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Classification of surface EMG signal with fractal dimension

机译:分形维数的表面肌电信号分类

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摘要

Surface EMG (electromyography) signal is a complex nonlinear signal with low signal to noise ratio (SNR). This paper is aimed at identifying different patterns of surface EMG signals according to fractal dimension. Two patterns of surface EMG signalsare respectively acquired from the right forearm flexor of 30 healthy volunteers during right forearm supination (FS) or forearm pronation (FP). After the high frequency noise is filtered from surface EMG signal by a low-pass filter, fractal dimension iscalculated from the filtered surface EMG signal. The results showed that the fractal dimensions of filtered FS surface EMG signals and those of filtered FP surface EMG signals distribute in two different regions, so the fractal dimensions can representdifferent patterns of surface EMG signals.
机译:表面肌电图(肌电图)信号是具有低信噪比(SNR)的复杂非线性信号。本文旨在根据分形维数识别表面肌电信号的不同模式。在30名健康志愿者的右前臂旋后(FS)或前臂内旋(FP)期间,分别从30名健康志愿者的右前臂屈肌中获取了两种表面肌电信号。在通过低通滤波器从表面EMG信号中滤除高频噪声之后,从滤波后的表面EMG信号计算分形维数。结果表明,滤波后的FS表面肌电信号的分形维数和滤波后的FP表面肌电信号的分形维数分布在两个不同的区域,因此分形维数可以代表表面肌电信号的不同模式。

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