Skeleton clustering by multi-robot monitoring for fall risk discovery

Abstract : This paper tackles the problem of discovering subtle fall risks using skeleton clustering by multi-robot monitoring. We aim to identify whether a gait has fall risks and obtain useful information in inspecting fall risks. We employ clustering of walking postures and propose a similarity of two datasets with respect to the clusters. When a gait has fall risks, the similarity between the gait which is being observed and a normal gait which was monitored in advance exhibits a low value. In subtle fall risk discovery, unsafe skeletons, postures in which fall risks appear slightly as instabilities, are similar to safe skeletons and this fact causes the difficulty in clustering. To circumvent this difficulty, we propose two instability features, the horizontal deviation of the upper and lower bodies and the curvature of the back, which are sensitive to instabilities and a data preprocessing method which increases the ability to discriminate safe and unsafe skeletons. To evaluate our method, we prepare seven kinds of gait datasets of four persons. To identify whether a gait has fall risks, the first and second experiments use normal gait datasets of the same person and another person, respectively. The third experiments consider that how many skeletons are necessary to identify whether a gait has fall risks and then we inspect the obtained clusters. In clustering more than 500 skeletons, the combination of the proposed features and our preprocessing method discriminates gaits with fall risks and without fall risks and gathers unsafe skeletons into a few clusters.
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Article dans une revue
Journal of Intelligent Information Systems, Springer Verlag, 2017, Volume 48, Issue 1, pp.75-115. 〈http://link.springer.com/journal/10844/48/1/page/1〉. 〈10.1007/s10844-015-0392-1〉
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https://hal.archives-ouvertes.fr/hal-01246048
Contributeur : Vasile-Marian Scuturici <>
Soumis le : vendredi 18 décembre 2015 - 00:59:11
Dernière modification le : vendredi 10 novembre 2017 - 01:19:29

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Yutaka Deguchi, Takayama Daisuke, Shigeru Takano, Vasile-Marian Scuturici, Jean-Marc Petit, et al.. Skeleton clustering by multi-robot monitoring for fall risk discovery. Journal of Intelligent Information Systems, Springer Verlag, 2017, Volume 48, Issue 1, pp.75-115. 〈http://link.springer.com/journal/10844/48/1/page/1〉. 〈10.1007/s10844-015-0392-1〉. 〈hal-01246048〉

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