基于SVM和KNN的假肢足表面肌电信号分类

Chitra Prasad, V. K. Balakandan, Pranav Moorthy V, Sreeja Kochuvila
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引用次数: 2

摘要

假肢在康复中起着重要的作用。目前,大多数用于经胫骨截肢者(TTA)的动力假肢脚都是从残肢接收信号来控制假肢脚的动作。来自大腿股二头肌的生物信号被发现比来自其他大腿肌肉的信号更稳定,并且在步态周期中代谢率降低。本研究利用肌肉传感器对20名健康受试者的体表肌电信号进行测量,利用加权KNN和线性支持向量机(Linear SVM)分类器,得出哪种肌电信号特征提取技术对1自由度(DoF) -背屈和足底屈进行准确分类的结论。两种分类器的准确率比较表明,加权KNN具有更好的分类效率
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of sEMG Signals for Controlling of a Prosthetic foot using SVM and KNN
Prosthesis plays an important role in rehabilitation. Majority of the powered prosthetic foot available for Trans-tibial amputees (TTA) today take the signal for the control action of the prosthetic foot from the residual stump. Bio-signals from the Biceps Femoris muscle of the thigh is found to be more stable as compared to signals from other thigh muscles and is found to have a reduced metabolic rate during the gait cycle.This study is done on the surface EMG signal measurements of 20 healthy subjects obtained using muscle sensor and conclusions as to which feature extraction technique of the EMG signal is accurate to classify 1-Degree of Freedom (DoF) — dorsiflexion and plantar flexion are derived using weighted KNN and Linear SVM classifier. The comparison of the accuracy of the two classifiers showed that weighted KNN has better efficiency
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