Mining crucial features for automatic rehabilitation coaching systems

N. Ukita, Koki Eimon, C. Röcker
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引用次数: 6

Abstract

Our goal is to develop a system for coaching human motions (e.g. rehabilitation). Such a coaching system should have several function such as motion measurement, evaluation, and feedback. Among all, this paper focuses on how to modify a user's motion so that it gets closer to the good template of a target motion. To this end, it is important to efficiently advise the user to emulate the crucial features that define the good template. The proposed method automatically mines the crucial features of any kind of motions from a set of all motion features. The crucial features are mined based on feature sparsification through binary classification between the samples of good and other motions.
挖掘自动康复训练系统的关键特征
我们的目标是开发一个系统来指导人类的运动(例如康复)。这样的训练系统应该有几个功能,如运动测量,评估和反馈。其中,本文的重点是如何修改用户的运动,使其更接近目标运动的良好模板。为此,有效地建议用户模仿定义好的模板的关键特性是很重要的。该方法能自动地从一组运动特征中挖掘出任何一种运动的关键特征。通过对good和其他运动样本的二值分类,在特征稀疏化的基础上挖掘关键特征。
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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