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The 28th Annual Conference of the Japanese Society for Artificial Intelligence, 2014

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uè,ÑIJ9țȽȖśÜǪǸǻȀȊȔȐȥȷȚȁQřFȐȒȚȮǫƏĎ

Development of Accessibility Visualization System

through Analysis of Multidimensional Time-Series Data

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ĕ.ƈz

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Yusuke Iwasawa Ikuko Eguchi Yairi

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Graduate School of Engineering Science, Tokyo University, Japan

Graduate School of Science and Engineering, Sophia University, Japan

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[Chen, 2011] L Chen, CD Nugent, H Wang. “Activity recognition using cell phone accelerometers”. ACM SIGKDD Explorations Newsletter archive, vol. 12, issue 2, pp. 74-82, 2011

[Fukushima, 2011] Y. Fukushima, et al. “Sensing human movement of mobility and visually impaired people”. ASSETS '11 The proceedings of the 13th international ACM SIGACCESS conference on Computers and accessibility, 2011

[Hara, 2013]ƫ K. Hara, V. Le, and J. Froehlich. “Combining crowdsourcing and google street view to identify street-level accessibility problems”. CHI '13 Proceedings of the SIGCHI Conference on Human Factors in Computing Systems, pp. 631-640, 2013

[Miura, 2012] T. Miura, et al. “Barrier-free walk: A social sharing platform of barrier-free information for sensory/physically-impaired and aged people”. In Proceedings of IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp. 2927-2932, 2012

[Swan, 2012] Melanie Swan. “Sensor Mania! The Internet of Things, Wearable Computing, Objective Metrics, and the Quantified Self 2.0”. Journal of Sensor and Actuator Networks, pp 217-253, 2012

[Wang, 2005]. S. Wang. “Human activity recognition with user-free accelerometers in the sensor networks”. Neural Networks and Brain, 2005. ICNN&B '05. International Conference, pp 1212-1217, 2005

[Zhang, 2010] S. Zhang, P McCullagh, C Nugent. “Activity Monitoring Using a Smart Phone's Accelerometer with Hierarchical Classification, Intelligent Environments (IE)”, 2010 Sixth International Conference on, pp. 158-163

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