Visual human action classification for control of a passive walker

S. Taghvaei, Y. Hirata, K. Kosuge
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引用次数: 6

Abstract

Human action/behavior classification plays an important role for controlling systems having interaction with human users. Safety and dependability of such systems are crucial especially for walking assist systems. In this paper, upper body joint model of a user of a walking assist system is extracted using a depth sensor and a probabilistic model is proposed to detect possible non-walking states that might happen to the user. The 3D model of upper body skeleton, is reduced in dimension by applying Principal Component Analysis (PCA). The principal components are tested to have a normal distribution allowing a multivariate normal distribution fitting for walking data. The model is shown to be capable of recognizing four different falling scenarios and sitting. In these non-walking states, the motion of a passive-type walker called “RT Walker”, is controlled by generating brake force to assure fall prevention and sitting/standing up support. The experimental data is gathered from an experienced physical therapist capable of imitating different walking problems.
被动行走器控制的视觉动作分类
人类行为分类对于控制与人类用户交互的系统起着重要的作用。这些系统的安全性和可靠性是至关重要的,尤其是行走辅助系统。本文利用深度传感器提取了行走辅助系统用户的上肢关节模型,并提出了一种概率模型来检测用户可能出现的非行走状态。采用主成分分析(PCA)对人体上半身骨骼三维模型进行降维处理。主成分经检验为正态分布,允许多变量正态分布拟合行走数据。该模型被证明能够识别四种不同的摔倒和坐姿。在这些非行走状态下,被称为“RT walker”的被动型助行器的运动通过产生制动力来控制,以确保防止跌倒和坐/站支撑。实验数据是从一位经验丰富的物理治疗师那里收集的,他能够模仿不同的行走问题。
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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