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sEMG-Based Identification of Hand Motion Commands Using Wavelet Neural Network Combined With Discrete Wavelet Transform

机译:小波神经网络结合离散小波变换的基于sEMG的手势识别

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摘要

Surface electromyogram (sEMG) signals can be applied in medical, rehabilitation, robotic, and industrial fields. As a typical application, a myoelectric prosthetic hand is controlled by the sEMG signals of the amputee’s residual muscles. To improve the dexterity of the myoelectric prosthetic hand, additional hand motion commands need to be classified. The more sEMG sensors are used, the more hand motion commands can be classified. However, the amputee’s residual muscles are limited. In order to improve the practicability of the myoelectric prosthetic hand, it is critical to investigate the effective pattern recognition algorithms to deal with the sEMG signals detected by fewer sensors, while identifying as many hand motion commands as possible. Current pattern recognition algorithms for sEMG signals are challenged by limited recognition patterns and unsteady classification accuracy rates. To solve these dilemmas, we employed discrete wavelet transform (DWT) and wavelet neural network (WNN) algorithms to improve the pattern recognition effects of sEMG signals. In addition, the back propagation and gradient descent algorithms were utilized to train WNN. In this work, we only used three sEMG sensors to classify and recognize six kinds of hand motion commands. The maximum identification accuracy rate is 100%, and an average classification accuracy rate of the proposed WNN is 94.67%, which is substantially better than the artificial neural network (ANN) algorithm.
机译:表面肌电图(sEMG)信号可应用于医疗,康复,机器人和工业领域。作为一种典型的应用,肌电假手由被截肢者残余肌肉的sEMG信号控制。为了提高肌电假手的灵活性,需要对其他手部运动命令进行分类。使用的sEMG传感器越多,可以分类的手部动作命令就越多。但是,截肢者的残留肌肉有限。为了提高肌电修复手的实用性,研究有效的模式识别算法以处理由较少传感器检测到的sEMG信号,同时识别尽可能多的手运动命令至关重要。有限的识别模式和不稳定的分类准确率对当前的sEMG信号模式识别算法提出了挑战。为了解决这些难题,我们采用了离散小波变换(DWT)和小波神经网络(WNN)算法来提高sEMG信号的模式识别效果。另外,利用反向传播和梯度下降算法来训练WNN。在这项工作中,我们仅使用三个sEMG传感器来分类和识别六种手部动作命令。提出的WNN的最大识别准确率为100%,平均分类准确率为94.67%,大大优于人工神经网络算法。

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