一种新颖的基于Wigner-Ville分布的表面肌电信号分类二次时频方法

M. Khezri, M. Jahed
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引用次数: 5

摘要

肌电信号是一种生物电位信号,可以在收缩肌肉表面测量,代表神经肌肉活动。该信号可用于各种应用,如病变神经肌肉系统的临床诊断和作为评估康复活动的测量工具。另一个最近的应用是肌电图信号在设计和实现神经控制假肢中的应用。为此,需要肌电图信号的适当特征,以便正确识别手部的预期运动。本文提出了一种基于二次时频表示即Wigner-Ville分布(WVD)的信息提取方法。在该方法中,首先计算每个类别的WVD系数。然后得到每一类中所有信号的平均系数。然后利用获取的每一类信号的平均WVD系数求出交叉WVD,最后利用交叉WVD系数的零交叉次数(ZC)作为合适的特征。该方法对6类动作的平均识别准确率达到91.3%,取得了令人满意的结果。另一方面,对于未处理的(原始的)WVD系数,六个手部运动的平均精度注册为%33.7。
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An Inventive Quadratic Time-Frequency Scheme Based on Wigner-Ville Distribution for Classification of sEMG Signals
Electromyogram signal is a biopotential signal that may be measured on the surface of contracting muscles representing neuromuscular activities. This signal may be utilized in various applications such as clinical diagnosis of diseased neuromuscular systems and as a measurement tool for evaluation of rehabilitation activities. Another recent application is the usage of EMG signal in design and implementation of neural controlled prosthesis hands. For this purpose appropriate features of EMG signal are required such that intended hand movements may be recognized correctly. In this work we considered a new method based on quadratic time-frequency representation namely Wigner-Ville distribution (WVD) to extract required information. In the proposed approach, initially WVD coefficients for each class were calculated. Next average coefficients for all the signals in each class were obtained. Then cross-WVD was found by using acquired average WVD coefficients with signals in each class and finally the number of zero crossing (ZC) of cross-WVD coefficients were utilized as suitable features. Our proposed approach provided satisfactory results with a recognition average accuracy rate of 91.3% for six classes of movements. On the other hand, for unprocessed (raw) WVD coefficients the average accuracy of the six hand movements was registered at %33.7.
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