Anomaly state assessing of human using walker-type support system based on statistical analysis

Y. Hirata, Hiroki Yamaya, K. Kosuge, Atsushi Koujina, T. Shirakawa, Takahiro Katayama
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引用次数: 6

Abstract

In this paper, we propose a method to assess an extent of anomaly state of human using a walker-type support system. The elderly and the handicapped people use the walker-type support system to keep their balance and support their weight. Although the walker-type support system is easy to move based on the applied force of the user, several accidents such as falling and colliding with the obstacle have been reported. The anomaly state that causes a severe injury of the user should be detected before accident and the walker-type support system should prevent such accidents. In this paper, we focus on assessing the extent of the anomaly state of the user based on the statistical analysis of the applied force of the user. This research models the applied force of the user in real time by using the Gaussian Mixture Model (GMM), and we determine each parameter of GMM statistically. In addition, we assess the extent of the anomaly state of the user by using the Hellinger score, which can compare the data set of the normal state with that of anomaly state. The proposed method is applied to developed walker-type support system with simple force sensor, and we conduct the experiments in the several walking states and the environmental conditions.
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基于统计分析的人使用助行式支撑系统的异常状态评估
本文提出了一种利用助行式支撑系统评估人体异常状态程度的方法。老年人和残疾人使用助行器式支撑系统来保持平衡和支撑体重。虽然助行式支撑系统很容易根据使用者施加的力移动,但已经有几起事故的报道,如坠落和与障碍物碰撞。对使用者造成严重伤害的异常状态应在事故发生前检测出来,助行式支撑系统应防止此类事故的发生。在本文中,我们着重于基于对用户施加力的统计分析来评估用户异常状态的程度。本研究利用高斯混合模型(Gaussian Mixture Model, GMM)对用户的施加力进行实时建模,并对GMM的各个参数进行统计确定。此外,我们利用Hellinger分数来评估用户异常状态的程度,该分数可以将正常状态的数据集与异常状态的数据集进行比较。将所提出的方法应用于已开发的具有简单力传感器的步行式支撑系统,并在几种步行状态和环境条件下进行了实验。
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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