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Performance analysis of DWT and FMH in classifying hand motions using sEMG signals

机译:使用SEMG信号对DWT和FMH进行DWT和FMH的性能分析

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摘要

A myoelectric prosthetic limb can be directed by sEMG signals from amputee's residual muscles. The capability of such prosthetic hand may be enhanced by classifying additional hand motion commands. As the amputee's residual muscles are limited and it is essential to come up with the ways to identify as many hand motion directions as possible with sEMG signals recognized by few sensors. Recent algorithms for pattern recognition in sEMG signals are tested with limited recognition patterns and inconsistent classification accuracy. The proper choice of denoising algorithm has intense effect on classification rates. Therefore FIR-median hybrid (FMH) filter, and discrete wavelet transform (DWT) denoising methods are used in this work for filtering sEMG signals. Five time domain features are used for classification of motions and four different physical activities are classified using ANN. It is observed from the results that FMH filter removes noise more effectively as compared to DWT which improves the classification accuracy.
机译:肌电电假肢肢体可以通过来自截肢的剩余肌肉的SEMG信号引导。通过分类额外的手动命令,可以增强这种假肢手的能力。随着截肢者的剩余肌肉有限,因此必须使用几种传感器识别的SEMG信号来提出识别尽可能多的手动方向的方法。最近用于SEMG信号中的模式识别的算法,具有有限的识别模式和不一致的分类准确性。正确选择的去噪算法对分类速率产生了强烈影响。因此,在这项工作中使用FIR中值混合(FMH)滤波器和离散小波变换(DWT)去噪方法,用于过滤SEMG信号。五个时域特征用于运动的分类和四种不同的体育活动使用ANN分类。与DWT相比,FMH滤波器比较可有效地消除噪声的结果,从而提高了分类精度。

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