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Empirical Mode Decomposition vs. Wavelet Decomposition for the Extraction of Respiratory Signal From Single-Channel ECG: A Comparison

机译:从单通道心电图提取呼吸信号的经验模式分解与小波分解:比较

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摘要

The respiratory signal can be accurately evaluated by single-channel electrocardiogram (ECG) processing, as shown in recent literature. Indirect methods to derive the respiratory signal from ECG can benefit from a simultaneous study of both respiratory and cardiac activities. These methods lead to major advantages such as low cost, high efficiency, and continuous noninvasive respiratory monitoring. The aim of this paper is to reconstruct the waveform of the respiratory signal by processing single-channel ECG. To achieve these goals, two techniques of decomposition of the ECG signal into suitable bases of functions are proposed, such as the empirical mode decomposition (EMD) and the wavelet analysis. The results highlight the main differences between them in terms of both theoretical foundations, and performance achieved by applying these algorithms to extract the respiratory waveform shape from single-channel ECG are presented. The results also show that both algorithms are able to reconstruct the respiratory waveform, although the EMD is able to break down the original signal without a preselected basis function, as it is necessary for wavelet decomposition. The EMD outperforms the wavelet approach. Some results on experimental data are presented.
机译:如最近的文献所示,可以通过单通道心电图(ECG)处理来准确评估呼吸信号。从心电图获得呼吸信号的间接方法可以受益于对呼吸和心脏活动的同时研究。这些方法带来了主要优势,例如低成本,高效率以及连续的无创呼吸监测。本文的目的是通过处理单通道心电图来重建呼吸信号的波形。为了实现这些目标,提出了两种将ECG信号分解为合适的函数基础的技术,例如经验模式分解(EMD)和小波分析。结果突出了两者在理论基础上的主要差异,并提出了应用这些算法从单通道ECG提取呼吸波形形状所实现的性能。结果还表明,尽管EMD能够在没有预选基函数的情况下分解原始信号,但是这两种算法都能够重构呼吸波形,因为小波分解是必需的。 EMD优于小波方法。提出了一些关于实验数据的结果。

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