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Denoising of HD-sEMG signals using canonical correlation analysis

机译:使用规范相关分析去噪HD-SEMG信号

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摘要

High-density surface electromyography (HD-sEMG) is a recent technique that overcomes the limitations of monopolar and bipolar sEMG recordings and enables the collection of physiological and topographical informations concerning muscle activation. However, HD-sEMG channels are usually contaminated by noise in an heterogeneous manner. The sources of noise are mainly power line interference (PLI), white Gaussian noise (WGN) and motion artifacts (MA). The spectral components of these disruptive signals overlap with the sEMG spectrum which makes classical filtering techniques non effective, especially during low contraction level recordings. In this study, we propose to denoise HD-sEMG recordings at 20 % of the maximum voluntary contraction by using a second-order blind source separation technique, named canonical component analysis (CCA). For this purpose, a specific and automatic canonical component selection, using noise ratio thresholding, and a channel selection procedure for the selective version (sCCA) are proposed. Results obtained from the application of the proposed methods (CCA and sCCA) on realistic simulated data demonstrated the ability of the proposed approach to retrieve the original HD-sEMG signals, by suppressing the PLI and WGN components, with high accuracy (for five different simulated noise dispersions using the same anatomy). Afterward, the proposed algorithms are employed to denoise experimental HD-sEMG signals from five healthy subjects during biceps brachii contractions following an isometric protocol. Obtained results showed that PLI and WGN components could be successfully removed, which enhances considerably the SNR of the channels with low SNR and thereby increases the mean SNR value among the grid. Moreover, the MA component is often isolated on specific estimated sources but requires additional signal processing for a total removal. In addition, comparative study with independent component analysis, CCA-wavelet and CCA-empirical mode decomposition (EMD) proved a higher efficiency of the presented method over existing denoising techniques and demonstrated pointless a second filtering stage for denoising HD-sEMG recordings at this contraction level.
机译:高密度表面肌电图(HD-SEMG)是最近克服了单极和双极录音的局限性的技术,并能够收集肌肉激活的生理和地形信息。然而,HD-SEMG通道通常被异质的噪声污染。噪声源主要是电力线干扰(PLI),白色高斯噪声(WGN)和运动伪影(MA)。这些破坏性信号的光谱分量与SEMG频谱重叠,这使得经典过滤技术无效,特别是在低收缩水平记录期间。在这项研究中,我们建议通过使用指定规范分量分析(CCA)的二阶盲源分离技术,以20%的最大自愿收缩的HD-SEMG录音。为此目的,提出了一种使用噪声比阈值阈值和选择性版本(SCCA)的特定和自动规范组件选择。从拟议方法(CCA和SCCA)的应用获得的结果证明了所提出的方法通过抑制PLI和WGN组件来检索原始HD-SEMG信号的能力,高精度(对于五种不同的模拟使用相同解剖结构的噪声分散体)。之后,所提出的算法用于在等距协议之后在二头肌Brachii收缩期间从五个健康受试者中去除实验性HD-SEMG信号。得到的结果表明,可以成功去除PLI和WGN组分,这使得具有低SNR的通道的SNR显着增强,从而增加了网格之间的平均SNR值。此外,MA组分通常被隔离在特定的估计源上,但需要额外的信号处理以进行总去除。此外,具有独立分量分析,CCA-小波和CCA-经验模式分解(EMD)的比较研究证明了对现有的去噪技术的提高效率,并在此收缩处展示了用于去噪的毫无意义的第二滤波阶段等级。

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