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Physiological signal denoising with variational mode decomposition and weighted reconstruction after DWT thresholding

机译:DWT阈值处理后的变异模态分解和加权重构的生理信号降噪

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We describe a method for physiological signal denoising based on the variational mode decomposition (VMD), the discrete wavelet transform (DWT), and constrained least squares (CLS) optimization. First, the noisy signal is decomposed into a sum of variational mode functions (VMFs) by VMD. Next, the DWT thresholding technique is applied to each VMF for denoising. Then, a weighted sum of the denoised VMFs is performed after weight estimation by CLS. The summation ignores the residue. This approach is compared to others based on empirical mode decomposition (EMD) and DWT thresholding of the obtained intrinsic mode functions (IMFs) and residue, followed by the unweighted summation of the results. The comparisons were performed with two EEG signals from the left and right cortex of a rat, and one ECG signal from a human subject. Using the signal-to-noise ratio and mean squared error as performance metrics, the results show strong evidence of the superiority of the VMD-DWT-CLS approach over the standard EMD-DWT. It is concluded that using CLS in the final reconstruction stage and ignoring the residue may bring significant improvement to the denoising process.
机译:我们描述了一种基于变分模式分解(VMD),离散小波变换(DWT)和约束最小二乘(CLS)优化的生理信号去噪方法。首先,嘈杂的信号通过VMD分解成变分模式功能(VMF)的总和。接下来,将DWT阈值技术应用于每个VMF进行去噪。然后,在CLS的重量估计之后进行去噪VMF的加权和。求和忽略了残留物。将该方法与基于所得固有模式功能(IMF)和残留物的经验模式分解(EMD)和DWT阈值阈值相比,然后是结果的效果的同步。使用来自大鼠的左右皮质的两个EEG信号进行比较,以及来自人类对象的一个​​ECG信号。使用信噪比和平均平方误差作为性能指标,结果显示了VMD-DWT-CLS接近标准EMD-DWT的优越性的强大证据。结论是,在最终重建阶段使用CLS忽略残留物可能对去噪过程带来显着改善。

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