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Muscle-gesture robot hand control based on sEMG signals with wavelet transform features and neural network classifier

机译:基于具有小波变换特征和神经网络分类器的sEMG信号的肌肉手势机器人手控制

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In this paper, we propose a muscle gesture-computer interface (MGCI) system for a five-fingered robotic hand control employing a commercial wearable MYO gesture armband. Eight channels of surface EMG (sEMG) signals were acquired and segmented. Then four levels of Daubechies 5 Wavelet family were performed to analyze the EMG signal. Totally 72 features were extracted from the EMG raw data for 16 hand motions recognition utilizing artificial Neural Networks. The average of best overall classification rate during off-line training is 87.8%. Consequently, real-time hand gesture recognition was implemented to evaluate the performance of the proposed system and the average recognition accuracy was 89.38%. Finally, it was applied to control a five-fingered robot hand.
机译:在本文中,我们提出了一种肌肉手势计算机接口(MGCI)系统,该系统用于采用商用可穿戴MYO手势臂章的五指机器人手控制。采集并分割了8个表面肌电信号(sEMG)通道。然后进行了四个级别的Daubechies 5 Wavelet家族的分析,以分析EMG信号。利用人工神经网络从EMG原始数据中总共提取了72个特征,以进行16个手势识别。离线培训期间最佳总体分类率的平均值为87.8%。因此,实施了实时手势识别以评估所提出系统的性能,平均识别精度为89.38%。最终,它被用于控制五指机器人手。

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