Gait Phase Detection of Exoskeleton Robot Based on the Joints Angle of Lower Limb

Wang Jiang, Jianbin Zheng, Liping Huang
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引用次数: 1

Abstract

The lower limb exoskeleton robot is a wearable device that enhances the human lower extremity movement ability. And gait phase detection is an important prerequisite for controlling the lower limb exoskeleton robot. Traditional gait phase detection is mostly based on ground contact forces (GCFs) measured by force sensitive resistors (FSRs). However, FSRs will lose its lifespan and accuracy due to the impact force generated by gait. In view of this shortcoming, a gait phase detection method based on the joints angle of lower limb is proposed. Stacked LSTMs was constructed by using joints angle information of lower limb exoskeleton as input and gait phase as output. Through the experimental analysis of the different wearers' gait phase detection results, Stacked LSTMs could effectively detect the gait phase through the joints angle information with an average accuracy rate of 94.1%, which has a certain role in simplifying the exoskeleton robot sensor network.
基于下肢关节角度的外骨骼机器人步态相位检测
下肢外骨骼机器人是一种增强人类下肢运动能力的可穿戴设备。步态相位检测是实现下肢外骨骼机器人控制的重要前提。传统的步态相位检测主要基于力敏电阻(FSRs)测量的地面接触力(GCFs)。然而,由于步态产生的冲击力,fsr将失去其使用寿命和准确性。针对这一缺点,提出了一种基于下肢关节角度的步态相位检测方法。以下肢外骨骼关节角度信息为输入,步态相位信息为输出,构建了堆叠LSTMs。通过对不同佩戴者步态相位检测结果的实验分析,堆叠LSTMs能够通过关节角度信息有效检测步态相位,平均准确率达到94.1%,对简化外骨骼机器人传感器网络具有一定的作用。
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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