School of Artificial Intelligence, Hangzhou Dianzi University, Hangzhou 310018, China.
Key Laboratory of Brain Machine Collaborative Intelligence of Zhejiang Province, Hangzhou 310018, China.
J Healthc Eng. 2020 Nov 24;2020:8824194. doi: 10.1155/2020/8824194. eCollection 2020.
The feature extraction of surface electromyography (sEMG) signals has been an important aspect of myoelectric prosthesis control. To improve the practicability of myoelectric prosthetic hands, we proposed a feature extraction method for sEMG signals that uses wavelet weighted permutation entropy (WWPE). First, wavelet transform was used to decompose and preprocess sEMG signals collected from the relevant muscles of the upper limbs to obtain the wavelet sub-bands in each frequency segment. Then, the weighted permutation entropies (WPEs) of the wavelet sub-bands were extracted to construct WWPE feature set. Lastly, the WWPE feature set was used as input to a support vector machine (SVM) classifier and a backpropagation neural network (BPNN) classifier to recognize seven hand movements. Experimental results show that the proposed method exhibits remarkable recognition accuracy that is superior to those of single sub-band feature set and commonly used time-domain feature set. The maximum recognition accuracy rate is 100% for hand movements, and the average recognition accuracy rates of SVM and BPNN are 100% and 98%, respectively.
表面肌电信号(sEMG)的特征提取一直是肌电假肢控制的一个重要方面。为了提高肌电假肢手的实用性,我们提出了一种使用小波加权排列熵(WWPE)的 sEMG 信号特征提取方法。首先,使用小波变换对从上肢相关肌肉采集的 sEMG 信号进行分解和预处理,以获得每个频率段的小波子带。然后,提取小波子带的加权排列熵(WPE),以构建 WWPE 特征集。最后,将 WWPE 特征集用作支持向量机(SVM)分类器和反向传播神经网络(BPNN)分类器的输入,以识别七种手部运动。实验结果表明,所提出的方法表现出显著的识别精度,优于单条子带特征集和常用的时域特征集。手部运动的最大识别准确率为 100%,SVM 和 BPNN 的平均识别准确率分别为 100%和 98%。