Electromyography signal analysis using spectrogram

T. Zawawi, A. Abdullah, E. Shair, I. Halim, O. Rawaida
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引用次数: 18

Abstract

Electromyography (EMG) is known as complex bioelectricity signals that representing the contraction of the muscle in humanbody. The EMG signal offers useful information that can help to understand the human movement. Many techniques have been proposed by various researchers such as fast Fourier transforms (FFT). However, the technique only gives temporal information of the signal and does not suitable for EMG that consists of magnitude and frequency variation. In this paper, the analysis of EMG signal is presented using time-frequency distribution (TFD) which is spectrogram with different window size. Since the spectrogram represent the the EMG signal in time-frequency representation (TFR), it is very appropriate to analyze the signal. The EMG signals from Biceps muscle of two subjects are collected for body position of 0° and 90°. From the TFR, parameters of the signal such as instantaneous fundamental root mean square (RMS) voltage (Vrms) are estimated. To identify the suitable windows size, spectrogram with size window of 64, 256, 512 and 1024 is used to analyze the signal and the performance of the TFR are evaluated. The results show that spectrogram with window size of 512 gives optimal TFR of the EMG signals and suitable to characterize the signal.
用谱图分析肌电信号
肌电图(Electromyography, EMG)是反映人体肌肉收缩的复杂生物电信号。肌电图信号提供了有用的信息,可以帮助理解人类的运动。许多研究人员提出了许多技术,如快速傅里叶变换(FFT)。然而,该技术只能给出信号的时间信息,不适用于包含幅度和频率变化的肌电图。本文采用时频分布(TFD)方法对肌电信号进行分析,TFD是一种具有不同窗口大小的频谱图。由于谱图是肌电信号的时频表示法,因此对肌电信号进行分析是非常合适的。采集两名受试者在体位为0°和90°时的二头肌肌电图信号。从TFR估计信号的瞬时基均方根(RMS)电压等参数。为了确定合适的窗口大小,分别使用大小窗口为64、256、512和1024的谱图对信号进行分析,并对TFR的性能进行了评价。结果表明,窗大小为512的谱图给出了最优的肌电信号TFR,适合表征肌电信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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