利用可穿戴式GRF和EMG传感系统和机器学习算法实现家庭康复运动模式识别

Chaoming Fang, Yixuan Wang, Shuo Gao
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引用次数: 1

摘要

受益于近年来医疗物联网(IoHT)的发展,基于可穿戴传感器的运动模式识别在家庭康复领域发挥着重要作用。本文介绍了一种利用柔性肌电(EMG)传感器和地面反作用力(GRF)传感器进行运动模式识别的智能传感系统,以及该系统在IoHT架构下的应用。收集10名健康受试者在日常生活中5种常见运动模式下的肌电和GRF信息,分析后传输至远程终端(如个人电脑)。数据分析过程采用机器学习技术(支持向量机),确定运动模式,准确率高达96.38%。本文展示了一种结合可穿戴传感技术和机器学习算法的准确运动模式识别的可行方法,有望推动基于IoHT的家庭康复的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing Wearable GRF and EMG Sensing System and Machine Learning Algorithms to Enable Locomotion Mode Recognition for In-home Rehabilitation
Benefiting from the development of the Internet of Healthcare Things (IoHT) in recent years, locomotion mode recognition using wearable sensors plays an important role in the field of in-home rehabilitation. In this paper, a smart sensing system utilizing flexible electromyography (EMG) sensors and ground reaction force (GRF) sensors for locomotion mode recognition is presented, together with its use under the IoHT architecture. EMG and GRF information from ten healthy subjects in five common locomotion modes in daily life were collected, analyzed, and then transmitted to remote end terminals (e.g., personal computers). The data analysis process was implemented with machine learning techniques (Support Vector Machine), through which the locomotion modes were determined with a high accuracy of 96.38%. This article demonstrates a feasible means for accurate locomotion mode recognition by combining wearable sensing techniques and the machine learning algorithm, potentially advancing the development for IoHT based in-home rehabilitation.
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