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Super Wavelet for sEMG Signal Extraction During Dynamic Fatiguing Contractions

机译:动态疲劳收缩过程中用于sEMG信号提取的超级小波

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In this research an algorithm was developed to classify muscle fatigue content from dynamic contractions, by using a genetic algorithm (GA) and a pseudo-wavelet function. Fatiguing dynamic contractions of the biceps brachii were recorded using Surface Electromyography (sEMG) from thirteen subjects. Labelling the signal into two classes (Fatigue and Non-Fatigue) aided in the training and testing phase. The genetic algorithm was used to develop a pseudo-wavelet function that can optimally decompose the sEMG signal and classify the fatigue content of the signal. The evolved pseudo wavelet was tuned using the decomposition of 70 % of the sEMG trials. 28 independent pseudo-wavelet evolution were run, after which the best run was selected and then tested on the remaining 30 % of the trials to measure the classification performance. Results show that the evolved pseudo-wavelet improved the classification rate of muscle fatigue by 4.45 percentage points to 14.95 percentage points when compared to other standard wavelet functions (p < 0.05), giving an average correct classification of 87.90 %.
机译:在这项研究中,开发了一种算法,通过使用遗传算法(GA)和伪小波函数对动态收缩中的肌肉疲劳含量进行分类。使用表面肌电图(sEMG)从13位受试者中记录了肱二头肌的疲劳动态收缩情况。在训练和测试阶段,将信号标记为两类(疲劳和非疲劳)。遗传算法用于开发伪小波函数,该函数可以最佳地分解sEMG信号并分类信号的疲劳含量。使用70%的sEMG试验的分解来调整演化的伪小波。进行了28次独立的伪小波进化,然后选择了最佳的小波,然后在其余30%的试验中进行测试以衡量分类性能。结果表明,与其他标准小波函数相比,进化后的伪小波将肌肉疲劳的分类率提高了4.45个百分点,至14.95个百分点(p <0.05),平均正确分类率为87.90%。

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