基于离散小波变换的真实心电图去噪方法

Nacèra Meziane, Dalila Meziane, M. Bouzid
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引用次数: 0

摘要

心电图是多分量非平稳信号的一部分。以往对心电信号的研究主要集中在时域和频域。因此,对于那些可能被众所周知的干扰污染的信号,如50/60 Hz电力线干扰、电极运动和呼吸信号,小波变换越来越被认为是一种更强的时频分析和编码工具。在这项工作中,我们开发了一种基于离散小波变换(DWT)的算法来去除上述不同干扰的心电信号。然后,我们图解地研究了心电波的不同组成部分,包括它们的频谱图、时频图像和尺度图。所开发的工具应用于从心电采集系统中采集的干净和污染的心电信号,我们已经并行设计。实验结果表明,该去噪算法可以完全去除几乎所有类型的干扰。其次,对心电信号的图形化分析给出了不同于时间分析或频率分析的新的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discrete wavelet transform-based denoising method for real electrocardiogram
The electrocardiogram (ECG) is part of multi-component non-stationary signals. In the past, the ECG signal was studied in time or frequency domain independently. For that, the wavelet transform has been increasingly considered as a stronger time-frequency analysis and coding tool for those signals that might be contaminated by well known interferences such us the 50/60 Hz power line interference, the movement of electrodes and the breathing signal. In this work, we developed a Discrete Wavelet Transform (DWT)-based algorithm to denoise the ECG signals from the different aforementioned interferences. Then, we graphically investigate the different components of the ECG waves presented by their spectrograms, time-frequency images and scalograms. The developed tools are applied on both clean and contaminated ECG signals acquired from an ECG acquisition system, we have parallely designed. The experimental results show firstly the performance of our denoising algorithm to totally remove almost kind of interferences. Secondly, the graphical analysis of the ECG signals has given a new interpretation different from that known in time or frequency analysis separately.
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