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Flexible Analytic Wavelet Transform Based Features for Physical Action Identification Using sEMG Signals

机译:基于sEMG信号的基于灵活分析小波变换的身体动作识别功能

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Objectives: Electromyography (EMG) is recording of the electrical activity produced by skeletal muscles. The classification of the EMG signals for different physical actions can be useful in restoring some or all of the lost motor functionalities in these individuals. Accuracy in classifying the EMG signal indicates efficient control of prosthesis.Material and methods: The flexible analytic wavelet transform (FAWT) is used for classification of surface electromyography (sEMG) signals for identification of physical actions. FAWT is an efficient method for decomposition of sEMG signal into eight sub-bands, features namely neg-entropy, mean absolute value (MAV), variance (VAR), modified mean absolute value type 1 (MAV1), waveform length (WL), simple square integral (SSI), Tsallis entropy, integrated EMG (IEMG) are extracted from the sub-bands. Extracted features are fed into an extreme learning machine (ELM) classifier with sigmoid activation function.Results: Comprehensive experiments are conducted on the input sEMG signals and the accuracy, sensitivity and specificity scores are used for performance measurement. Experiments showed that among all sub-bands, the seventh sub-band provided the best performance where the recorded accuracy, sensitivity and specificity values were 99.36%, 99.36% and 99.93%, respectively. The comparison results showed best efficiency of proposed method as compared to other methods on the same dataset.Conclusion: This paper investigates the usage of the FAWT and ELM on sEMG signal classification. The results show that the proposed method is quite efficient in classification of the sEMG signals. It is also observed that the seventh sub-band of the FAWT provides the best discrimination property. In the future works, recent wavelet transform methods will be used for improving the classification performance. (C) 2019 AGBM. Published by Elsevier Masson SAS. All rights reserved.
机译:目的:肌电图(EMG)记录骨骼肌产生的电活动。针对不同身体动作的EMG信号分类有助于恢复这些个体中部分或全部失去的运动功能。 EMG信号分类的准确性表明了对假体的有效控制。材料和方法:柔性分析小波变换(FAWT)用于对表面肌电图(sEMG)信号进行分类以识别物理动作。 FAWT是将sEMG信号分解为八个子带的有效方法,具有负熵,平均绝对值(MAV),方差(VAR),修正的平均绝对值类型1(MAV1),波形长度(WL),从子带中提取简单平方积分(SSI),Tsallis熵,集成EMG(IEMG)。提取的特征被输入到具有S型激活功能的极限学习机(ELM)分类器中。结果:对输入的sEMG信号进行了全面的实验,并使用准确性,敏感性和特异性评分进行性能测量。实验表明,在所有子带中,第七个子带提供了最佳性能,记录的准确度,灵敏度和特异性值分别为99.36%,99.36%和99.93%。比较结果表明,在相同的数据集上,与其他方法相比,该方法具有最佳的效率。结论:本文研究了FAWT和ELM在sEMG信号分类中的应用。结果表明,该方法在sEMG信号分类中非常有效。还观察到,FAWT的第七子带提供最佳的辨别特性。在未来的工作中,将使用最新的小波变换方法来提高分类性能。 (C)2019 AGBM。由Elsevier Masson SAS发布。版权所有。

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