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SIGNIFICANCE OF MODIFIED EMPIRICAL MODE DECOMPOSITION FOR ECG DENOISING

机译:ECG去噪修改实证分解的意义

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The primary objective of the presented work is to exploit the power of modified empirical mode decomposition (M-EMD) for the denoising of ECG signals. It is well known that the ECG signals get corrupted by a number of noises during the recording process. Especially, during wireless ECG recording and ambulatory patient monitoring, the signal gets corrupted by additive white Gaussian noise (AWGN). Over the years, several techniques have been proposed for ECG denoising. Among those, empirical mode decomposition (EMD) and non-local means (NLM) algorithm are noted to be quite effective. Further, the NLM-based approach is better in retaining the morphological characteristics in comparison to the EMD. Consequently, the two approaches are effectively combined in this paper so that each one complements the other. In the proposed approach, the noisy ECG signal is first preprocessed using the NLM algorithm. This is followed by decomposition of the partially denoised output through M-EMD. The decomposed components are suitably thresholded and then reconstructed to obtain the final denoised signal. This largely addresses the issue of under-averaged regions noted in the case of NLM-based denoising. Furthermore, the proposed approach is noted to be superior to the other existing techniques.
机译:所提出的工作的主要目标是利用修改的经验模式分解(M-EMD)的功率用于ECG信号的去噪。众所周知,ECG信号在录制过程中被许多噪声损坏。特别是,在无线ECG记录和动态患者监测期间,信号通过添加性白色高斯噪声(AWGN)损坏。多年来,已经提出了若干技术,用于心电图去噪。其中,经验模式分解(EMD)和非本地方法(NLM)算法被认为是非常有效的。此外,基于NLM的方法更好地保持与EMD相比的形态特征。因此,两种方法在本文中有效地结合,使得每个方法互补。在所提出的方法中,首先使用NLM算法预处理嘈杂的ECG信号。然后通过M-EMD分解部分去噪输出。分解组分适当阈值,然后重建以获得最终的去噪信号。这在很大程度上解决了基于NLM的去噪的情况下指出的平均区域问题。此外,拟议的方法被认为优于其他现有技术。

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