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首页> 外文期刊>Journal of neural engineering >VMD-based denoising methods for surface electromyography signals
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VMD-based denoising methods for surface electromyography signals

机译:基于VMD的表面肌电信号降噪方法

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Objective. Since noise is inevitably introduced during the measurement process of surface electromyographic (sEMG) signals, two novel methods for denoising based on the variational mode decomposition (VMD) method were proposed in this work. Prior to this study, there has been no literature relating to how VMD is applied to sEMG denoising. Approach. The first proposed method uses the VMD method to decompose the signal into multiple variational mode functions (VMFs), each of which has its own center frequency and narrow band, and then the wavelet soft thresholding (WST) method is applied to each VMF. This method is termed the VMD-WST. The second proposed method uses the VMD method to decompose the signal into multiple VMFs, and then the soft interval thresholding (SIT) method is performed on each VMF, which is abbreviated as VMD-SIT. Ten healthy subjects and ten stroke patients participated in the experiment, and the sEMG signals of bicep brachii were measured and analyzed. In this paper, three methods are used for quantitative evaluation of the filtering performance: the signal-to-noise ratio (SNR), root mean square error and R-squared value. The proposed two methods (VMD-WST, VMD-SIT) are compared with the empirical mode decomposition (EMD) method and the wavelet method. Main results. The experimental results showed that the VMD-WST and VMD-SIT methods can effectively filter the noise effect, and the denoising effects were better than the EMD method and the wavelet method. The VMD-SIT method has the best performance. Significance. This study provides a new means of eliminating the noise of sEMG signals based on the VMD method, and it can be applied in the fields of limb movement classification, disease diagnosis, human-machine interaction and so on.
机译:目的。由于在表面肌电信号(sEMG)的测量过程中不可避免地会引入噪声,因此在这项工作中提出了两种基于变模分解(VMD)方法的去噪方法。在进行这项研究之前,还没有关于VMD如何应用于sEMG去噪的文献。方法。首先提出的方法使用VMD方法将信号分解为多个变分模式函数(VMF),每个函数都有自己的中心频率和窄带,然后将小波软阈值(WST)方法应用于每个VMF。此方法称为VMD-WST。第二种提出的方​​法使用VMD方法将信号分解为多个VMF,然后对每个VMF执行软间隔阈值(SIT)方法,简称为VMD-SIT。十名健康受试者和十名中风患者参加了该实验,并测量和分析了肱二头肌的sEMG信号。本文使用三种方法对滤波性能进行定量评估:信噪比(SNR),均方根误差和R平方值。将提出的两种方法(VMD-WST,VMD-SIT)与经验模式分解(EMD)方法和小波方法进行了比较。主要结果。实验结果表明,VMD-WST和VMD-SIT方法能够有效地滤除噪声,并且去噪效果优于EMD和小波方法。 VMD-SIT方法具有最佳性能。意义。该研究提供了一种基于VMD方法的消除sEMG信号噪声的新方法,可应用于肢体运动分类,疾病诊断,人机交互等领域。

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