ESECW方法处理表面肌电信号及其在步态识别中的应用

Can-hui Cai, Ligang Yao, Xiangwen Wei
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引用次数: 0

摘要

表面肌电信号主要包含来自周围环境的噪声。噪声的存在导致了下肢识别率不高的问题。本文提出了一种新的表面肌电信号处理方法——经典小波经验模式滤波自增强算法(ESECW),该方法能够去噪原始信号的界面噪声,提高下肢运动的识别率。ESECW算法由两部分组成:首先对原始信号进行经验模态分解(EMD)处理;第二部分首先对原始信号的背景噪声进行带通滤波,然后进行四级小波分解处理,得到四层高频信号分量,用于计算信号的平均能量。最后,将上述两个处理后的信号相乘得到混合信号。由此导出原始信号的有源段。然后,将提取的特征集输入支持向量机进行下肢运动模式识别。实际实验分析表明,ESECW方法对各种运动模式具有良好的适应性,且不需要设置一系列阈值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ESECW method to process sEMG and its application in gait recognition
Surface electromyography(sEMG) signals mainly contain noise from around environment. The noise leads the problems of poor recognition rate of lower limb. In this paper, a novel method was proposed to processing sEMG signals, named empirical mode filtering and self-enhancement algorithm with classical wavelet (ESECW), which denoises interface noise of originnl signals and enhanced the recognition rate of lower limb motions. The ESECW algorithm consist of two parts: the raw signal was first processed by the empirical mode decomposition (EMD). In the second part, the background noise of the original signal is firstly reduced with the band-pass filter, and then processed by four level wavelet decomposition to obtain four layer of high-frequency signal components which use to calculating average energy of signal. Finally, the above two processed signals are multiplied together to obtain the mixed signal. Thus, the active segment of raw signals is derived. then, the extracted feature set is input to the SVM for lowe limb motion pattern recognition. The actual experimental analysis indicate that ESECW method has good adaptability to various motion patterns and does not to set a series thresholds.
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