguchi, Hiroaki Ogata, Rin-ichiro Taniguchi, Shin'ichi Konomi

    12th International Conference on Educational Data Mining (EDM 2019)  2019年6月 

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    記述言語:英語  

  • Investigating Error Resolution Processes in C Programming Exercise Courses 国際会議

    Yuta Taniguchi, Atsushi Shimada, Shin’Ichi Konomi

    12th International Conference on Educational Data Mining (EDM 2019)  2019年6月 

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    記述言語:英語  

  • Hand Orientation Estimation in Probability Density Form 国際会議

    Kazuaki Kondo, Daisuke Deguchi, Atsushi Shimada

    The fourth International workshop on Egocentric Perception, Interraction and Computing (EPIC@CVPR19)  2019年6月 

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    記述言語:英語  

  • Advanced Tools for Digital Learning Management Systems in University Education 国際会議

    Atsushi Shimada, Tsubasa Minematsu, Masanori Yamada

    21st International Conference on Human-Computer Interaction (HCI INTERNATIONAL 2019)  2019年7月 

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    記述言語:英語  

  • Elicitation of Appropriate Scratching Zones based on Lecture Slide Layouts 国際会議

    Fumiya Suzuki, Kousuke Mouri, Noriko Uosaki, Atsushi Shimada, Chengjiu Yin, Keiichi Kaneko

    21st International Conference on Human-Computer Interaction (HCI INTERNATIONAL 2019)  2019年7月 

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    記述言語:英語  

  • Integrating Multimodal Learning Analytics and Inclusive Learning Support Systems for People of All Ages 国際会議

    Kaori Tamura, Min Lu, Shin’ichi Konomi, Kohei Hatano, Miyuki Inaba, Misato Oi, Tsuyoshi Okamoto, Fumiya Okubo, Atsushi Shimada, Jingyun Wang, Masanori Yamada, Yuki Yamada

    21st International Conference on Human-Computer Interaction (HCI INTERNATIONAL 2019)  2019年7月 

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    記述言語:英語  

  • 画像補完を用いた背景差分ニューラルネットワーク

    峰松 翼, 島田 敬士, 内山 英昭, 谷口 倫一郎

    第22回 画像の認識・理解シンポジウム (MIRU2019)  2019年7月 

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    記述言語:日本語  

    国名:日本国  

  • 畳み込みニューラルネットワークを用いた ソーラーパネル損傷領域検出

    峰松 翼, SIREYJOL Roland, GRANBERG Patrick, 島田 敬士, 谷口 倫一郎, 轟 恵, 伊村 彰修

    電気設備学会全国大会  2019年8月 

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    記述言語:日本語  

    国名:日本国  

  • Simple background subtraction constraint for weakly supervised background subtraction network 国際会議

    Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 16-th IEEE International Conference on Advanced Video and Signal-based Surveillance (AVSS)  2019年9月 

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    記述言語:英語  

  • On-Site Lecture Support Tools Using a Digital Learning Environment 国際会議

    Atsushi Shimada, Rin-ichiro Taniguchi

    EDUCAUSE Annual Conference 2019 (EDUCAUSE 2019)  2019年10月 

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    記述言語:英語  

  • Clustering of Learners Based on Knowledge Maps 国際会議

    Akira Onoue, Atsushi Shimada, Tsubasa Minematsu, Rin-ichiro Taniguchi

    16th International Conference on Cognition and Exploratory Learning in Digital Age (CELDA 2019)  2019年11月 

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    記述言語:英語  

  • 3D Plant Growth Prediction via Image-to-Image Translation 国際会議

    Tomohiro Hamamoto, Hideaki Uchiyama, Atsushi Shimada, , Rin-ichiro Taniguchi

    The 15th Joint Workshop on Machine Perception and Robotics 2019 (MPR 2019)  2019年11月 

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    記述言語:英語  

  • K-TIPS:Knowledge extension based on Tailor-made Information Provision System. 国際会議

    Keita Nakayama, Atsushi Shimada, Tsubasa Minematsu, Yuta Taniguchi, , Rin-ichiro Taniguchi.

    16th International Conference on Cognition and Exploratory Learning in Digital Age (CELDA 2019)  2019年11月 

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    記述言語:英語  

  • Simple background subtraction constraint in weakly supervised learning for background subtraction networks 国際会議

    Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 15th Joint Workshop on Machine Perception and Robotics 2019 (MPR 2019)  2019年11月 

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    記述言語:英語  

  • Combination of background subtraction and object detection method for semi-automatic incremental learning 国際会議

    Nicolas Sugino, Tsubasa Minematsu, Atsushi Shimada, Takashi Shibata, Rin-ichiro Taniguchi

    The 15th Joint Workshop on Machine Perception and Robotics 2019 (MPR 2019)  2019年11月 

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    記述言語:英語  

  • INTEGRATED CONTEXTUAL LEARNING ENVIRONMENTS WITH SENSOR NETWORK FOR CROP CULTIVATION EDUCATION: CONCEPT AND DESIGN 国際会議

    Rin-ichiro Taniguchi, Daisaku Arita, Atsushi Shimada, Masanori Yamada, Yoshiko Goda, Ryota Yamamoto, Takashi Okayasu

    16th International Conference on Cognition and Exploratory Learning in Digital Age (CELDA 2019)  2019年11月 

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    記述言語:英語  

  • A framework for sharing learner generated contents in collaborative learning 国際会議

    Hideaki Uchiyama, Emi Ishita, Yukiko Watanabe, Yoichi Tomiura, Atsushi Shimada, , Masanori Yamada

    Proceedings of the 9th Asia-Pacific Conference on Library & Information Education and Practice (A-LIEP 2019)  2019年11月 

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    記述言語:英語  

  • 視野を共有しない車載カメラ間のvSLAMを用いた外部パラメータ較正

    西口 和希,内山 英昭,早川 和孝,足立 淳,トマ ディエゴ,島田 敬士,谷口 倫一郎

    第93回モバイルコンピューティングとバーベイシブシステム・第79回高度交通システムとスマートコミュニティ合同研究発表会  2019年11月 

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    記述言語:日本語  

    国名:日本国  

  • Factors investigation of learning behaviors affecting learning performance and self-regulated learning 国際会議

    Li Chen, Yoshiko Goda, Atsushi Shimada, Masanori Yamada

    2019 IEEE International Conference on Engineering, Technology and Education (IEEE TALE 2019)  2019年12月 

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    記述言語:英語  

  • Generating a Consistent Global Map under Intermittent Mapping Conditions for Large-Scale Vision-Based Navigation 国際会議

    Kazuki Nishiguchi, Walid Bousselham, Hideaki Uchiyama, Diego Thomas, Atsushi Shimada, Rin-ichiro Taniguchi

    15th International Conference on Computer Vision Theory and Applications (VISAPP 2020)  2020年2月 

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    記述言語:英語  

  • Semi-automatic learning framework combining object detection andbackground subtraction 国際会議

    Sugino Nicolas Alejandro, Tsubasa Minematsu, Atsushi Shimada, Takashi Shibata, Rin-ichiro Taniguchi, Eiji Kaneko, Hiroyoshi Miyano

    15th International Conference on Computer Vision Theory and Applications (VISAPP 2020)  2020年2月 

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    記述言語:英語  

  • SALATA: A Web Application for Visualizing Sensor Information in Farm Fields 国際会議

    Nao Akayama, Daisaku Arita, Atsushi Shimada, Rin-ichiro Taniguchi

    9th International Conference on Sensor Networks (SENSORNETS 2020)  2020年2月 

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    記述言語:英語  

  • 3D Plant Growth Prediction via Image-to-Image Translation 国際会議

    Tomohiro Hamamoto, Hideaki Uchiyama, Atsushi Shimada, Rin-ichiro Taniguchi

    15th International Conference on Computer Vision Theory and Applications (VISAPP 2020)  2020年2月 

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    記述言語:英語  

  • PlanAR: Accurate and Stable 3D Positioning System via Interactive Plane Reconstruction for Handheld Augmented Reality 国際会議

    Ami Miyake, Hideaki Uchiyama, Atsushi Shimada, Rin-ichiro Taniguchi

    15th International Conference on Computer Vision Theory and Applications (VISAPP 2020)  2020年2月 

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    記述言語:英語  

  • Social Knowledge Map:学習者の理解状況把握のための知識マップ分析ツール

    尾ノ上 晃,山田 政寛,島田 敬士,峰松 翼,谷口 倫一郎

    情報処理学会 第30回教育学習支援情報システム(CLE)研究発表会  2020年3月 

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    記述言語:日本語  

    国名:日本国  

  • 活動センシングに基づくデジタル要約教材推薦

    中山 経太,島田 敬士,峰松 翼,山田 政寛,谷口 倫一郎

    情報処理学会 第30回教育学習支援情報システム(CLE)研究発表会  2020年3月 

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    記述言語:日本語  

  • 学生の復習支援に向けた小テストに関連する電子教材ページの自動抽出

    石川 高志,島田 敬士,峰松 翼,谷口 倫一郎

    情報処理学会 第30回教育学習支援情報システム(CLE)研究発表会  2020年3月 

     詳細を見る

    記述言語:日本語  

  • デジタル教材の学習ログと成績の関連分析

    椎野 徹也, 峰松 翼, 島田 敬士, 谷口 倫一郎

    情報処理学会 第30回教育学習支援情報システム(CLE)研究発表会  2020年3月 

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    記述言語:日本語  

  • オンライン電子教材の学習ログに基づくリアルタイム学習改善のためのダッシュボード開発

    大渡 拓朗,島田 敬士,峰松 翼,谷口 倫一郎

    情報処理学会 第30回教育学習支援情報システム(CLE)研究発表会  2020年3月 

     詳細を見る

    記述言語:日本語  

  • 学習分析の効率化に向けたオープンソースライブラリ「OpenLA」の開発

    村田 隆介,島田 敬士,峰松 翼,谷口 倫一郎

    情報処理学会 第30回教育学習支援情報システム(CLE)研究発表会  2020年3月 

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    記述言語:日本語  

  • 気象予報を活用した深層学習による温室内環境データの予測

    赤山直生, 有田大作, 島田敬士, 谷口倫一郎, 岡安崇史

    知覚情報/次世代産業システム合同研究会  2020年3月 

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    記述言語:日本語  

  • Social Knowledge Mapping Tool for Interactive Visualization of Learner's Knowledge 国際会議

    Akira Onoue, Masanori Yamada, Atsushi Shimada, Tsubasa Minematsu, Rin-ichiro Taniguchi

    The 2nd Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK20 Data Challenge)  2020年3月 

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    記述言語:英語  

  • What Activity Contributes to Academic Performance? 国際会議

    Tetsuya Shiino, Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 2nd Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK20 Data Challenge)  2020年3月 

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    記述言語:英語  

  • Evaluating the Accuracy of Real-time Learning Analytics in Student Activities 国際会議

    Takuro Owatari, Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 2nd Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK20 Data Challenge)  2020年3月 

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    記述言語:英語  

  • OpenLA: An Open-Sourse Library for e-Book Log Analytics 国際会議

    Ryusuke Murata, Tsubasa Minematsu, Atsushi Shimada

    The 2nd Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK20 Data Challenge)  2020年3月 

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    記述言語:英語  

  • For Evidence-Based Class Design with Learning Analytics: A Proposal of Preliminary Practice Flow Model in High School 国際会議

    Satomi Hamada, Xu Yufan, Xuewang Geng, Li Chen, Hiroaki Ogata, Atsushi Shimada, Masanori Yamada

    The 10th International Conference on Learning Analytics & Knowledge (LAK20)  2020年3月 

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    記述言語:英語  

  • Effects of In-class and Out-of-class Learning Behaviors on Learning Performance and Self-regulated Learning Awareness 国際会議

    Li Chen, Yoshiko Goda, Atsushi Shimada, Masanori Yamada

    The 10th International Conference on Learning Analytics & Knowledge (LAK20)  2020年3月 

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    記述言語:英語  

  • Development of a Learning Dashboard Prototype Supporting Meta-cognition for Students 国際会議

    Min Lu, Li Chen, Yoshiko Goda, Atsushi Shimada, Masanori Yamada

    The 10th International Conference on Learning Analytics & Knowledge (LAK20)  2020年3月 

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    記述言語:英語  

  • Analytics of Multimodal Learning Logs for Page Difficulty Estimation 国際会議

    Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 10th International Conference on Learning Analytics & Knowledge (LAK20)  2020年3月 

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    記述言語:英語  

  • Recommendation of Personalized Learning Materials based on Learning History and Campus Life Sensing 国際会議

    Keita Nakayama, Atsushi Shimada, Tsubasa Minematsu, Masanori Yamada, Rin-ichiro Taniguchi

    The 2nd Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK20 Data Challenge)  2020年3月 

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    記述言語:英語  

  • Score Prediction Based on Page Feature Clustering 国際会議

    Ryusuke Murata, Tsubasa Minematsu, Atsushi Shimada

    The 2nd Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK20 Data Challenge)  2020年3月 

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    記述言語:英語  

  • Automatic Retrieval of Learning Contents Related to Quizzes for Supporting Students’ Enhanced Reviews 国際会議

    Takashi Ishikawa, Tsubasa Minematsu, Atsushi Shimada, Rin-ichiro Taniguchi

    The 2nd Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK20 Data Challenge)  2020年3月 

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    記述言語:英語  

  • An end-to-end deep learning background subtraction with updating background modeling

    豊 帆, 峰松 翼, 島田 敬士, 内山 英昭, 谷口 倫一郎

    知覚情報/次世代産業システム合同研究会  2020年10月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • オンライン授業支援のためのリアルタイム学習分析ダッシュボードの開発

    大渡拓朗, 島田敬士, 峰松翼, 堀磨伊也, 谷口倫一郎

    情報処理学会 第32回教育学習支援情報システム(CLE)研究発表会  2020年11月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • デジタル教科書のログ分析効率化に向けたオープンソースライブラリ「OpneLA」の開発と適用事例の紹介

    村田 隆介, 島田 敬士, 峰松 翼, 谷口 倫一郎

    情報処理学会 第32回教育学習支援情報システム(CLE)研究発表会  2020年11月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 学習活動データに基づく個人適応型復習教材推薦システムの開発

    椎野 徹也, 島田 敬士, 峰松 翼, 谷口 倫一郎

    第32回教育学習支援情報システム研究発表会  2020年11月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • ソーラーパネル間の差異に着目した異常パネル検出

    Deng Jiaming, 峰松 翼, 島田 敬士, 谷口 倫一郎, 安武 和成, 轟 恵

    Vision Engineering Workshop 2020 ビジョン技術の実利用ワークショップ (View2020)  2020年12月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 学習結果の差異に着目した照明変動下の背景差分ニューラルネットワーク解析

    濵田泰輝, 峰松翼, 島田 敬士, 井下 哲夫, 谷口 倫一郎

    知覚情報/次世代産業システム合同研究会  2021年3月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 学習日誌分析システムの開発とその評価

    野崎 聖斗, 峰松 翼, 島田 敬士, 谷口 倫一郎

    第33回教育学習支援情報システム研究発表会 (CLE33)  2021年3月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 圃場環境ダイジェストシステムの開発とその評価

    志賀 寛羽, 谷口 雄太, 峰松 翼, 大久保 文哉, 島田 敬士, 谷口 倫一郎

    第34回教育学習支援情報システム研究発表会 (CLE34)  2021年5月 

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    国名:日本国  

  • 学習記事推薦のための推薦システムの開発と手法の評価

    岡井 成遊, 大久保 文哉, 内山 英昭, 峰松 翼, 谷口 雄太, 島田 敬士

    第34回教育学習支援情報システム研究発表会 (CLE34)  2021年5月 

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    国名:日本国  

  • 手書きノートのページセグメンテーションによる学習活動の分析

    李 柏毅, 峰松 翼, 谷口 雄太, 大久保 文哉, 島田 敬士

    第34回教育学習支援情報システム研究発表会 (CLE34)  2021年5月 

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    国名:日本国  

  • 背景差分ニューラルネットワークの照明変動に関わるニューロンの特定と評価

    濵田 泰輝, 峰松 翼, 島田 敬士, 谷口 雄太, 大久保 文哉

    画像の認識・理解シンポジウム MIRU2021  2021年7月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • プログラミング演習の軌跡:学生のコーディング過程理解のための教師支援

    谷口 雄太, 峰松 翼, 大久保 文哉, 島田 敬士

    第35回教育学習支援情報システム研究会(CLE35)  2021年12月 

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    国名:日本国  

  • プログラミングログ分析による支援の必要な学生の検知指標の提案とフィードバックツールの開発

    井川 一渓, 谷口 雄太, 峰松 翼, 大久保 文哉, 島田 敬士

    第35回教育学習支援情報システム研究会(CLE35)  2021年12月 

     詳細を見る

    国名:日本国  

  • 科目の関連性情報を付加したカリキュラム情報閲覧システムの開発

    山本 雄介, 峰松 翼, 長沼 祥太郎, 谷口 雄太, 大久保 文哉, 島田 敬士

    第35回教育学習支援情報システム研究会(CLE35)  2021年12月 

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    国名:日本国  

  • 学習記事共有ネットワークシステムの提案

    岡井 成遊, 峰松 翼, 大久保 文哉, 谷口 雄太, 内山 英昭, 島田 敬士

    第35回教育学習支援情報システム研究会(CLE35)  2021年12月 

     詳細を見る

    国名:日本国  

  • 学習テーマとその関連テーマによるデジタル教材のダイジェスト資料生成

    玉城 亮治, 峰松 翼, 谷口 雄太, 大久保 文哉, 島田 敬士

    第37回教育学習支援情報システム研究発表会 (CLE37)  2022年6月 

     詳細を見る

    国名:日本国  

  • Improvement of Page Segmentation Model for Analytics of Handwritten Notes

    周 云宇, 峰松 翼, 島田 敬士

    第37回教育学習支援情報システム研究発表会 (CLE37)  2022年6月 

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    国名:日本国  

  • A system to realize time- and location-independent teaching and learning among leaners through sharing learning-articles 国際会議

    Seiyu Okai, Tsubasa Minematsu, Fumiya Okubo, Yuta Taniguchi, Hideaki Uchiyama, Atsushi Shimada

    IFIP World Conference on Computers in Education (WCCE2022)  2022年8月 

     詳細を見る

    国名:日本国  

  • Development and Evaluation of a Field Environment Digest System for Agricultural Education 国際会議

    Kanu Shiga, Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada, Rin-ichiro Taniguchi

    IFIP World Conference on Computers in Education (WCCE2022)  2022年8月 

     詳細を見る

    国名:日本国  

  • 学習システム間横断学習分析のための教育データ関連分析手法

    松尾 早一朗, 峰松 翼, 谷口 雄太, 大久保 文哉, 島田 敬士

    第38回教育学習支援情報システム研究発表会 (CLE38)  2022年11月 

     詳細を見る

    国名:日本国  

  • プログラミング過程に着目した学生表現の学習

    谷口 雄太, 峰松 翼, 大久保 文哉, 島田 敬士

    第38回教育学習支援情報システム研究発表会 (CLE38)  2022年11月 

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    国名:日本国  

  • Detection of At-Risk Students in Programming Courses 国際会議

    Ikkei Igawa, Yuta Taniguchi, Tsubasa Minematsu, Fumiya Okubo, Atsushi Shimada

    International Conference on Computers in Education 2022 (ICCE2022)  2022年11月 

  • Assessment of At-Risk Students’ Predictions From E-Book Activities Representations In Practical Applications 国際会議

    Erwin D. Lopez Z., Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada

    International Conference on Computers in Education 2022 (ICCE2022)  2022年11月 

  • Topic-Based Representation of Learning Activities for New Learning Pattern Analytics 国際会議

    Jinghao Wang, Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada

    International Conference on Computers in Education 2022 (ICCE2022)  2022年11月 

  • コロナ禍における九州大学でのLINEを用いた教育支援体制の構築

    野口 岳, 徳永 大空, 東原 萌々子, 藤本 俊, ウン クアンイ, 島田 敬士

    大学ICT推進協議会 2022年度年次大会  2022年12月 

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    国名:日本国  

  • Background Subtraction Network Module Ensemble for Background Scene Adaptation 国際会議

    Taiki Hamada, Tsubasa Minematsu, Atsushi Shimada, Fumiya Okubo, Yuta Taniguchi

    International Conference on Advanced Video and Signal Based Surveillance (AVSS2022)  2022年12月 

  • Scaled-Dot Product Attention for Early Detection of At-Risk Students 国際会議

    Sukrit Leelaluk, Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Takayoshi Yamashita, Atsushi Shimada

    IEEE International Conference on Teaching, Assessment and Learning for Engineering (TALE2022)  2022年12月 

  • 学習状況に応じた学習記事検索手法の開発

    岡井 成遊, 峰松 翼, 谷口 雄太, 大久保 文哉, 島田 敬士

    第39回教育学習支援情報システム研究発表会 (CLE39)  2023年3月 

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    国名:日本国  

  • 圃場センシング情報の推移から注目期間を捉える圃場環境ダイジェストシステムによる農業教育支援

    志賀 寛羽, 峰松 翼, 谷口 雄太, 大久保 文哉, 島田 敬士

    第39回教育学習支援情報システム研究発表会 (CLE39)  2023年3月 

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    国名:日本国  

  • LSTM with Attention Mechanism for Students’ Performance Prediction Based on Reading Behavior 国際会議

    Sukrit Leelaluk, Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Takayoshi Yamashita, Atsushi Shimada

    The 5th Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK23 Data Challenge)  2023年3月 

  • 視線情報による高解像度な学習ログの生成システムの開発

    後藤 健, 峰松 翼, 谷口 雄太, 大久保 文哉, 島田 敬士

    第40回教育学習支援情報システム研究発表会 (CLE40)  2023年6月 

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    国名:日本国  

  • 教育データの分散表現生成手法の提案とAt-risk学生検知への応用

    宮崎 佑馬, 峰松 翼, 谷口 雄太, 大久保 文哉, 島田 敬士

    第40回教育学習支援情報システム研究発表会 (CLE40)  2023年6月 

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    国名:日本国  

  • Attention機構を用いた背景変動に頑健な変化検出手法の分析

    濵田 龍之介, 峰松 翼, 谷口 雄太, 大久保 文哉, 島田 敬士

    第29回画像センシングシンポジウム(SSII2023)  2023年6月 

     詳細を見る

    国名:日本国  

  • Contrastive Learning For Reading Behavior Embedding in E-book System 国際会議

    Tsubasa Minematsu, Yuta Taniguchi, Atsushi Shimada

    The 24th International Conference on Artificial Intelligence in Education (AIED2023)  2023年7月 

  • Predicting Student Scores Using Browsing Data and Content Information of Learning Materials 国際会議

    Sayaka Kogishi, Tsubasa Minematsu, Atsushi Shimada, Hiroaki Kawashima

    The 24th International Conference on Artificial Intelligence in Education (AIED2023)  2023年7月 

  • LECTOR: An attention-based model to quantify e-book lecture slides and topics relationships 国際会議

    Erwin D. Lopez Z., Tsubasa Minematsu, Yuta Taniguchi, Fumiya Okubo, Atsushi Shimada

    The 16th International Conference on Educational Data Mining (EDM2023)  2023年7月 

  • Improvement of Image Segmentation Model for Handwritten Notebook Analytics 国際会議

    Yunyu Zhou, Tsubasa Minematsu, Atsushi Shimada

    IEEE International Conference on Image Processing (ICIP2023)  2023年10月 

  • Investigating Programming Performance Predictability from Embedding Vectors of Coding Behaviors 国際会議

    Ikkei Igawa, Yuta Taniguchi, Tsubasa Minematsu, Fumiya Okubo, Atsushi Shimada

    International Conference on Computers in Education 2023 (ICCE2023)  2023年12月 

  • 生成AIを用いたシラバス情報の拡張と授業内トピック間類似度評価の検討

    尾崎 真大, 大久保 文哉, 峰松 翼, 島田 敬士

    第41回教育学習支援情報システム (CLE41)  2023年12月 

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    国名:日本国  

  • A Comparative Analysis of Large Language Models for Contextually Relevant Question Generation in Education

    Ivo Lodovico Molina, 峰松 翼, 島田 敬士

    第41回教育学習支援情報システム (CLE41)  2023年12月 

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    国名:日本国  

  • Educational Data Analysis using Generative AI 国際会議

    Abdul Berr, Sukrit Leelaluk, Cheng Tang, Li Chen, Fumiya Okubo, Atsushi Shimada

    The 6th Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK24 Data Challenge)  2024年3月 

  • A Deep learning Grade Prediction Model of Online Learning Performance Based on knowledge learning representation 国際会議

    Shuaileng Yuan, Sukrit Leelaluk, Cheng Tang, Li Chen, Fumiya Okubo, Atsushi Shimada

    The 6th Workshop on Predicting Performance Based on the Analysis of Reading Behavior (LAK24 Data Challenge)  2024年3月 

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    The Fourteenth International Conference on Learning Analytics & Knowledge  2024年3月 

  • 数学問題文を入力とした3Dモデル自動生成システムの検討

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    第42回教育学習支援情報システム (CLE42)  2024年3月 

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  • Students' Performance Prediction Based on Similarity between Online Textbooks and Questions

    任 永楽, 唐 成, 谷口 雄太, 峰松 翼, 大久保 文哉, 島田 敬士

    第42回教育学習支援情報システム (CLE42)  2024年3月 

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  • 動的アニメーションエンジンを用いたインタラクティブに効率よくAIの仕組みを学習できるWebアプリの開発

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    第42回教育学習支援情報システム研究発表会  2024年3月 

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  • 大規模人流 シミュレーションのための歩行速度モデルの提案

    野中 陽介, 大西 正輝, 山下 倫央, 岡田 崇, 島田 敬士, 谷口 倫一郎

    ビジョン技術の実利用ワークショップ ViEW2012  2012年12月 

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  • スクリーンを用いた講義形式の遠隔講義支援システムの開発

    島田敬士, 菅沼 明, 谷口倫一郎

    電子情報通信学会 2003年総合大会  2003年3月 

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  • 教師の動作推定を利用した講義自動撮影システムの構築と評価

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    火の国情報シンポジウム2004  2004年3月 

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  • 講義中の教師の動作に基づく説明対象の抽出

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    画像の認識・理解シンポジウム2004  2004年7月 

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    画像の認識・理解シンポジウム2005  2005年7月 

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  • 遠隔講義受講者のためのアクティブな講義映像生成システムの開発

    田代 直之, 島田 敬士, 菅沼 明

    プログラミング・シンポジウム  2006年1月 

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    島田 敬士, 鶴田 直之, 谷口 倫一郎

    パターン認識・メディア理解研究会  2006年3月 

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  • 混合ガウス分布による動的背景モデルの分布数増減法

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    画像の認識・理解シンポジウム2006  2006年7月 

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    画像の認識・理解シンポジウム2006  2006年7月 

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    電気関係学会九州支部連合大会  2006年9月 

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  • 密度可変型自己組織化マップによる追加学習法

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    ニューロコンピューティング研究会  2006年12月 

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  • 撮影領域に重なりのないカメラ群の連結関係推定に基づく物体追跡

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    火の国情報シンポジウム2007  2007年3月 

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    リポジトリ公開URL: http://hdl.handle.net/2324/5938

  • Parzen推定を用いた動的背景モデル構築の高速化手法

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    火の国情報シンポジウム2007  2007年3月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 屋外映像解析における物体間の関係を利用したイベントの記述

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    火の国情報シンポジウム2007  2007年3月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • ノンパラメトリックな動的背景・影モデルに基づいた映像からの物体抽出

    田中 達也, 島田 敬士, 有田 大作, 谷口 倫一郎

    コンピュータビジョンとイメージメディア研究会  2007年5月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • ノンパラメトリックな動的背景モデルを用いた対象抽出

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    画像センシングシンポジウム  2007年6月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

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  • 長期記憶と短期記憶を利用した動的背景モデルの時空間統合

    島田 敬士, 有田 大作, 谷口 倫一郎

    画像の認識・理解シンポジウム2007  2007年7月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

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  • Parzen推定を用いた動的背景・影モデルによる映像からの物体抽出

    田中 達也, 島田 敬士, 有田 大作, 谷口 倫一郎

    画像の認識・理解シンポジウム2007  2007年7月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 撮影領域に重なりのないカメラ群の逐次的連結関係推定に基づく実時間物体追跡

    野田 周平, 島田 敬士, 有田 大作, 谷口 倫一郎

    画像の認識・理解シンポジウム2007  2007年7月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • Variable-Density Self-Organizing Map for Incremental Learning 国際会議

    Atsushi Shimada, Rin-ichiro Taniguchi

    the 5th Workshop On Self-Organizing Maps  2007年9月 

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    国名:ドイツ連邦共和国  

  • A Fast Algorithm for Adaptive Background Model Construction Using Parzen Density Estimation 国際会議

    Tatsuya Tanaka, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    IEEE International Conference on Advanced Video and Signal based Surveillance 2007  2007年9月 

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    国名:グレートブリテン・北アイルランド連合王国(英国)  

  • 自己組織化マップの想起能力を利用したモーションキャプチャにおける欠損データの補完

    叶内 円, 島田 敬士, 有田 大作, 谷口 倫一郎

    電気関係学会九州支部連合大会  2007年9月 

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    国名:日本国  

  • 実時間ビジョンベースモーションキャプチャにおける姿勢推定の高精度化

    才木 崇史, 島田 敬士, 有田 大作, 谷口 倫一郎

    電気関係学会九州支部連合大会  2007年9月 

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    国名:日本国  

  • モバイルカメラを利用した固定カメラの死角補間に関する研究

    小野 弘道, 島田 敬士, 有田 大作, 谷口 倫一郎

    電気関係学会九州支部連合大会  2007年9月 

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    国名:日本国  

  • Real-time Tracking across non-Overlapping Cameras based on Estimated Camera Networks 国際会議

    Shuhei Noda, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    the 3rd Joint Workshop on Machine Perception and Robotics  2007年11月 

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    国名:日本国  

  • Shot Supporting System for a Beginner of Billiards Using a Projector-Camera System -Correcting Player's Stance in Shooting- 国際会議

    Yusuke Ogata, Akira Suganuma, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    the 3rd Joint Workshop on Machine Perception and Robotics  2007年11月 

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    国名:日本国  

  • Improvement in Robustness of Vision-based Real-time Human Posture Analysis Using Incremental Learnable Self-Organizing Map 国際会議

    Atsushi Shimada, Madoka Kanouchi, Daisaku Arita, Rin-ichiro Taniguchi

    the 3rd Joint Workshop on Machine Perception and Robotics  2007年11月 

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    国名:日本国  

  • Non-parametric Background and Shadow Modeling for Object Detection 国際会議

    Tatsuya Tanaka, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    Asian Conference on Computer Vision 2007  2007年11月 

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    国名:日本国  

  • 追加学習型自己組織化写像を利用した実時間人体姿勢計測の頑健化

    島田 敬士, 叶内 円, 有田 大作, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2007-129)  2007年11月 

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    国名:日本国  

  • Improvement in Robustness of Vision-based Real-time Human Posture Analysis Using Valiable Density Self-Organizing Map 国際会議

    Madoka Kanouchi, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    the 14th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2008年1月 

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    国名:日本国  

  • Camera Network Estimation for Real-time Tracking across non-Overlapping Cameras 国際会議

    Shuhei Noda, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    the 14th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2008年1月 

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    国名:日本国  

  • A Billiard Instruction System based on Mixed Reality Technique 国際会議

    Yusuke Ogata, Akira Suganuma, Athushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    the 14th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2008年1月 

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    国名:日本国  

  • A Vision-based Real-time Motion Capture System using Fast Model Fitting 国際会議

    Takashi Saiki, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    the 14th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2008年1月 

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    国名:日本国  

  • Spatial-Temporal Integration of Adaptive Gaussian Mixture Background Models 国際会議

    Atsushi Shimada, Tatsuya Tanaka, Daisaku Arita, Rin-ichiro Taniguchi

    the 14th Korea-Japan Joint Workshop on Frontiers of Computer Vision  2008年1月 

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    国名:日本国  

  • 追加学習型自己組織化写像を利用した実時間人体姿勢計測の頑健化

    島田 敬士, 谷口 倫一郎

    信学技報ニューロコンピューティング(NC2007-104)  2008年1月 

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    国名:日本国  

  • ノンパラメトリックな動的背景モデルによる対象抽出 --照明変動に対する頑健性の向上--

    田中 達也, 島田 敬士, 有田 大作, 谷口 倫一郎

    電気学会情報処理産業システム情報化合同研究会  2008年2月 

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    国名:日本国  

  • カメラの内部パラメータを利用した半自校正法

    小野 弘道, 島田 敬士, 有田 大作, 谷口 倫一郎

    電子情報通信学会 2008年総合大会  2008年3月 

     詳細を見る

    国名:日本国  

  • 動的背景予測モデルによる照明条件変動下での物体検

    島田 敬士, 田中 達也, 有田 大作, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2007-323)  2008年3月 

     詳細を見る

    国名:日本国  

  • 混合RRFによる照明条件変動下での物体検出

    田中 達也, 島田 敬士, 有田 大作, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2007-322)  2008年3月 

     詳細を見る

    国名:日本国  

  • カメラの内部パラメータを利用した半自校正

    小野 弘道, 島田 敬士, 有田 大作, 谷口 倫一

    火の国情報シンポジウム2008  2008年3月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 広域映像サーベイランスのためのアクティブカメラによる物体軌跡の取得

    河口 裕治, 野田 周平, 田中 達也, 島田 敬士, 有田 大作, 谷口 倫一郎

    火の国情報シンポジウム2008  2008年3月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 広域映像サーベイランスのためのアクティブカメラを用いた物体軌跡の取得

    河口 裕治, 島田 敬士, 有田 大作, 谷口 倫一郎

    情処研報コンピュータビジョンとイメージメディア(2007-CVIM-163)  2008年5月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 自己組織化写像の拡張によるモーションキャプチャシステムの頑健化

    叶内 円, 島田 敬士, 有田 大作, 谷口 倫一郎

    情処研報コンピュータビジョンとイメージメディア(2007-CVIM-163)  2008年5月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • Robust Estimation of Human Posture Using Incremental Learnable Self-Organizing Map 国際会議

    Atsushi Shimada, Madoka Kanouchi, Daisaku Arita, Rin-ichiro Taniguchi

    International Joint Conference on Neural Networks  2008年6月 

  • Visual Feature Extraction Using Variable Map-Dimension Hypercolumn Model 国際会議

    Saleh Aly, Naoyuki Tsuruta, Rin-ichiro Taniguchi, Atsushi Shimada

    International Joint Conference on Neural Networks  2008年6月 

  • 確率モデルに基づく動的背景モデルによる照明条件変動下での物体検出

    田中 達也, 島田 敬士, 有田 大作, 谷口 倫一郎

    第14回画像センシングシンポジウム(SSII08)  2008年6月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 種類の異なるセンサ間の連結関係推定および物体追跡

    野田 周平, 島田 敬士, 有田 大作, 谷口 倫一郎

    第14回画像センシングシンポジウム(SSII08)  2008年6月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • プロジェクタ・カメラを利用したビリヤードショット支援システム

    緒方 祐介, 菅沼 明, 島田 敬士, 有田 大作, 谷口 倫一郎

    画像の認識・理解シンポジウム2008  2008年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • テクスチャを考慮した照明条件変動下での背景モデル生成とそれに基づく物体検出

    田中 達也, 島田 敬士, 有田 大作, 谷口 倫一郎

    画像の認識・理解シンポジウム2008  2008年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 種類の異なるセンサ間の連結関係推定に基づく物体追跡

    野田 周平, 島田 敬士, 有田 大作, 谷口 倫一郎

    画像の認識・理解シンポジウム2008  2008年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 広域映像サーベイランスのための能動カメラによる物体軌跡の取得

    河口 裕治, 島田 敬士, 有田 大作, 谷口 倫一郎

    画像の認識・理解シンポジウム2008  2008年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 高速密度可変型自己組織化写像による実時間人体姿勢計測の頑健

    叶内 円, 島田 敬士, 有田 大作, 谷口 倫一郎

    画像の認識・理解シンポジウム2008  2008年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 動的背景予測モデルを用いた照明変動に頑健な物体検出

    島田 敬士, 有田 大作, 谷口 倫一郎

    画像の認識・理解シンポジウム2008  2008年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 階層型自己組織化写像のスパースコードを利用した時系列動作パターンの認識

    島田 敬士, 谷口 倫一郎

    画像の認識・理解シンポジウム2008  2008年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 特徴点信頼度に基づく学習と想起の切り替えによる実時間身体姿勢計測の頑健化

    島田 敬士, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2008-84)  2008年9月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 追加学習型自己組織化マップにおける不要ニューロンの削除法

    島田 敬士, 谷口 倫一郎

    日本神経回路学会JNNS2008第18回全国大会  2008年9月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • プロジェクタ・カメラを利用したビリヤード初級者向けショット支援システム

    緒方 祐介, 菅沼 明, 島田 敬士, 有田 大作, 谷口 倫一郎

    映像情報メディア学会年次大会  2008年9月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • Object Segmentation under Varying Illumination based on Combinational Background Modeling 国際会議

    Tatsuya Tanaka, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    the 4th Joint Workshop on Machine Perception and Robotics  2008年11月 

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    国名:中華人民共和国  

  • Billiard Instruction System for Beginners with a Projector-Camera System 国際会議

    Akira Suganuma, Yusuke Ogata, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    the International Conference on Advances in Computer Entertainment Technology  2008年12月 

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    国名:日本国  

  • Gesture Recognition Using Sparse Code of Hierarchical SOM 国際会議

    Atsushi Shimada, Rin-ichiro Taniguchi

    International Conference on Pattern Recognition  2008年12月 

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    国名:アメリカ合衆国  

  • Object Tracking across Non-overlapping Views of Multiple Sensors 国際会議

    Shuhei Noda, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    International Workshop on "Sensing Web" in conjunction with the 19th International Conference on Pattern Recognition  2008年12月 

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    国名:アメリカ合衆国  

  • 複数人物を対象としたビジョンベースモーションキャプチャのための人物領域分割

    江頭 裕彬, 島田 敬士, 有田 大作, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2008-156)  2008年12月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • Object Detection under Varying Illumination based on Adaptive Background Modeling Considering Spatial Locality 国際会議

    Tatsuya Tanaka, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    The Third Pacific-Rim Symposium on Image and Video Technology  2009年1月 

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    国名:日本国  

  • Segmentation of Multiple People in Vision-based Motion Capture 国際会議

    Hiroaki Egashira, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    15th Japan-Korea Joint Workshop on Frontiers of Computer Vision  2009年2月 

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    国名:大韓民国  

  • blob記述子を用いた歩行者数カウント

    吉永 諭史, 島田 敬士, 有田 大作, 谷口 倫一郎

    火の国情報シンポジウム  2009年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 自己組織化写像のスパースコードを利用した動作の早期認識

    川島 学, 島田 敬士, 谷口 倫一郎

    火の国情報シンポジウム  2009年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 時空間特徴を考慮した動的背景モデルによる背景変動に頑健な物体検出

    田中 達也, 島田 敬士, 有田 大作, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2008-282)  2009年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • Elimination of useless neurons in incremental learnable self-organizing map 国際会議

    Atsushi Shimada, Rin-ichiro Taniguchi

    7th International Workshop On Self-Organizing Maps  2009年6月 

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    国名:アメリカ合衆国  

  • Early recognition of gesture patterns using sparse code of self-organizing map 国際会議

    Manabu Kawashima, Atsushi Shimada, Rin-ichiro Taniguchi

    7th International Workshop On Self-Organizing Maps  2009年6月 

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    国名:アメリカ合衆国  

  • ブロブ特徴を用いた実時間歩行者数推定

    吉永 諭史, 島田 敬士, 谷口 倫一郎

    情処研報コンピュータビジョンとイメージメディア(2009-CVIM-167)  2009年6月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 動作の早期認識のための自己組織化写像構成法

    川島 学, 島田 敬士, 谷口 倫一郎

    情処研報コンピュータビジョンとイメージメディア(2009-CVIM-167)  2009年6月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 分散配置センサ群による実時間広域物体追跡システム

    野田 周平, 河口 裕治, 島田 敬士, 有田 大作, 谷口 倫一郎

    第15回画像センシングシンポジウム(SSII09)  2009年6月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 実時間歩行者数カウントシステム

    吉永 諭史, 島田 敬士, 有田 大作, 谷口 倫一郎

    第15回画像センシングシンポジウム(SSII09)  2009年6月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • ブロブ特徴を利用した実時間歩行者数計測

    吉永 諭史, 田中 達也, 島田 敬士, 谷口 倫一郎

    画像の認識・理解シンポジウム2009  2009年7月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 時空間特徴を考慮した動的背景モデル構築とそれに基づく物体検出

    田中 達也, 島田 敬士, 谷口 倫一郎, 山下 隆義, 有田 大作

    画像の認識・理解シンポジウム2009  2009年7月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 時空間符号列群による照明変動に頑健なハイブリッド型背景モデル

    島田 敬士, 谷口 倫一郎

    画像の認識・理解シンポジウム2009  2009年7月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 自己組織化写像を利用した動作の早期認識

    川島 学, 島田 敬士, 谷口 倫一郎

    画像の認識・理解シンポジウム2009  2009年7月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 人物領域分割を利用した複数人物姿勢推定

    江頭 裕彬, 川島 学, 島田 敬士, 谷口 倫一郎, 有田 大作

    画像の認識・理解シンポジウム2009  2009年7月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • Hybrid Background Model using Spatial-Temporal LBP 国際会議

    Atsushi Shimada, Rin-ichiro Taniguchi

    International Conference on Advanced Video and Signal based Surveillance 2009  2009年9月 

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    国名:イタリア共和国  

  • Vision-Based Motion Capture of Interacting Multiple People 国際会議

    Hiroaki Egashira, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    15th International Conference on Image Analysis and Processing  2009年9月 

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    国名:イタリア共和国  

  • 追加学習に基づく動作の早期認識の高精度化

    川島 学, 島田 敬士, 谷口 倫一郎

    日本神経回路学会JNNS2009第19回全国大会  2009年9月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • Towards robust object detection: integrated background modeling based on spatio-temporal features 国際会議

    Tatsuya Tanaka, Atsushi Shimada, Rin-ichiro Taniguchi, Takayoshi Yamashita, Daisaku Arita

    Asian Conference on Computer Vision 2009  2009年9月 

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    国名:中華人民共和国  

  • Early Recognition of Gesture Patterns Using Self-Organizing Map 国際会議

    Manabu Kawashima, Atsushi Shimada, Rin-ichiro Taniguchi

    5th Joint Workshop on Machine Perception and Robotics  2009年10月 

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    国名:日本国  

  • People Counting Method Using Blob Features 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Rin-ichiro Taniguchi

    5th Joint Workshop on Machine Perception and Robotics  2009年10月 

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    国名:日本国  

  • Posture Analysis of Interacting Multiple People 国際会議

    Hiroaki Egashira, Atsushi Shimada, Daisaku Arita, Rin-ichiro Taniguchi

    5th Joint Workshop on Machine Perception and Robotics  2009年10月 

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    国名:日本国  

  • クリッカブル・リアルワールド:モバイル端末を利用した実世界インタラクション

    島田 敬士, 大神 渉, 谷口 倫一郎

    映像メディア処理シンポジウム(IMPS2009)  2009年10月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • Real-time People Counting using Blob Descriptor 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Rin-ichiro Taniguchi

    International Conference on Security Camera Network  2009年10月 

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    国名:日本国  

  • 前景と背景の相互モデリングによる物体検出に関する検討

    島田 敬士, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2009-120)  2009年11月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 若手が国際的に活躍するために(仮題)

    玉木 徹, 植松 裕子, 近藤 一晃, 酒井 智弥, 島田 敬士, 出口 大輔, 山下 隆義

    信学技報パターン認識・メディア理解(PRMU2009-148)  2009年12月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • クリッカブル・リアルワールド:実世界情報獲得のための新たな実世界インタラクション

    島田 敬士, 大神 渉

    インタラクション2010  2010年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • モバイル端末を利用した実世界インタラクションのための対象特定に関する検討

    阿部 尚之, 大神 渉, 島田 敬士, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2009-247)  2010年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 複雑背景下における移動カメラ映像からの移動物体領域検出

    河口 裕治, 島田 敬士, 谷口 倫一郎

    火の国情報シンポジウム  2010年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • ビリヤードの初級者支援における撞球姿勢の矯正法

    松井 修平, 菅沼 明, 島田 敬士, 谷口 倫一郎

    火の国情報シンポジウム  2010年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 位置情報と撮影構図に基づいた ロバストな画像マッチング手法 -Clickable Real World の実現にむけて-

    大神 渉, 島田 敬士, 谷口 倫一郎

    火の国情報シンポジウム  2010年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 局所領域の輝度変動を考慮した確率的背景モデルの検討

    吉永 諭史, 島田 敬士, 谷口 倫一郎

    火の国情報シンポジウム  2010年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • Structuring and Presenting the Distributed Sensory Information in the Sensing Web 国際会議

    Rin-ichiro Taniguchi, Atsushi Shimada, Yuji Kawaguchi, Yousuke Miyata, Satoshi Yoshinaga

    Information Processing and Management of Uncertainty in Knowledge-Based Systems. Applications  2010年6月 

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    国名:ドイツ連邦共和国  

  • 分散配置センサ群による追跡情報の階層的管理

    島田 敬士, 宮田 洋輔, 谷口 倫一郎

    第16回画像センシングシンポジウム(SSII2010)  2010年6月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • カメラ付き携帯端末を用いた実世界インタラクションのための対象特定に関する検討

    阿部 尚之, 島田 敬士, 谷口 倫一郎

    画像の認識・理解シンポジウム2010  2010年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 動作の早期認識のための参照姿勢選択法

    川島 学, 島田 敬士, 谷口 倫一郎

    画像の認識・理解シンポジウム2010  2010年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 局所領域の輝度変動を考慮した動的背景モデル構築とそれに基づく物体検出

    吉永 諭史, 島田 敬士, 谷口 倫一郎

    画像の認識・理解シンポジウム2010  2010年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 物体領域を考慮した照明変動に頑健な動的背景モデル構築法

    島田 敬士, 谷口 倫一郎

    画像の認識・理解シンポジウム2010  2010年7月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 位置情報と大規模画像データベースを利用した撮影対象特定に関する検討

    阿部 尚之, 大神 渉, 島田 敬士, 長原 一, 谷口 倫一郎

    情報科学技術フォーラムFIT2010  2010年9月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 装着型センサによる農作業認識システム構築に向けて

    谷口 倫一郎, 南石 晃明, 有田 大作, 島田 敬士, 長原 一

    情報科学技術フォーラムFIT2010  2010年9月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • 実世界における広域追跡情報の相関ルール検出

    大野 純弘, 島田 敬士, 長原 一, 谷口 倫一郎

    電気関係学会九州支部連合大会  2010年9月 

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    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • Robust Face Recognition Using Multiple Self-Organized Gabor Features and Local Similarity Matching 国際会議

    Saleh Aly, Atsushi Shimada, Naoyuki Tsuruta, Rin-ichiro Taniguchi

    International Conference on Pattern Recognition  2010年9月 

     詳細を見る

    国名:ギリシャ共和国  

  • 実世界における広域追跡情報の相関ルール検出

    大野 純弘, 島田 敬士, 長原 一, 谷口 倫一郎

    電気関係学会九州支部連合大会  2010年9月 

     詳細を見る

    会議種別:シンポジウム・ワークショップ パネル(公募)  

    国名:日本国  

  • Background model dealing with local texture change 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 6th Joint Workshop on Machine Perception and Robotics  2010年10月 

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    国名:日本国  

  • Local feature based human action recognition by SOM: a preliminary study 国際会議

    Yanli Ji, Atsushi Shimada, Rin-ichiro Taniguchi

    the 6th Joint Workshop on Machine Perception and Robotics  2010年10月 

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    国名:日本国  

  • Human Action Recognition by SOM considering the Probability of Spatio-temporal Features 国際会議

    Yanli Ji, Atsushi Shimada, Rin-ichiro Taniguchi

    the 17th international conference on Neural information processing  2010年11月 

     詳細を見る

    国名:オーストラリア連邦  

  • Early Recognition based on Co-occurrence of Gesture Patterns 国際会議

    Atsushi Shimada, Manabu Kawashima, Rin-ichiro Taniguchi

    the 17th international conference on Neural information processing  2010年11月 

     詳細を見る

    国名:オーストラリア連邦  

  • A Compact 3D Descriptor in ROI for Human Action Recognition 国際会議

    Yanli Ji, Atsushi Shimada, Rin-ichiro Taniguchi

    IEEE TENCON 2010  2010年11月 

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    国名:日本国  

  • Clickable Real World: Interaction with Real-World Landmarks Using Mobile Phone Camera 国際会議

    Naoyuki Abe, Wataru Oogami, Hajime Nagahara, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    IEEE TENCON 2010  2010年11月 

     詳細を見る

    国名:日本国  

  • Adaptive Background Modeling for Paused Object Regions 国際会議

    Atsushi Shimada, Satoshi Yoshinaga, Rin-ichiro Taniguchi

    enth International Workshop on Visual Surveillance 2010  2010年11月 

     詳細を見る

    国名:ニュージーランド  

  • Object Detection Using Local Difference Patterns 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    The Tenth Asian Conference on Computer Vision (ACCV2010)  2010年11月 

     詳細を見る

    国名:ニュージーランド  

  • Improvement of Early Recognition of Gesture Patterns based on Self-Organizing Map 国際会議

    Atsushi Shimada, Rin-ichiro Taniguchi

    the 11th International Symposium on Artificial Life and Robotics  2011年1月 

     詳細を見る

    国名:日本国  

  • 物体検出のための確率的背景テクスチャモデリング

    吉永 諭史, 島田 敬士, 長原 一, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2010-232)  2011年2月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • Adaptive template method for early recognition of gestures 国際会議

    Manabu Kawashima, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    17th Japan-Korea Joint Workshop on Frontiers of Computer Vision  2011年2月 

     詳細を見る

    国名:大韓民国  

  • 単眼・両眼を相補的に用いたSLAM

    古森 崇史, 長原 一, 島田 敬士, 谷口 倫一郎

    火の国情報シンポジウム  2011年3月 

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    会議種別:口頭発表(一般)  

    国名:日本国  

  • 多地点時空間センシング情報の可視化システム

    松井 紗弥佳, 大野 純弘, 島田 敬士, 長原 一, 谷口 倫一郎

    火の国情報シンポジウム  2011年3月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 局所領域における輝度変動を考慮した動的背景モデル

    吉永 諭史, 島田 敬士, 長原 一, 谷口 倫一郎

    情処全国大会  2011年3月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • MIRU2010若手プログラム報告

    玉木 徹, 植松 裕子, 近藤 一晃, 酒井 智弥, 島田 敬士, 出口 大輔, 山下 隆義

    信学技報パターン認識・メディア理解(PRMU2010-265)  2011年3月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 映像内の移動方向解析による指向性領域検出とそれに基づく移動モデル検出

    大野 純弘, 島田 敬士, 長原 一, 谷口 倫一郎

    第17回画像センシングシンポジウム(SSII2011)  2011年6月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • ハンドジェスチャ認識における手指形状の選定方法

    島田 敬士, 山下 隆義, 谷口 倫一郎

    第17回画像センシングシンポジウム(SSII2011)  2011年6月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • ランドマーク検出のためのWeb画像群からの共通画像特徴獲得

    島田 敬士, Vincent CHARVILLAT, 長原 一, 谷口 倫一郎

    画像の認識・理解シンポジウム2011  2011年7月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 位置情報とラベルの共起性に着目したランドマークアノテーション

    島田 敬士, Vincent CHARVILLAT, 長原 一, 谷口 倫一郎

    画像の認識・理解シンポジウム2011  2011年7月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 事例ベース背景モデリング

    島田 敬士, 長原 一, 谷口 倫一郎

    画像の認識・理解シンポジウム2011  2011年7月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • Hadoopによる大規模画像データの並列分散処理

    前野 一樹, 島田 敬士, 長原 一, 谷口 倫一郎

    画像の認識・理解シンポジウム2011  2011年7月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 言語圏情報に基づくランドマークアノテーション

    伊藤 孝史, 島田 敬士, 長原 一, 谷口 倫一郎

    電気関係学会九州支部連合大会  2011年9月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • ハンドジェスチャアプリケーションのための指検出

    王 妍蓉, 島田 敬士, 山下 隆義, 谷口 倫一郎

    電気関係学会九州支部連合大会  2011年9月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 事例ベース背景モデリングにおける画素特徴選択法

    野中 陽介, 島田 敬士, 長原 一, 谷口 倫一郎

    電気関係学会九州支部連合大会  2011年9月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • Kinectセンサを利用した動作の早期認識

    高 嘉泰, 島田 敬士, 長原 一, 谷口 倫一郎

    電気関係学会九州支部連合大会  2011年9月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 位置情報と画像構図を利用した画像アノテーションの精度向上に関する検討

    阿部 尚之, 島田 敬士, 長原 一, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2011-82)  2011年9月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • Landmark Annotation based on Geolocation and Image Composition 国際会議

    Naoyuki Abe, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 7th Joint Workshop on Machine Perception and Robotics  2011年10月 

     詳細を見る

    国名:中華人民共和国  

  • Global motion analysis based human-human interaction recognition with local features 国際会議

    Yanli Ji, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 7th Joint Workshop on Machine Perception and Robotics  2011年10月 

     詳細を見る

    国名:中華人民共和国  

  • Optical Flow based Activity Correlation Analysis in Multiple Non-overlapping Camera Views 国際会議

    Sumihiro Ohno, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 7th Joint Workshop on Machine Perception and Robotics  2011年10月 

     詳細を見る

    国名:中華人民共和国  

  • Geolocation based Image Annotation 国際会議

    Atsushi Shimada, Vincent CHARVILLAT, Hajime Nagahara, Rin-ichiro Taniguchi

    First Asian Conference on Patern Recognition(ACPR2011)  2011年10月 

     詳細を見る

    国名:中華人民共和国  

  • 撮影位置情報を利用した画像アノテーションに関する検討

    島田 敬士, Vincent Charvillat, 長原 一, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2010-113)  2011年11月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • ハンドジェスチャアプリケーションに有効な手の動き選定方法

    島田 敬士, 山下 隆義, 谷口 倫一郎

    ビジョン技術の実利用ワークショップ(ViEW2011)  2011年11月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 農作業自動記録のための農作業者位置計測

    川島 学, 島田 敬士, 長原 一, 谷口 倫一郎

    ビジョン技術の実利用ワークショップ(ViEW2011)  2011年11月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • A Map-Reduce Platform for Image Processing 国際会議

    Kazuki Maeno, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    IRIT - Kyushu University Workshop on Data Mining and Media Processing  2011年11月 

     詳細を見る

    国名:フランス共和国  

  • Geolocation and Composition based Image Screening for Landmark Annotation 国際会議

    Atsushi Shimada, Vincent CHARVILLAT, Hajime Nagahara, Rin-ichiro Taniguchi

    IRIT - Kyushu University Workshop on Data Mining and Media Processing  2011年11月 

     詳細を見る

    国名:フランス共和国  

  • Object Detection based on Statistical Local Feature 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    IRIT - Kyushu University Workshop on Data Mining and Media Processing  2011年11月 

     詳細を見る

    国名:フランス共和国  

  • Web画像から得られる共通画像特徴に基づく対象検出と追跡に関する検討

    島田 敬士, Vincent Charvillat, 長原 一, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2010-131)  2011年12月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 条件駆動型背景モデリング

    島田 敬士, 長原 一, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2011-136)  2011年12月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • 事例ベース背景モデルの性能評価

    野中 陽介, 島田 敬士, 長原 一, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2011-226)  2011年12月 

     詳細を見る

    会議種別:口頭発表(一般)  

    国名:日本国  

  • Hash based Early Recognition of Gesture Patterns 国際会議

    Yoshiyasu Ko, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 17th International Symposium on Artificial Life and Robotics  2012年1月 

     詳細を見る

    国名:日本国  

  • Human-human Interaction Recognition by Estimating the Action Contribution of Participants 国際会議

    Yanli Ji, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    the 18th Japan-Korea Joint Workshop on Frontiers of Computer Vision  2012年2月 

     詳細を見る

    国名:日本国  

  • Landmark Detection based on Common Visual Features in Web Images 国際会議

    Atsushi Shimada, Vincent Charvillat, Hajime Nagahara, Rin-ichiro Taniguchi

    the 18th Japan-Korea Joint Workshop on Frontiers of Computer Vision  2012年2月 

     詳細を見る

    国名:日本国  

  • User-Customizable Hand Gesture Interface for Controlling TV 国際会議

    Atsushi Shimada, Takayoshi Yamashita, Rin-ichiro Taniguchi

    the 18th Japan-Korea Joint Workshop on Frontiers of Computer Vision  2012年2月 

     詳細を見る

    国名:日本国  

  • HOWTO SELECT USEFUL HAND SHAPES FOR HAND GESTURE RECOGNITION SYSTEM 国際会議

    Atsushi Shimada, Takayoshi Yamashita, Rin-ichiro Taniguchi

    International Conference on Pattern Recognition Applications and Methods (ICPRAM)  2012年2月 

     詳細を見る

    国名:ポルトガル共和国  

  • Estimation of Electric Power Consumption of Individuals by Observing People's Activity 国際会議

    Atsushi Shimada, Shigeru Takano, Shigeaki Tagashira, Rin-ichiro Taniguchi, Hiroto Yasuura

    International Conference on Cyber-Physical Systems  2012年4月 

     詳細を見る

    国名:中華人民共和国  

  • 背景変動環境における事例ベース背景モデルの設計法

    野中陽介, 島田 敬士, 長原一, 谷口倫一郎

    情処研報コンピュータビジョンとイメージメディア(2012-CVIM-183)  2012年5月 

     詳細を見る

    国名:日本国  

  • 圃場設置カメラを利用した農作業者位置計測

    川島 学,馮 磊,島田 敬士,谷口 倫一郎

    農業情報学会2012年度年次大会  2012年5月 

     詳細を見る

    国名:日本国  

  • Evaluation Report of Integrated Background Modeling Based on Spatio-temporal Features 国際会議

    Yosuke Nonaka, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    IEEE Workshop on Change Detection in conjunction with CVPR 2012  2012年6月 

     詳細を見る

    国名:アメリカ合衆国  

  • カスタマイズ可能なハンドジェスチャインタフェース

    島田 敬士, 山下隆義, 谷口倫一郎

    第18回画像センシングシンポジウム(SSII2012)  2012年6月 

     詳細を見る

    国名:日本国  

  • 多様な背景変動環境における事例ベース背景モデルの設計とその評価

    野中 陽介, 島田 敬士, 長原 一, 谷口 倫一郎

    第15回画像の認識・理解シンポジウム(MIRU2012)  2012年8月 

     詳細を見る

    国名:日本国  

  • クリッカブル・リアルワールド モバイル端末による実世界情報検索システム

    伊藤 孝史, 島田 敬士, 長原 一, 谷口 倫一郎

    第15回画像の認識・理解シンポジウム(MIRU2012)  2012年8月 

     詳細を見る

    国名:日本国  

  • モーションセンサとカメラセンサを用いた動作の早期認識の検討

    高 嘉泰, 塩冶 智, 島田 敬士, 長原 一, 谷口 倫一郎

    第15回画像の認識・理解シンポジウム(MIRU2012)  2012年8月 

     詳細を見る

    国名:日本国  

  • ハッシュ探索に基づく動作の早期認識

    高 嘉泰, 島田 敬士, 長原 一, 谷口 倫一郎

    第15回画像の認識・理解シンポジウム(MIRU2012)  2012年8月 

     詳細を見る

    国名:日本国  

  • 過去と未来から現在を見る双方向型背景モデリング

    島田 敬士, 長原一, 谷口倫一郎

    第15回画像の認識・理解シンポジウム(MIRU2012)  2012年8月 

     詳細を見る

    国名:日本国  

  • Light Field Distortion特徴を用いた透明物体認識

    前野一樹, 長原一, 島田 敬士, 谷口倫一郎

    第15回画像の認識・理解シンポジウム(MIRU2012)  2012年8月 

     詳細を見る

    国名:日本国  

  • ジェスチャを入力とした映像検索インタフェースの検討

    塩冶 智, 島田 敬士, 長原 一, 谷口 倫一郎

    電気関係学会九州支部連合大会  2012年9月 

     詳細を見る

    国名:日本国  

  • 位置情報画像を利用した観光スポット間のリンク解析

    田代 浩平, 島田 敬士, 長原 一, 谷口 倫一郎

    電気関係学会九州支部連合大会  2012年9月 

     詳細を見る

    国名:日本国  

  • これまでのPRMUアルゴリズムコンテストを振り返って

    出口 大輔, 亀田 能成, 北原 格, 近藤 一晃, 島田 敬士, 日浦 慎作

    信学技報パターン認識・メディア理解(PRMU2012-45)  2012年9月 

     詳細を見る

    国名:日本国  

  • A Background Invariant Feature for Transparent Object Recognition 国際会議

    Kazuki Maeno, Hajime Nagahara, Atsushi Shimada, Rin-ichiro Taniguchi

    the 8th Joint Workshop on Machine Perception and Robotics  2012年10月 

     詳細を見る

    国名:日本国  

  • Subunit Based Hand Movement Recognition Using Dynamic Time Warping 国際会議

    Yanrung Wang, Atsushi Shimada, Takayoshi Yamashita, Rin-ichiro Taniguchi

    the 8th Joint Workshop on Machine Perception and Robotics  2012年10月 

     詳細を見る

    国名:日本国  

  • 動作を構成する共通サブユニットを利用したハンドジェスチャ認識

    王 妍蓉, 島田 敬士, 山下 隆義, 谷口 倫一郎

    信学技報パターン認識・メディア理解(PRMU2012-58)  2012年10月 

     詳細を見る

    国名:日本国  

  • Background Model Based on Statistical Local Difference Pattern 国際会議

    Satoshi Yoshinaga, Atsushi Shimada, Hajime Nagahara, and Rin-ichiro Taniguchi

    1st ACCV Workshop on Background Models Challenge  2012年11月 

     詳細を見る

    国名:大韓民国  

  • Cooking gesture recognition using local feature and depth image 国際会議

    Yanli Ji, Yoshiyasu Ko, Atsushi Shimada, Hajime Nagahara, Rin-ichiro Taniguchi

    4th Workshop on Multimedia for Cooking and Eating Activities : CEA2012  2012年11月 

     詳細を見る

    国名:日本国  

  • 順方向解析と逆方向解析に基づく照明変動 に頑健な背景モデル

    島田 敬士, 長原 一, 谷口 倫一郎

    ビジョン技術の実利用ワークショップ ViEW2012  2012年12月 

     詳細を見る

    国名:日本国  

▼全件表示

MISC

  • MIRU2014 若手プログラム実施報告と次回の企画紹介

    島田 敬士, 浦西 友樹, 上瀧 剛, 柴田 剛志, 道満 恵介, 豊浦 正広, 柳川 由紀子

    電子情報通信学会 情報・システムソサイエティ誌   2016年2月

     詳細を見る

    記述言語:日本語  

  • 部分動作の共有化に基づくハンドジェスチャ認識法

    島田 敬士, 谷口 倫一郎, 山下 隆義

    画像ラボ   2013年8月

     詳細を見る

    記述言語:日本語   掲載種別:記事・総説・解説・論説等(学術雑誌)  

  • PRMUアルゴリズムコンテスト

    飯山 将晃, 島田 敬士, 大山 航

    電子情報通信学会 情報・システムソサイエティ誌   2013年5月

     詳細を見る

    記述言語:日本語  

  • 高性能かつ低コストな背景モデル構築法

    島田 敬士, 谷口 倫一郎

    画像ラボ   2013年2月

     詳細を見る

    記述言語:日本語   掲載種別:記事・総説・解説・論説等(学術雑誌)  

  • 集合知を利用した実世界ランドマーク検出

    島田 敬士, 谷口 倫一郎

    画像ラボ   2011年11月

     詳細を見る

    記述言語:日本語   掲載種別:記事・総説・解説・論説等(学術雑誌)  

  • センシングウェブにおけるセンサ情報の構造化 --複数センサを用いた広域対象追跡--

    谷口 倫一郎, 島田 敬士, 有田 大作

    画像ラボ   2009年10月

     詳細を見る

    記述言語:日本語   掲載種別:記事・総説・解説・論説等(学術雑誌)  

  • 動的背景モデルによる屋外映像からの実時間移動物体抽出--混合ガウス背景モデルにおける適応的な分布数の増減法--

    島田 敬士, 谷口 倫一郎, 有田 大作

    画像ラボ   2008年2月

     詳細を見る

    記述言語:日本語   掲載種別:記事・総説・解説・論説等(学術雑誌)  

▼全件表示

Works(作品等)

  • インタラクション動作データベース

    Ji Yanli,島田 敬士

    2012年9月

     詳細を見る

    動作認識に関する研究においてインタラクションを行っているシーンを評価するためのデータセットを公開している.

  • 移動物体検出評価用GroundTruth

    田中 達也, 野田 周平, 吉永 諭史, 阿部 尚之, 大神 渉, 大野 純弘, 島田 敬士, 谷口 倫一郎

    2008年3月

     詳細を見る

    映像サーベイランスにおいて,カメラに写った移動体を画像処理でどれだけ的確に抽出できるかを評価するためのGroundTruthデータを作成し,公開している.

産業財産権

特許権   出願件数: 10件   登録件数: 3件
実用新案権   出願件数: 0件   登録件数: 0件
意匠権   出願件数: 0件   登録件数: 0件
商標権   出願件数: 0件   登録件数: 0件

所属学協会

  • 電子情報通信学会

  • IEEE

  • 情報処理学会

委員歴

  • 情報処理学会 教育学習支援情報システム(CLE)研究会   主査   国内

    2022年4月 - 2026年3月   

  • 一般社団法人 エビデンス駆動型教育研究協議会   理事   国内

    2021年5月 - 現在   

  • 情報処理学会 ユビキタスコンピューティングシステム研究会   運営委員   国内

    2019年4月 - 現在   

  • 情報処理学会 教育学習支援情報システム(CLE)研究会   運営委員   国内

    2019年4月 - 現在   

  • 情報処理学会 コンピュータビジョンとイメージメディア研究会   運営委員   国内

    2015年5月 - 2019年5月   

  • 電子情報通信学会パターン認識・メディア理解研究会   専門委員   国内

    2015年5月 - 2017年5月   

  • 電子情報通信学会パターン認識・メディア理解研究会   幹事   国内

    2014年5月 - 2015年5月   

  • 電子情報通信学会パターン認識・メディア理解研究会   幹事補佐   国内

    2013年5月 - 2014年5月   

  • 電子情報通信学会パターン認識・メディア理解研究会   専門委員   国内

    2011年5月 - 2013年5月   

▼全件表示

学術貢献活動

  • Program Committee 国際学術貢献

    EDM2024  ( その他 ) 2024年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    ABC2024 Activity and Behavior Computing  ( その他 ) 2024年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    AIED2024  ( その他 ) 2024年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Organizing Committee 国際学術貢献

    LAK24 Data Challenge, Organizing Committee  ( Germany ) 2024年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • Workshop Chair 国際学術貢献

    International Learning Analytics and Knowledge Conference(LAK-24)  ( その他 ) 2024年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    International Learning Analytics and Knowledge Conference(LAK-24)  ( その他 ) 2024年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • プログラム副委員長

    画像センシングシンポジウム2023  ( パシフィコ横浜 ) 2023年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    ABC2023 Activity and Behavior Computing  ( その他 ) 2023年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    International Learning Analytics and Knowledge Conference(LAK-23)  ( その他 ) 2023年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • 学術論文等の審査

    役割:査読

    2023年

     詳細を見る

    種別:査読等 

    外国語雑誌 査読論文数:2

    日本語雑誌 査読論文数:1

    国際会議録 査読論文数:22

  • チュートリアル部会部会 顧問

    画像センシングシンポジウム2022  ( パシフィコ横浜 ) 2022年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • プログラム委員

    DICOMO2022  ( Japan ) 2022年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    Intelligent Textbooks 2022  ( その他 ) 2022年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    ABC2022 Activity and Behavior Computing  ( その他 ) 2022年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    International Learning Analytics and Knowledge Conference(LAK-22)  ( その他 ) 2022年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • 学術論文等の審査

    役割:査読

    2022年

     詳細を見る

    種別:査読等 

    外国語雑誌 査読論文数:4

    日本語雑誌 査読論文数:0

    国際会議録 査読論文数:30

    国内会議録 査読論文数:18

  • インタラクティブ・デモセッションチェア

    画像の認識・理解シンポジウムMIRU2021  ( Japan ) 2021年7月

     詳細を見る

    種別:大会・シンポジウム等 

  • チュートリアル部会部会長

    画像センシングシンポジウム2021  ( パシフィコ横浜 ) 2021年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    International Learning Analytics and Knowledge Conference(LAK-21)  ( Germany ) 2021年4月

     詳細を見る

    種別:大会・シンポジウム等 

  • 学術論文等の審査

    役割:査読

    2021年

     詳細を見る

    種別:査読等 

    外国語雑誌 査読論文数:1

    日本語雑誌 査読論文数:2

    国際会議録 査読論文数:26

    国内会議録 査読論文数:14

  • Program Committee 国際学術貢献

    ABC2020 Activity and Behavior Computing  ( Japan ) 2020年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • チュートリアル部会副部会長

    画像センシングシンポジウム2020  ( パシフィコ横浜 ) 2020年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Organizing Committee 国際学術貢献

    LAK20 Data Challenge, Organizing Committee  ( Germany ) 2020年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    International Learning Analytics and Knowledge Conference(LAK-20)  ( Germany ) 2020年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • 学術論文等の審査

    役割:査読

    2020年

     詳細を見る

    種別:査読等 

    外国語雑誌 査読論文数:11

    日本語雑誌 査読論文数:3

    国際会議録 査読論文数:24

    国内会議録 査読論文数:6

  • Program Committee 国際学術貢献

    ABC2019 Activity and Behavior Computing  ( UnitedStatesofAmerica ) 2019年5月 - 2019年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    International Learning Analytics and Knowledge Conference(LAK-19)  ( UnitedStatesofAmerica ) 2019年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • Organizing Committee 国際学術貢献

    LAK19 Data Challenge, Organizing Committee  ( UnitedStatesofAmerica ) 2019年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • 学術論文等の審査

    役割:査読

    2019年

     詳細を見る

    種別:査読等 

    外国語雑誌 査読論文数:13

    日本語雑誌 査読論文数:3

    国際会議録 査読論文数:33

    国内会議録 査読論文数:0

  • Program Committee 国際学術貢献

    2018 Asian Conference on Computer Vision (ACCV 2018)  ( Australia ) 2018年12月

     詳細を見る

    種別:大会・シンポジウム等 

  • Local Organizing Committee 国際学術貢献

    The 12th International Workshop on Information Search, Integration, and Personalization (ISIP2018)  ( Japan ) 2018年5月

     詳細を見る

    種別:大会・シンポジウム等 

  • 学術論文等の審査

    役割:査読

    2018年

     詳細を見る

    種別:査読等 

    外国語雑誌 査読論文数:14

    日本語雑誌 査読論文数:2

    国際会議録 査読論文数:16

    国内会議録 査読論文数:0

  • Program Committee 国際学術貢献

    The 4th IAPR Asian Conference on Pattern Recognition (ACPR2017)  ( China ) 2017年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    10th International Conference on Educational Data Mining (EDM’17)  ( China ) 2017年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • 電子情報通信学会

    2017年5月 - 2019年5月

     詳細を見る

    種別:学会・研究会等 

  • Program Committee 国際学術貢献

    IEEE Winter Conference on Applications of Computer Vision (WACV 2017)  ( UnitedStatesofAmerica ) 2017年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    The Korea-Japan joint workshop on Frontiers of Computer Vision (FCV)  ( Korea ) 2017年2月

     詳細を見る

    種別:大会・シンポジウム等 

  • 学術論文等の審査

    役割:査読

    2017年

     詳細を見る

    種別:査読等 

    外国語雑誌 査読論文数:10

    日本語雑誌 査読論文数:2

    国際会議録 査読論文数:17

    国内会議録 査読論文数:6

  • Technical Committee 国際学術貢献

    International Conference on Pattern Recognition (ICPR 2016)  ( Mexico ) 2016年12月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    Asian Conference on Computer Vision (ACCV 2016)  ( Taiwan ) 2016年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    IEEE International Conference on Advanced Video and Signal-Based Surveillance (AVSS) 2016  ( UnitedStatesofAmerica ) 2016年8月

     詳細を見る

    種別:大会・シンポジウム等 

  • プログラム副委員長

    画像の認識・理解シンポジウム MIRU2016  ( Japan ) 2016年8月

     詳細を見る

    種別:大会・シンポジウム等 

  • Publications Chair 国際学術貢献

    The Korea-Japan joint workshop on Frontiers of Computer Vision (FCV)  ( Japan ) 2016年2月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    The 1st workshop on e-Book-based Educational Big Data for Enhancing Teaching and Learning  ( China ) 2015年11月 - 2015年12月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship) 国際学術貢献

    The 1st workshop on e-Book-based Educational Big Data for Enhancing Teaching and Learning  ( China ) 2015年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    The 3rd IAPR Asian Conference on Pattern Recognition (ACPR2015)  ( Malaysia ) 2015年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • Tracking Competition Committee 国際学術貢献

    ISMAR 2015 Tracking Competition  ( Japan ) 2015年9月 - 2015年10月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    IEEE International Conference on Advanced Video and Signal-Based Surveillance (AVSS) 2015  ( Germany ) 2015年8月

     詳細を見る

    種別:大会・シンポジウム等 

  • MIRU Conference Editorial Board (CEB)

    画像の認識・理解シンポジウム MIRU2015  ( Japan ) 2015年7月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 東北大学 ) 2015年2月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship) 国際学術貢献

    21st Japan-Korea Joint Workshop on Frontiers of Computer Vision  ( Mokpo Korea ) 2015年1月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 奈良先端大 ) 2015年1月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 九州大学 ) 2014年12月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    2014 Asian Conference on Computer Vision (ACCV 2014)  ( Singapore Singapore ) 2014年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • Technical Committee 国際学術貢献

    22nd International Conference on Pattern Recognition (ICPR 2014)  ( Sweden ) 2014年8月

     詳細を見る

    種別:大会・シンポジウム等 

  • 若手プログラム委員長

    画像の認識・理解シンポジウム MIRU2014  ( Japan ) 2014年7月 - 2014年8月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 名古屋工業大学 ) 2014年5月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 早稲田大学 ) 2014年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 福岡大学 ) 2014年2月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 大阪大学 ) 2014年1月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 三重大学 ) 2013年12月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    The 9th International Conference on Signal-Image Technology & Internet-Based Systems  ( Kyoto Japan ) 2013年12月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    The 2nd IAPR Asian Conference on Pattern Recognition (ACPR2013)  ( Okinawa Japan ) 2013年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    The 20th International Conference on Neural Information Processing  ( Daegu Korea ) 2013年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 幕張メッセ国際会議場 ) 2013年10月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 鳥取大学 ) 2013年9月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    IEEE International Conference on Advanced Video and Signal-Based Surveillance (AVSS) 2013  ( Kraków ) 2013年8月

     詳細を見る

    種別:大会・シンポジウム等 

  • デモセッション部会長

    画像センシングシンポジウム2013  ( パシフィコ横浜 ) 2013年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( NTT武蔵野研究開発センタ ) 2013年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Publicity Chair 国際学術貢献

    11th International Conference on Quality Control by Artificial Vision  ( Fukuoka Japan ) 2013年5月 - 2013年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 電気通信大学 ) 2013年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    IEEE Workshop on Applications of Computer Vision (WACV 2013)  ( Florida UnitedStatesofAmerica ) 2013年1月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    2013 International Symposium on Information Science and Electrical Engineering  ( Fukuoka Japan ) 2013年1月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship) 国際学術貢献

    2013 International Symposium on Information Science and Electrical Engineering  ( 福岡 ) 2013年1月

     詳細を見る

    種別:大会・シンポジウム等 

  • Technical Program Committee 国際学術貢献

    the 21th International Conference on Pattern Recognition (ICPR 2012)  ( Tsukuba Japan ) 2012年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship) 国際学術貢献

    The 8th Joint Workshop on Machine Perception and Robotics (MPR2012)  ( 福岡 ) 2012年10月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    第65回電気関係学会九州支部連合大会  ( 長崎大学 ) 2012年9月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    第11回情報科学技術フォーラム  ( 法政大学 ) 2012年9月

     詳細を見る

    種別:大会・シンポジウム等 

  • 実行副委員長

    電子情報通信学会PRMU研究会アルゴリズムコンテスト  ( Japan ) 2012年9月

     詳細を見る

    種別:大会・シンポジウム等 

  • 組織副委員長

    画像の認識・理解シンポジウム MIRU2012  ( Japan ) 2012年8月

     詳細を見る

    種別:大会・シンポジウム等 

  • 出版部会委員

    画像センシングシンポジウム2012  ( パシフィコ横浜 ) 2012年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    IRIT - Kyushu University Workshop on Data Mining and Media Processing  ( Toulouse France ) 2011年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • オーガナイザ 国際学術貢献

    ICPR 2012 Contest Kitchen Scene Context based Gesture Recognition  ( Japan ) 2011年11月 - 2012年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • 審査委員

    電子情報通信学会PRMU研究会アルゴリズムコンテスト  ( Japan ) 2011年8月

     詳細を見る

    種別:大会・シンポジウム等 

  • 出版部会長

    画像センシングシンポジウム2011  ( パシフィコ横浜 ) 2011年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    火の国情報シンポジウム  ( 福岡大学 ) 2011年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship) 国際学術貢献

    17th International Conference on Neural Information Processing  ( Sydney Australia ) 2010年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    the second China, Japan and Korea Joint Workshop on Pattern Recognition (CJKPR2010)  ( Fukuoka Japan ) 2010年11月

     詳細を見る

    種別:大会・シンポジウム等 

  • Organizing Committee 国際学術貢献

    The 6th Joint Workshop on Machine Perception and Robotics (MPR2010)  ( Fukuoka Japan ) 2010年10月

     詳細を見る

    種別:大会・シンポジウム等 

  • Technical Program Committee 国際学術貢献

    the 20th International Conference on Pattern Recognition (ICPR 2010)  ( Istanbul Convention & Exhibition Centre Turkey ) 2010年8月

     詳細を見る

    種別:大会・シンポジウム等 

  • 若手プログラム実行委員

    画像の認識・理解シンポジウム MIRU2010  ( 釧路市観光国際交流センター ) 2010年7月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee Member 国際学術貢献

    The First International Workshop on Human Behavior Sensing (HBS2010)  ( Kassel Germany ) 2010年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • 出版部会副部会長

    画像センシングシンポジウム2010  ( パシフィコ横浜 ) 2010年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • 査読委員

    画像の認識・理解シンポジウム MIRU2009  ( くにびきメッセ ) 2009年7月

     詳細を見る

    種別:大会・シンポジウム等 

  • 出版部会委員

    画像センシングシンポジウム2009  ( パシフィコ横浜 ) 2009年6月

     詳細を見る

    種別:大会・シンポジウム等 

  • Publication Chair 国際学術貢献

    The 3rd Pacific-Rim Symposium on Image and Video Technology (PSIVT2009)  ( National Center of Sciences in Tokyo Japan ) 2009年1月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会総合大会  ( 北九州学研都市 ) 2008年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • 座長(Chairmanship)

    電子情報通信学会パターン認識・メディア理解(PRMU)研究会  ( 北陸先端大 ) 2008年3月

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    Intelligent Textbooks 2021  ( その他 )

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    ABC2021 Activity and Behavior Computing  ( その他 )

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    種別:大会・シンポジウム等 

  • プログラム委員

    DICOMO2020  ( Japan )

     詳細を見る

    種別:大会・シンポジウム等 

  • プログラム委員

    DICOMO2021  ( Japan )

     詳細を見る

    種別:大会・シンポジウム等 

  • プログラム副委員長

    SSS2020  ( Japan )

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    IEEE TALE2020  ( Japan )

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    Intelligent Textbooks 2019  ( その他 )

     詳細を見る

    種別:大会・シンポジウム等 

  • Program Committee 国際学術貢献

    Intelligent Textbooks 2020  ( その他 )

     詳細を見る

    種別:大会・シンポジウム等 

▼全件表示

共同研究・競争的資金等の研究課題

  • 学習活動の適応的支援に関する研究

    2023年

    大阪大学大学生の学びと心の健康支援プロジェクト

      詳細を見る

    担当区分:研究代表者  資金種別:受託研究

  • 教育大航海時代の羅針盤:学習分析の信頼基盤ReLAXの創出

    2022年 - 2027年

    JST戦略的創造研究推進事業(CREST)

      詳細を見る

    担当区分:研究代表者  資金種別:受託研究

  • データ駆動型教育のための高密度学習分析基盤の構築と評価

    研究課題/領域番号:22H00551  2022年 - 2025年

    日本学術振興会  科学研究費助成事業  基盤研究(A)

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • ミクロな学習分析をマクロに俯瞰する学習眺望マップの開発と教育学習支援への展開

    研究課題/領域番号:22K19835  2022年 - 2024年

    日本学術振興会  科学研究費助成事業  挑戦的研究(萌芽)

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • 画像処理・画像認識技術の研究

    2019年4月 - 2021年3月

    共同研究

      詳細を見る

    担当区分:研究代表者  資金種別:その他産学連携による資金

  • 個別・協調学習の往還を支援するインタラクション高度化基盤の開発と評価

    研究課題/領域番号:19H01716  2019年 - 2022年

    日本学術振興会  科学研究費助成事業  基盤研究(B)

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • 学習者の行動観測に基づく緻密なラーニングアナリティクス・ループの構築

    研究課題/領域番号:19H04226  2019年 - 2022年

    日本学術振興会  科学研究費助成事業  基盤研究(B)

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • 持続可能な学習者主体型教育を実現する学習分析基盤の構築

    2019年 - 2021年

    AIP加速課題

      詳細を見る

    担当区分:研究代表者  資金種別:受託研究

  • 次世代教育支援のための実時間学習解析に基づく双方向型協働空間の構築と評価

    研究課題/領域番号:18H04125  2018年 - 2021年

    日本学術振興会  科学研究費助成事業  基盤研究(A)

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • 作物栽培技術学習のための多元センシングに基づく作物栽培知識マップの形成

    研究課題/領域番号:18H04117  2018年 - 2020年

    日本学術振興会  科学研究費助成事業  基盤研究(A)

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • キャンパスライフセンシングに基づく個人適応型学習教材推薦

    2018年 - 2019年

    大阪大学ライフデザイン・イノベーション研究拠点公募研究グランドチャレンジ研究

      詳細を見る

    担当区分:研究代表者  資金種別:受託研究

  • 深層学習を使用した太陽光発電所のモジュールの故障箇所検知

    2017年3月 - 2018年9月

    共同研究

      詳細を見る

    担当区分:研究代表者  資金種別:その他産学連携による資金

  • 学術研究者支援

    2017年

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    資金種別:寄附金

  • 教育ビッグデータを用いた教育・学習支援のためのクラウド情報基盤の研究

    研究課題/領域番号:16H06304  2016年 - 2020年

    日本学術振興会  科学研究費助成事業  基盤研究(S)

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • グループ学習の形成的評価のための実世界活動センシング技術の開発

    研究課題/領域番号:16K12786  2016年 - 2018年

    科学研究費助成事業  挑戦的萌芽研究

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • 時空間粒度の異なる教育ビッグデータの非同期ストリーム処理基盤の構築

    2015年10月 - 2019年3月

    九州大学 

      詳細を見る

    担当区分:研究代表者 

  • 散策行動の履歴からユーザーの趣味趣向を把握し、場所ごとに適切な情報を表示する為の研究

    2015年5月 - 2024年4月

    共同研究

      詳細を見る

    担当区分:研究代表者  資金種別:その他産学連携による資金

  • 時空間粒度の異なる教育ビッグデータの非同期ストリーム処理基盤の構築

    2015年 - 2018年

    戦略的創造研究推進事業 (文部科学省)

      詳細を見る

    担当区分:研究代表者  資金種別:受託研究

  • 光線群計測に基づく実世界センシングのための選択的注視カメラの開発

    研究課題/領域番号:15K12066  2015年 - 2017年

    科学研究費助成事業  挑戦的萌芽研究

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • 次世代農業支援のための高機能センシング技術の開発

    研究課題/領域番号:15H01695  2015年 - 2017年

    日本学術振興会  科学研究費助成事業  基盤研究(A)

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • プロアクションとリアクションに基づくウェアラブル時代のユーザインタフェース開発

    研究課題/領域番号:15H01621  2015年 - 2016年

    日本学術振興会・文部科学省  科学研究費助成事業  新学術領域研究

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • ビッグデータの教育分野における利活用アプリケーションの研究開発

    2014年8月 - 2017年3月

    九州大学 

      詳細を見る

    担当区分:研究分担者 

  • ユビキタス協調学習支援のための知識アウェアネスレンズに関する研究

    研究課題/領域番号:26560122  2014年 - 2016年

    科学研究費助成事業  挑戦的萌芽研究

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • ソーシャル・ビッグデータ利活用アプリケーションの研究開発 副題:ビッグデータの教育分野における利活用アプリケーションの研究開発

    2014年 - 2016年

    情報通信研究機構(NICT) ソーシャル・ビッグデータ利活用・基盤技術の研究開発 課題A

      詳細を見る

    担当区分:研究分担者  資金種別:受託研究

  • ジェスチャー認識技術の高精度化

    2013年10月 - 2014年8月

    共同研究

      詳細を見る

    担当区分:研究代表者  資金種別:その他産学連携による資金

  • ライトフィールドビジョン -画像理解のためのコンピュテーショナルフォトグラフィ-

    2013年 - 2016年

    日本学術振興会  科学研究費助成事業  基盤研究(A)

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • 選択的注視センシング

    研究課題/領域番号:25540072  2013年 - 2014年

    科学研究費助成事業  挑戦的萌芽研究

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • ヒューマンクラウドセンシングによるユーザ参加型実世界リアルタイム情報検索技術の研究開発

    2013年

    戦略的情報通信研究開発推進事業(SCOPE) 若手ICT研究者等育成型研究開発(フェーズⅠ)

      詳細を見る

    担当区分:研究代表者  資金種別:受託研究

  • 社会システム・サービス最適化のためのサイバーフィジカルIT統合基盤の研究

    2012年10月 - 2017年3月

    国立情報学研究所 

      詳細を見る

    担当区分:研究分担者 

  • 物体追跡技術:1つもしくは複数カメラによる移動物体の検出と追跡

    2012年7月 - 2013年3月

    共同研究

      詳細を見る

    担当区分:研究分担者  資金種別:その他産学連携による資金

  • ジェスチャー認識技術の高精度化

    2012年3月 - 2013年8月

    共同研究

      詳細を見る

    担当区分:研究代表者  資金種別:その他産学連携による資金

  • 実社会の「今」を切り取るプロキシ型情報収集機構に関する研究

    2012年 - 2014年

    日本学術振興会  科学研究費助成事業  基盤研究(B)

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • 散策行動における意思決定アフェクタの可視化に関する研究

    研究課題/領域番号:24120512  2012年 - 2013年

    日本学術振興会・文部科学省  科学研究費助成事業  新学術領域研究

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • ライトフィールド計測に基づく選択的注視センシング

    2012年

    助教支援研究資金補助

      詳細を見る

    担当区分:研究代表者  資金種別:学内資金・基金等

  • 物体追跡技術:1つもしくは複数カメラによる移動物体の検出と追跡

    2011年7月 - 2012年3月

    共同研究

      詳細を見る

    担当区分:研究分担者  資金種別:その他産学連携による資金

  • 一人称と三人称センシングによる行動様式獲得とそれに基づく動作の早期認識

    研究課題/領域番号:23680018  2011年 - 2014年

    科学研究費助成事業  若手研究(A)

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • 条件駆動型背景モデリングに基づく高性能かつ低コストな物体検出技術

    2011年 - 2012年

    研究成果最適展開支援プログラム A-STEP

      詳細を見る

    担当区分:研究代表者  資金種別:受託研究

  • ライトフィールドビジョンによる透明・鏡面反射物体の認識

    2011年

    九州大学教育研究プログラム・研究拠点形成プロジェクト

      詳細を見る

    担当区分:研究分担者  資金種別:学内資金・基金等

  • ジェスチャー認識技術

    2010年12月 - 2014年8月

    九州大学(日本) 

      詳細を見る

    担当区分:研究代表者 

    ジェスチャー認識技術

  • ジェスチャー認識技術

    2010年12月 - 2012年3月

    共同研究

      詳細を見る

    担当区分:研究代表者  資金種別:その他産学連携による資金

  • 物体追跡技術:1つもしくは複数カメラによる移動物体の検出と追跡

    2010年5月 - 2011年3月

    共同研究

      詳細を見る

    担当区分:研究分担者  資金種別:その他産学連携による資金

  • 農家の作業技術 の数値化および データマイニング手法の開発

    2010年5月 - 2005年3月

    九州大学(日本) 

      詳細を見る

    担当区分:研究分担者 

    農家の作業技術の数値化およびデータマイニング手法の研究開発を行う.

  • 研究助成

    2010年

      詳細を見る

    資金種別:寄附金

  • 物体追跡技術:1つもしくは複数カメラによる移動物体の検出と追跡

    2009年4月 - 2010年3月

    共同研究

      詳細を見る

    担当区分:研究分担者  資金種別:その他産学連携による資金

  • 協調動作空間における動作の時空間共起性に着目した早期認識に関する研究

    研究課題/領域番号:21700200  2009年 - 2010年

    科学研究費助成事業  若手研究(B)

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • 広域分散配置されたセンサ群による物体追跡システムの開発

    2009年

    シーズ発掘試験

      詳細を見る

    担当区分:研究代表者  資金種別:受託研究

  • クリッカブル・リアルワールド:モバイル端末を利用した実世界インタラクション

    2009年

    助教支援研究資金補助

      詳細を見る

    担当区分:研究代表者  資金種別:学内資金・基金等

  • 物体追跡技術

    2008年1月 - 2012年3月

    九州大学(日本) 

      詳細を見る

    担当区分:研究分担者 

    1つもしくは複数カメラによる移動物体の検出と追跡

  • 物体追跡技術:1つもしくは複数カメラによる移動物体の検出と追跡

    2008年1月 - 2009年3月

    共同研究

      詳細を見る

    担当区分:研究分担者  資金種別:その他産学連携による資金

  • 多人数参加型サイバージオラマ自動生成・提示システム

    2008年 - 2009年

    日本学術振興会  科学研究費助成事業  基盤研究(C)

      詳細を見る

    担当区分:研究分担者  資金種別:科研費

  • 国際交流助成

    2008年

      詳細を見る

    資金種別:寄附金

  • 科学技術連携施策群の効果的・効率的な推進 センサ情報の社会利用のためのコンテンツ化

    2007年9月 - 2010年3月

    京都大学(日本) 

      詳細を見る

    担当区分:研究分担者 

    センサ情報のコンテンツ化のための情報システム技術,プライバシ情報管理のためのパターン処理技術,コンテンツの構造化・提示のためのメディア応用技術を開発する.

  • センサ情報の社会利用のためのコンテンツ化

    2007年 - 2009年

    科学技術振興調整費 (文部科学省)

      詳細を見る

    担当区分:研究分担者  資金種別:受託研究

  • 時空間伸縮可能な逐次的自己組織化写像に関する研究と実時間人体姿勢計測への応用

    研究課題/領域番号:19800028  2007年 - 2008年

    科学研究費助成事業  若手研究(スタートアップ)

      詳細を見る

    担当区分:研究代表者  資金種別:科研費

  • 工学研究奨励援助, 長期記憶と短期記憶による背景モデルの時空間統合に関する研究

    2007年

      詳細を見る

    資金種別:寄附金

  • 自律型画像認識モデルのための初期・中間・上位視覚に関する研究

    2006年

    21世紀COEプログラム若手研究者助成

      詳細を見る

    担当区分:研究代表者  資金種別:学内資金・基金等

  • 遠隔講義受講者のためのアクティブな講義映像生成システムの開発

    2005年

    IPA 2005年度未踏ソフトウェア創造事業(未踏ユース)

      詳細を見る

    担当区分:研究分担者  資金種別:受託研究

  • 画像認識のための汎化能力と分化能力を兼ね備えた人工神経回路網に関する研究

    2005年

    21世紀COEプログラム若手研究者助成

      詳細を見る

    担当区分:研究代表者  資金種別:学内資金・基金等

  • 人間の第六感を模倣した夢見る計算機の開発

    2004年

    IPA 2004年度未踏ソフトウェア創造事業(未踏ユース)

      詳細を見る

    担当区分:研究代表者  資金種別:受託研究

  • 遠隔講義支援システムのための教師の意図情報獲得に関する研究

    2003年

    21世紀COEプログラム若手研究者助成

      詳細を見る

    担当区分:研究代表者  資金種別:学内資金・基金等

▼全件表示

教育活動概要

  • 教育活動
      学部の情報課目関連の教育を行っている.
      大学院の情報課目関連の教育を行っている.
      大学院の研究の監督・指導等を行っている.

担当授業科目

  • パターン認識

    2024年6月 - 2024年8月   夏学期

  • ディジタル信号処理Ⅱ

    2024年6月 - 2024年8月   夏学期

  • ディジタル信号処理Ⅰ

    2024年4月 - 2024年6月   春学期

  • プログラミング論I

    2024年4月 - 2024年6月   春学期

  • パターン認識

    2023年6月 - 2023年8月   夏学期

  • ディジタル信号処理Ⅱ

    2023年6月 - 2023年8月   夏学期

  • ディジタル信号処理Ⅰ

    2023年4月 - 2023年6月   春学期

  • プログラミング論I

    2023年4月 - 2023年6月   春学期

  • パターン認識

    2022年6月 - 2022年8月   夏学期

  • ディジタル信号処理

    2022年4月 - 2022年9月   前期

  • プログラミング論I

    2022年4月 - 2022年6月   春学期

  • パターン認識

    2021年6月 - 2021年8月   夏学期

  • ディジタル信号処理

    2021年4月 - 2021年9月   前期

  • プログラミング論I

    2021年4月 - 2021年6月   春学期

  • ディジタル信号処理

    2020年4月 - 2020年9月   前期

  • プログラム設計論特論

    2020年4月 - 2020年9月   前期

  • プログラミング論I

    2020年4月 - 2020年6月   春学期

  • プログラム設計論特論

    2019年4月 - 2019年9月   前期

  • 電気情報工学実験Ⅰ(分散ロボットプロジェクト演習)

    2019年4月 - 2019年9月   前期

  • サイバーセキュリティ基礎論(火4)

    2019年4月 - 2019年6月   春学期

  • プログラミング論I

    2019年4月 - 2019年6月   春学期

  • サイバーセキュリティ基礎論(火3)

    2019年4月 - 2019年6月   春学期

  • プログラム設計論特論

    2018年4月 - 2018年9月   前期

  • 電気情報工学実験Ⅰ(分散ロボットプロジェクト演習)

    2018年4月 - 2018年9月   前期

  • サイバーセキュリティ基礎論(火4)

    2018年4月 - 2018年6月   春学期

  • プログラミング論I

    2018年4月 - 2018年6月   春学期

  • サイバーセキュリティ基礎論(火3)

    2018年4月 - 2018年6月   春学期

  • プログラム設計論特論

    2017年4月 - 2017年9月   前期

  • 電気情報工学実験Ⅰ(分散ロボットプロジェクト演習)

    2017年4月 - 2017年9月   前期

  • サイバーセキュリティ基礎論(月4)

    2017年4月 - 2017年6月   春学期

  • プログラミング論I

    2017年4月 - 2017年6月   春学期

  • サイバーセキュリティ基礎論(月3)

    2017年4月 - 2017年6月   春学期

  • 情報を科学する(クォーター前半・水)

    2016年10月 - 2017年3月   後期

  • 情報を科学する(クォーター前半・金)

    2016年10月 - 2017年3月   後期

  • 基幹教育セミナー(月5)

    2016年4月 - 2016年9月   前期

  • プログラム設計論特論

    2016年4月 - 2016年9月   前期

  • 情報を科学する(クォーター前半・金)

    2016年4月 - 2016年9月   前期

  • 情報を科学する(クォーター前半・水)

    2016年4月 - 2016年9月   前期

  • 課題協学科目

    2016年4月 - 2016年9月   前期

  • 基幹教育セミナー(火5)

    2016年4月 - 2016年9月   前期

  • 高度プログラミング

    2015年10月 - 2016年3月   後期

  • 基幹教育セミナー(月5)

    2015年4月 - 2015年9月   前期

  • プログラム設計論特論

    2015年4月 - 2015年9月   前期

  • 情報を科学する(クォーター前半・金)

    2015年4月 - 2015年9月   前期

  • 情報を科学する(クォーター前半・水)

    2015年4月 - 2015年9月   前期

  • 課題協学科目

    2015年4月 - 2015年9月   前期

  • 基幹教育セミナー(火5)

    2015年4月 - 2015年9月   前期

  • 情報を科学する(クォーター前半)

    2014年10月 - 2015年3月   後期

  • 情報を科学する(クォーター後半)

    2014年10月 - 2015年3月   後期

  • 基幹教育セミナー(月5)

    2014年4月 - 2014年9月   前期

  • プログラム設計論特論

    2014年4月 - 2014年9月   前期

  • 情報を科学する(クォーター後半)

    2014年4月 - 2014年9月   前期

  • 情報を科学する(クォーター前半)

    2014年4月 - 2014年9月   前期

  • 課題協学科目

    2014年4月 - 2014年9月   前期

  • 基幹教育セミナー(火5)

    2014年4月 - 2014年9月   前期

  • 電気情報工学実験Ⅰ(分散ロボットプロジェクト演習)

    2013年4月 - 2013年9月   前期

  • 情報処理演習Ⅱ

    2013年4月 - 2013年9月   前期

  • 情報知能工学大学院特別講義

    2012年10月 - 2013年3月   後期

  • 電気情報工学実験Ⅰ(分散ロボットプロジェクト演習)

    2012年4月 - 2012年9月   前期

  • 情報知能工学大学院特別講義

    2011年10月 - 2012年3月   後期

  • 電気情報工学実験Ⅰ(分散ロボットプロジェクト演習)

    2011年4月 - 2011年9月   前期

  • 電気情報工学実験Ⅱ(ソフトウェア実験)

    2010年10月 - 2011年3月   後期

  • 情報処理演習Ⅰ

    2010年4月 - 2010年9月   前期

  • 電気情報工学実験Ⅰ(分散ロボットプロジェクト演習)

    2010年4月 - 2010年9月   前期

  • 電気情報工学実験Ⅱ(ソフトウェア実験)

    2009年10月 - 2010年3月   後期

  • 電気情報工学実験Ⅱ(ソフトウェア実験)

    2008年10月 - 2009年3月   後期

  • 電気情報工学実験 I (ソフトウェア実験)

    2007年4月 - 2007年9月   前期

▼全件表示

FD参加状況

  • 2023年11月   役割:参加   名称:【シス情FD】企業等との共同研究の実施増加に向けて

    主催組織:部局

  • 2023年10月   役割:参加   名称:【シス情FD】価値創造型半導体人材育成センターについて

    主催組織:部局

  • 2023年9月   役割:講演   名称:九州大学ラーニングアナリティクスセンター第2回シンポジウム「生成系AIとラーニングアナリティクスによる新たな教育学習支援の可能性」

    主催組織:部局

  • 2023年5月   役割:参加   名称:【シス情FD】農学研究院で進めているDX教育について

    主催組織:部局

  • 2023年4月   役割:参加   名称:【シス情FD】若手教員による研究紹介⑧

    主催組織:部局

  • 2023年1月   役割:参加   名称:【シス情FD】若手教員による研究紹介⑦

    主催組織:部局

  • 2023年1月   役割:パネリスト   名称:九州大学ラーニングアナリティクスセンター第1回シンポジウム「理想のラーニングアナリティクスを⽬指して:研究と実践の往還」

    主催組織:部局

  • 2022年10月   役割:参加   名称:【シス情FD】若手教員による研究紹介⑥

    主催組織:部局

  • 2022年9月   役割:講演   名称:全学FD「M2Bシステムの使い方 ~新機能を中心に紹介~」

    主催組織:全学

  • 2022年9月   役割:参加   名称:【シス情FD】研究機器の共用に向けて

    主催組織:部局

  • 2022年7月   役割:参加   名称:【シス情FD】若手教員による研究紹介⑤

    主催組織:部局

  • 2022年6月   役割:参加   名称:【シス情FD】電子ジャーナル等の今後について

    主催組織:部局

  • 2022年5月   役割:参加   名称:【シス情FD】若手教員による研究紹介④「量子コンピュータ・システム・アーキテクチャの研究~道具になることを目指して~」

    主催組織:部局

  • 2022年4月   役割:参加   名称:【シス情FD】第4期中期目標・中期計画等について

    主催組織:部局

  • 2022年3月   役割:講演   名称:新M2Bシステムの使い方 ~新機能を中心に紹介します~(3/17)

    主催組織:全学

  • 2022年3月   役割:講演   名称:新M2Bシステムの使い方 ~新機能を中心に紹介します~(3/14)

    主催組織:全学

  • 2022年1月   役割:参加   名称:【シス情FD】シス情関連の科学技術に対する国の政策動向(に関する私見)

    主催組織:部局

  • 2021年10月   役割:参加   名称:【シス情FD】熊本高専と九大システム情報との交流・連携に向けて ー 3年半で感じた高専の実像 ー

    主催組織:部局

  • 2021年9月   役割:参加   名称:博士後期課程の充足率向上に向けて

    主催組織:部局

  • 2021年4月   役割:講演   名称:令和3年度 第1回全学FD(新任教員の研修)

    主催組織:全学

  • 2021年4月   役割:講演   名称:オンライン授業実施の”いろは”

    主催組織:全学

  • 2020年10月   役割:参加   名称:2020年度 ユニバーシティ・デザイン・ワークショップの報告

    主催組織:部局

  • 2020年9月   役割:参加   名称:電気情報工学科総合型選抜(AO入試)について

    主催組織:部局

  • 2019年6月   役割:参加   名称:8大学情報系研究科長会議の報告

    主催組織:部局

  • 2019年2月   役割:参加   名称:九州大学大学院システム情報科学研究院FD

    主催組織:部局

  • 2018年11月   役割:参加   名称:九州大学大学院システム情報科学研究院FD

    主催組織:部局

  • 2018年9月   役割:参加   名称:九州大学大学院システム情報科学研究院FD

    主催組織:部局

  • 2017年12月   役割:参加   名称:全学FD

    主催組織:全学

  • 2017年10月   役割:参加   名称:ISEE FD

    主催組織:全学

  • 2016年3月   役割:参加   名称:基幹教育セミナーFD

    主催組織:全学

  • 2016年2月   役割:参加   名称:基幹教育課題協学科目担当教員向けFD

    主催組織:全学

  • 2015年3月   役割:参加   名称:基幹教育課題協学科目FD

    主催組織:全学

  • 2015年3月   役割:参加   名称:基幹教育EEP FD

    主催組織:全学

  • 2015年2月   役割:参加   名称:基幹教育院FD

    主催組織:全学

  • 2014年10月   役割:講演   名称:ISEE FD(基幹教育系)

    主催組織:全学

  • 2014年9月   役割:参加   名称:基幹教育院夏期FD

    主催組織:全学

  • 2014年7月   役割:参加   名称:新 GPA 制度実施のためのFD

    主催組織:全学

  • 2014年3月   役割:参加   名称:基幹教育セミナー実践FD

    主催組織:全学

  • 2014年3月   役割:参加   名称:基幹教育ガイダンス研修会(FD)

    主催組織:全学

  • 2014年2月   役割:参加   名称:教材開発センターFD

    主催組織:全学

  • 2013年10月   役割:参加   名称:基幹教育院着任教員FD

    主催組織:全学

  • 2013年8月   役割:参加   名称:平成25年度 基幹教育院夏季FD

    主催組織:全学

  • 2013年6月   役割:参加   名称:平成25年度 第2回 全学FD

    主催組織:全学

  • 2008年3月   役割:参加   名称:システム情報科学府FD

    主催組織:学科

  • 2007年4月   役割:参加   名称:平成19年度 第1回 全学FD

    主催組織:全学

▼全件表示

他大学・他機関等の客員・兼任・非常勤講師等

  • 2022年  福岡大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:後期,木曜4限

  • 2021年  福岡大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:後期,木曜4限

  • 2020年  福岡大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:後期,木曜4限

  • 2014年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:後期,月曜2限

  • 2014年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:通年,月曜1限

  • 2014年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:前期,月曜2限

  • 2013年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:後期,月曜2限

  • 2013年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:通年,月曜1限

  • 2013年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:前期,月曜2限

  • 2012年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:後期,月曜2限

  • 2012年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:通年,月曜1限

  • 2012年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:前期,月曜2限

  • 2011年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:通年,月曜2限

  • 2011年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:通年,月曜1限

  • 2010年  西南学院大学  区分:非常勤講師  国内外の区分:国内 

    学期、曜日時限または期間:通年,月曜1限

  • 2010年  大阪大学  区分:客員教員  国内外の区分:国内 

    学期、曜日時限または期間:2010年6月23日

▼全件表示

その他教育活動及び特記事項

  • 2021年  クラス担任  学部

  • 2019年  クラス担任  学部

海外渡航歴

  • 2010年8月 - 2010年10月

    滞在国名1:フランス共和国   滞在機関名1:ENSEEIHT

学内運営に関わる各種委員・役職等

  • 2016年10月 - 現在   全学 サイバーセキュリティ科目班

  • 2015年3月 - 2015年9月   全学 理系ディシプリン科目班 情報科学専門チーム長

  • 2014年4月 - 2017年3月   全学 学生PC必携化対応タスクフォース

  • 2014年4月 - 2017年3月   全学 基幹教育院情報委員会

  • 2014年4月 - 2017年3月   全学 教育用無線LAN整備タスクフォース

  • 2014年4月 - 2016年3月   全学 情報統括本部全学情報環境利用委員会

  • 2014年4月 - 2016年3月   全学 学務情報システムの運用調整等のためのWG

  • 2014年1月 - 2016年5月   全学 基幹教育課題協学科目班

  • 2013年10月 - 現在   全学 理系ディシプリン科目班 情報科学専門チーム

  • 2009年2月 - 2010年3月   研究院 電気情報工学科次期教育用電子計算機システム仕様策定委員

  • 2007年11月 - 2009年3月   研究院 助教給与委員

  • その他 総長補佐

  • その他 データ駆動イノベーション推進本部 LA部門長

▼全件表示