不同哑铃活动时肌电图提取时频域特征的统计分析

Prashant Kumar, Vivek Ranjan, Ashis Kumar Das, Suman Halder
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摘要

体表肌电图(EMG)用于检查肌肉的电活动。为了评估人体适应度,现在必须从肌电信号中提取定性特征。14个不同的时域和频域特征已衍生出各种手的运动。在这项研究中,通过使用统计检验,如t检验、符号秩检验和方差分析,分析了在六种不同的手部活动中收集的肌电图信号,以确定特定属性的变化程度。所研究的手部运动是双手举哑铃,举哑铃,抓握哑铃,即每个动作有两组数据。结果表明,无论用哪只手,哑铃的上下运动都没有这种差异,除了一些特征。尽管考虑到左手握持器和右手握持器的所有特征,结果都不显著。但大多数特征表明,在考虑双手哑铃活动上下运动时,有足够的证据(p<0.05)表明存在显著差异。同样,在大多数情况下,考虑到所有哑铃活动,使用方差分析,所有特征都有显著差异(p < 0.5)。
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Statistical Analysis for EMG Extracted Time and Frequency Domain Features during Different Dumbbell Activity
Electromyography on the surface of the body (EMG) is used to examine the electrical activity of the muscles. In order to evaluate human fitness, it is now essential to extract qualitative features from EMG signals. Fourteen distinct time-domain and frequency-domain features have been derived for various hand movements. In this study, EMG signals collected during six distinct hand activities have been analysed by using statistical tests, such as the t-test, sign-rank test and the analysis of variance, to determine the degree to which specific properties vary. The hand movement under study was dumbbell up, dumbbell down and hand gripper with both hands i.e two sets of data for each movement. The results show that there is no such difference for the dumbbell activity considering either up or down movement except for a few features regardless of the hand used. Although the non-significant result was found for all features considering both left-hand griper and right-hand griper. But the majority of the features show there is enough evidence (p<0.05) showing significant difference when considering up and down movement for both hands' dumbbell activity. Similarly, there was a significant difference ($p < 0.5$) in the majority case for all features considering all dumbbell activity at a time using analysis of variance.
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