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Fourier and Wavelet Spectral Analysis of EMG Signals in 1-km Cycling Time-Trial

机译:1 km骑行时间试验中肌电信号的傅立叶和小波频谱分析

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Frequency domain analyses in electromyographic (EMG) signals are frequently applied to assess muscle fatigue and similar variables. Moreover, Fourier-based approaches are typically used for investigating these procedures. Nonetheless, Fourier analysis assumes the signal as stationary which is unlikely during dynamic contractions. As an alternative method, wavelet-based treatments do not assume this pattern and may be considered as more appropriate for joint time-frequency domain analysis. Based on the previous statements, the purpose of the present study was to compare the application of Short-Time Fourier Transform (STFT) and Continuous Wavelet Transform (CWT) to assess muscle fatigue in dynamic exercise of a 1-km of cycling (time-trial condition). The results of this study indicated that CWT and STFT analyses have provided similar fatigue estimates (slope) (p> 0.05). However, CWT application represents lesser dispersion (pp> 0.05) according to different methods, it is important to note that these responses seem to show greater values for CWT compared to STFT for 2 superficial muscles. Thereby, we are capable of considering CWT as a reliable and useful method to take into consideration when non-stationary or oscillating exercise models are evaluated.
机译:肌电图(EMG)信号中的频域分析经常用于评估肌肉疲劳和类似变量。此外,基于傅立叶的方法通常用于调查这些过程。尽管如此,傅立叶分析假设信号是平稳的,这在动态收缩期间不太可能发生。作为一种替代方法,基于小波的处理方法不采用这种模式,可以认为更适合于联合时频域分析。根据先前的陈述,本研究的目的是比较短时傅立叶变换(STFT)和连续小波变换(CWT)在1 km自行车运动中的肌肉疲劳评估(时间-试用条件)。这项研究的结果表明,CWT和STFT分析提供了相似的疲劳估计(斜率)(p> 0.05)。但是,根据不同的方法,CWT的使用表现出较小的分散性(pp> 0.05),重要的是要注意,与STFT相比,对于2个浅层肌肉,这些响应似乎显示出更大的CWT值。因此,当评估非平稳或振荡运动模型时,我们能够将CWT视为一种可靠且有用的方法。

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