Reduce sEMG channels for Hand Gesture Recognition

Yali Qu, Haoyan Shang, Shenghua Teng
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引用次数: 2

Abstract

Multi-channel surface electromyography (sEMG) acquisition devices are generally used for hand gesture recognition in the area of human-computer interaction, rehabilitation training, and artificial prosthesis. Multi-channel sEMG can capture abundant information related to muscle motion but at the cost of increased complexity and signal crosstalk. In this work, we aim to use sEMG of fewer channels to realize recognition accuracy comparable to that with more channels. Specifically, time-domain features extracted from sEMG of multiple channels are first evaluated by Sequential Forward Feature Selection method based on Mutual Information (SFFSMI), where we can achieve gesture recognition rate of 99.64%. We then apply a channel selection method by combining Relief-F algorithm with support vector machine classifier (SVM-MRCS for short) and get fewer channels. In order to maintain recognition performance comparable to that with more channels, the wavelet and wavelet packet are further used to extract features fed to a SVM classifier. Experimental results show that we can use only four out of eight channels to obtain gesture recognition accuracy of 99.53%, which well balances the recognition performance and sEMG device complexity.
减少表面肌电信号通道的手势识别
多通道表面肌电信号采集设备在人机交互、康复训练、人工假肢等领域广泛用于手势识别。多通道表面肌电信号可以捕获与肌肉运动相关的丰富信息,但代价是增加了复杂性和信号串扰。在这项工作中,我们的目标是使用较少通道的表面肌电信号来实现与多通道的识别精度相当的识别精度。具体而言,首先利用基于互信息的序列前向特征选择方法(SFFSMI)对多通道表面肌电信号提取的时域特征进行评估,实现了99.64%的手势识别率。然后,我们将Relief-F算法与支持向量机分类器(SVM-MRCS)相结合,采用信道选择方法,得到较少的信道。为了保持与多通道时的识别性能相当,进一步使用小波和小波包提取特征,并将其输入到SVM分类器中。实验结果表明,我们只需要使用8个通道中的4个通道就可以获得99.53%的手势识别准确率,很好地平衡了识别性能和表面肌电信号设备的复杂性。
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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