Fatigue Analysis in Biceps Brachii Muscles Using Semg Signals and Polynomial Chirplet Transform

D. M. Ghosh, S. Ramakrishnan
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Abstract

Muscle fatigue analysis finds significant applications in the areas of biomechanics, sports medicine and clinical studies. Surface electromyography (sEMG) signals have wide application because of its non invasiveness. By nature, signals recorded using surface electrodes from muscles are highly nonstationary and random. The objective of this work is to analyze muscle related fatigue using sEMG signals and polynomial chirplet transform (PCT). sEMG signals are acquired from biceps brachii muscles of twenty volunteers (Mean (sd): age, 23.5 (4.3) years) in isometric contractions. The initial 500 ms is considered as nonfatigue and final 500 ms of the signals are considered as fatigue zone. Then signals are subjected to polynomial chirplet transform to estimate the time-frequency spectrum. Four features, instantaneous mean frequency (IsMNF), instantaneous median frequency (IsMDF), instantaneous spectral entropy (ISpEn) and instantaneous spectral skewness (ISSkw) are extracted for further analysis. Results show that the PCT is able to characterize the nonstationary and multi component nature of sEMG signals. The IsMNF, IsMDF, ISpEn are found to be high in nonfatigue conditions. Further, all the features are very distinct in muscle nonfatigue and fatigue conditions (p<0.001). This technique can be used in analyzing different neuromuscular disorders.
基于Semg信号和多项式小波变换的肱二头肌疲劳分析
肌肉疲劳分析在生物力学、运动医学和临床研究中有着重要的应用。表面肌电信号因其无创性而被广泛应用。从本质上讲,使用肌肉表面电极记录的信号是非平稳和随机的。本研究的目的是利用表面肌电信号和多项式小波变换(PCT)分析肌肉相关疲劳。从20名志愿者(平均(sd):年龄23.5(4.3)岁)的肱二头肌获得肌电信号。信号的前500ms被认为是非疲劳区,最后500ms被认为是疲劳区。然后对信号进行多项式小波变换估计时频谱。提取瞬时平均频率(IsMNF)、瞬时中位数频率(IsMDF)、瞬时谱熵(ISpEn)和瞬时谱偏度(ISSkw)四个特征进行进一步分析。结果表明,PCT能够表征表面肌电信号的非平稳性和多分量性。IsMNF、IsMDF、ISpEn在非疲劳条件下具有较高的性能。此外,在肌肉非疲劳和疲劳状态下,所有特征都非常明显(p<0.001)。该技术可用于分析不同的神经肌肉疾病。
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