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Wavelet Analysis-Based Reconstruction for sEMG Signal Denoising

机译:基于小波分析的SEMG信号去噪重建

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Surface electromyography (sEMG) recordings provide a safe, easy, and non-invasive method, allowing objective quantification of the electric activity of muscles. Analysis of sEMG plays an important diagnostic role in assessing muscle disorders. Typically, sEMG is a non-stationary signal contaminated by various noises or artifacts that originate at the skin-electrode interface, in the electronics, and in external sources. Thus, appropriate filtering procedures have to be applied to make sEMG clinically usable, in order to extract the main sEMG features. In the recent literatures, among the best performing denoising methods, Wavelet transformation (WT) denoising has been proposed. In particular, aim of this study is to propose a new denoising method based on WT multi-level decomposition analysis. To this aim, Daubechies mother wavelet (4* order, 9 levels of decomposition) was applied to 5 real sEMG tracings. Tibialis anterior (TA) and gastrocnemius lateralis (GL) signals are considered. This method focusses on the choice of a new thresholding rule for sEMG reconstruction and denoising. Performances of this method are computed against soft-thresholding denoising technique (ST) in terms of Root Mean Square Error (RMSE). After application of WT multi-level denoising technique, signal-to-noise ratio (SNR) increased significantly (TA: 14.5 ± 6.9 vs. 19.5 ± 7.1; GL: 14.0 ± 5.4 vs. 18.7 ± 6.3). Moreover, WT multi-level denoising technique showed a lower dispersion than ST (RMSE for TA: 0.8 vs. 1.2; RMSE for GL: 0.9 vs. 1.1.), introduced no sEMG signal delay. Thus, this method is a novel and efficient tool for sEMG denoising, that could be used to make easier the detection of sEMG activation onset-offset.
机译:表面肌电图(SEMG)录音提供安全,容易和无侵入性的方法,允许客观定量肌肉的电动活动。 SEMG分析在评估肌肉障碍方面发挥着重要的诊断作用。通常,SEMG是由各种噪声或伪影污染的非静止信号,该噪声或伪像在皮肤电极接口,电子设备和外部源中源自源自皮肤电极接口。因此,必须应用适当的过滤程序来进行SEMG临床可用,以便提取主要的SEMG功能。在最近的文献中,在最好的表现上的去噪方法中,已经提出了小波变换(WT)去噪。特别是,本研究的目的是提出基于WT多级分解分析的新的去噪方法。为此目的,Daubechies母语(4 *订单,9级分解)应用于5个真实的SEMG描痕。考虑了Tibialis前(TA)和腓肠肌侧面(GL)信号。该方法侧重于选择SEMG重建和去噪的新阈值规则。在均方根误差(RMSE)方面,计算该方法的性能针对软阈值的去噪技术(ST)计算。 WT多级去噪技术的应用程序后,信噪比(SNR)增加显著(TA:14.5±6.9对比19.5±7.1; GL:14.0±5.4对比18.7±6.3)。此外,WT多级去噪技术显示比ST更低的分散(Ta的RMSE:0.8与1.2; GL的RMSE:0.9与1.1。),没有SEMG信号延迟。因此,该方法是SEMG去噪的新颖且有效的工具,可用于更容易地检测SEMG激活发作偏移量。

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