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Upper Arm Motion High-Density sEMG Recognition Optimization Based on Spatial and Time-Frequency Domain Features

机译:基于时空域特征的上臂运动高密度sEMG识别优化

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摘要

Background Spatial characteristics of sEMG signals are obtained by high-density matrix sEMG electrodes for further complex upper arm movement classification. Multiple electrode channels of the high-density sEMG acquisition device aggravate the burden of the microprocessor and deteriorate control system's real-time performance at the same time. A shoulder motion recognition optimization method based on the maximizing mutual information from multiclass CSP selected spatial feature channels and wavelet packet features extraction is proposed in this study.
机译:背景sEMG信号的空间特征是通过高密度矩阵sEMG电极获得的,用于进一步复杂的上臂运动分类。高密度sEMG采集设备的多个电极通道加重了微处理器的负担,同时恶化了控制系统的实时性能。提出了一种基于最大化CSP选择空间特征通道互信息并提取小波包特征的肩膀运动识别优化方法。

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