Motion recognition based on temporal mode acquisition

Tatsuhito Watanabe, S. Katsura
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Abstract

In this paper, a method for constructing ideal motion and analyzing difference between current and past motion is proposed. The ideal motion means a motion which is considered from past to current motion information. The proposed method is supposed to apply motion assist by robots. For the motion assist by robots, individual database adjusted to day-by-day variation is necessary. This database should be able to extract ideal motion in daily motion and acquire the difference between current and past motion. By analyzing difference between current and past motion, robots can recognize day-by-day variation of the examinee. For deriving ideal motion and analyses of the difference at the same time, quarry matrix is used. Finally, this paper generates the ideal motion considering the correlations between past ideal motion and the elements in the database. To recognize both ideal motion and differences, this paper extracts the force information using temporal mode. The proposed method enables to analyze the difference between elements in the database without impairing the correlations. The viability of the proposed method is confirmed by experiments.
基于时间模式获取的运动识别
本文提出了一种构造理想运动和分析当前运动与过去运动差异的方法。理想运动是指考虑了从过去到现在的运动信息的运动。提出的方法是应用机器人的运动辅助。对于机器人的运动辅助,需要根据每天的变化调整个人数据库。该数据库应该能够提取日常运动中的理想运动,并获得当前和过去运动的差异。通过分析考生现在和过去的动作差异,机器人可以识别考生每天的变化。在推导理想运动的同时,利用采石场矩阵进行误差分析。最后,考虑过去的理想运动与数据库中元素的相关性,生成理想运动。为了同时识别理想运动和差异运动,本文采用时间模式提取力信息。该方法能够在不影响相关性的情况下分析数据库中元素之间的差异。实验验证了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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