基于自适应小波阈值的多功能肌电控制肌电信号去噪估计

A. Phinyomark, C. Limsakul, P. Phukpattaranont
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引用次数: 34

摘要

小波去噪算法在去除表面肌电信号中的噪声方面受到了广泛的关注。多诺霍方法提出的小波去噪算法在表面肌电信号中应用较多。然而,Donoho的方法是有限的,特别是对于多功能肌电控制。它不仅能去除噪声,还能去除表面肌电信号中一些重要的部分。本文提出了一种改进的阈值估计方法。评估了与所选阈值重新缩放相关的六种改进的阈值估计方法。用不同信噪比下加性WGN的6个手部运动表面肌电信号来评价该方法的有效性。将估计信号的特征信息发送给分类任务。对这些算法性能的评价是均方误差(MSE)和分类率。结果表明,GSMU方法比传统的Donoho方法具有更好的性能。它产生的表面肌电信号保留了原始表面肌电信号的重要信息,并能消除大量的噪声。在信噪比为20 dB时,平均MSE为0.0024;在信噪比为0 dB时,平均MSE为0.074。提高了基于GSMU估计的表面肌电信号的手部运动识别精度。根据噪声水平的不同,它可以提高1%到4%的分类精度。此外,层次依赖方法的性能优于其他重缩放方法。在实验中,GSMU阈值估计方法是产生无噪声有用表面肌电信号的有效方法,提高了手部运动识别的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EMG denoising estimation based on adaptive wavelet thresholding for multifunction myoelectric control
Wavelet denoising algorithms have been received considerable attention in the removal of noises of surface electromyography (sEMG) signal. Wavelet denoising algorithms proposed by Donoho's method is more often used in sEMG signal. However, Donoho's method is limited especially for multifunction myoelectric control. It does not only remove noises but it also removes some important part of sEMG signals. This study proposes an improved threshold estimation method. Six modified threshold estimation methods associated with the selected thresholding rescaling are evaluated. SEMG signal from six hand motions with additive WGN at various signal-to-noise ratios (SNRs) were applied to evaluate the efficient of method. Features of the estimated signal are sent to classification task. Evaluations of the performance of these algorithms are mean squared error (MSE) and classification rate. The results show that Global Scale Modified Universal (GSMU) method provides better performance than traditional Donoho's method. It produces sEMG signals that remain important information of the original sEMG signal and can eliminate lots of noises. The average MSE are 0.0024 at 20 dB SNR, low noise, and 0.074 at 0 dB, high noise. The accuracy of hand movement recognition of sEMG signal that estimates from GSMU is improved. It improves 1 to 4% of the classification accuracy depend on level of noise. In addition, performance of level dependent method is better than the others rescaling method. In the experiment, GSMU threshold estimation method is an efficient method for producing useful sEMG signal without noise and improving the application of hand movement recognition.
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