Comparative Analysis of EMG Signal Features in Time-domain and Frequency-domain using MYO Gesture Control

Haider Ali Javaid, N. Rashid, M. Tiwana, Muhammad Waseem Anwar
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引用次数: 12

Abstract

Feature extraction is a pronounced method to infer the information utility which is concealed in electromyography (EMG) signal to study the characteristic properties and behavior of signal. This study gives a comparative analysis of thirteen complete and most up-to-date EMG feature signals in Time-domain and Frequency-domain. Particularly, the EMG signals are obtained from a device MYO gesture control on an embedded system. For this purpose, four healthy male volunteers are considered to perform four different hand movements based on stationary, double tap, single finger movement and finger spread. To be a successful classification of these EMG features in both domains, we prefer attribute selected classifier as it gives the better performance and higher rate of accuracy i.e. 93.8%. The experimental results prove that features in time-domain are superfluity and redundant while features in frequency-domain (measured by statistical parameters of EMG power spectral density) show the ultimate dominance and signal characterization. The findings of this study are highly beneficial for further use in order to predict the behavior of EMG in pattern recognition and in classification of EMG signals for assistive devices or in powered human arm prosthetics.
基于MYO手势控制的肌电信号时域和频域特征对比分析
特征提取是通过推断隐藏在肌电信号中的信息效用来研究信号的特征性质和行为的一种重要方法。本研究对13个完整且最新的肌电特征信号进行了时域和频域的对比分析。具体地说,肌电信号是通过嵌入式系统上的MYO手势控制装置获得的。为此,四名健康男性志愿者被认为进行四种不同的手部动作,基于静止,双击,单指运动和手指展开。为了在这两个领域对这些肌电特征进行成功的分类,我们更喜欢属性选择分类器,因为它具有更好的性能和更高的准确率,即93.8%。实验结果表明,时域特征是多余和冗余的,而频域特征(通过肌电功率谱密度统计参数测量)则表现出最终的优势和信号表征。本研究的结果对进一步预测肌电图在模式识别和辅助装置或动力假肢的肌电信号分类中的行为非常有益。
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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