小波变换与短时傅立叶变换在肌电图检测中的应用。

P J Sparto, M Parnianpour, E A Barria, J M Jagadeesh
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引用次数: 88

摘要

测量躯干肌电图频率内容的时变特征是一种量化工人在工业任务中所承受的疲劳程度的方法,也是指导健康和受伤工人的培训和康复的工具。量化信号功率在特定频率范围内的变化,可以更好地了解疲劳过程。16名健康男性受试者在其最大自主收缩的70%时进行躯干等距伸展。采用短时傅里叶变换(STFT)和小波变换对内、外侧竖脊肌和背阔肌的肌电图进行处理。线性回归量化了中位数频率的时间变化率以及频率特定的STFT滤波器和小波尺度措施。短时傅里叶变换的中位数频率从平均77 Hz的初始值下降了22 Hz/min。小波和STFT滤波器测量表明,这种下降是由209-349 Hz信号功率的减少以及7-88 Hz信号功率的增加引起的。在大约90%的情况下,检测到13-22 Hz小波信号分量的中位数频率显著降低和显著升高,表明它们用于检测和量化疲劳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet and short-time Fourier transform analysis of electromyography for detection of back muscle fatigue.

Measurement of the time-varying characteristics of the frequency content of trunk muscle electromyography is a method to quantify the amount of fatigue endured by workers during industrial tasks, as well as a tool that may guide the training and rehabilitation of healthy and injured workers. Quantification of the change of signal power within specific frequency ranges may shed greater insight into the fatigue process. Sixteen healthy male subjects performed isometric trunk extension at 70% of their maximum voluntary contraction. Surface electromyography from medial and lateral erector spinae, and latissimus dorsi locations were processed using the short-time Fourier transform (STFT) and wavelet transform. Linear regression quantified the time rate of change of median frequency as well as frequency specific STFT filter and wavelet scale measures. The median frequency from the short-time Fourier transform declined by 22 Hz/min from an initial value of 77 Hz on average. The wavelet and STFT filter measures demonstrated this decline to be caused by a reduction in 209-349 Hz signal power in addition to an increase in 7-88 Hz signal power. A significant reduction in median frequency and significant elevation in 13-22 Hz wavelet signal component was detected in about 90% of the cases, indicating their use for detecting and quantifying fatigue.

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