New two-stage approach to ECG denoising

N. Mourad
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引用次数: 4

Abstract

A new algorithm for denoising electrocardiogram (ECG) signals contaminated by additive white Gaussian noise is proposed in this study. In the proposed algorithm, a clean ECG signal is modelled as a combination of a smooth signal representing the P-wave and the T-wave, and a group-sparse (GS) signal representing the QRS-complex, where a GS signal is a sparse signal in which its non-zero entries tend to concentrate in groups. Accordingly, the proposed approach consists of two stages. In the first stage, an algorithm previously developed by the author is adapted to extract the GS signal representing the QRS-complex, while in the second stage a new algorithm is developed to smooth the remaining signal. Each one of these two algorithms depends on a regularisation parameter, which is selected automatically in the proposed algorithms. Simulation results on real and simulated ECG data show that the proposed algorithm can be successfully utilised to denoise ECG data. In addition, the proposed algorithm is also shown to produce significantly improved results compared to existing techniques used for performing similar tasks.
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新的两阶段心电去噪方法
提出了一种去除加性高斯白噪声污染的心电图信号的新算法。在该算法中,干净的心电信号被建模为代表p波和t波的平滑信号和代表qrs复合体的群稀疏(GS)信号的组合,其中GS信号是稀疏信号,其非零条目倾向于集中在组中。因此,提议的办法分为两个阶段。在第一阶段,采用作者先前开发的算法提取代表qrs复合体的GS信号,在第二阶段,开发新的算法对剩余信号进行平滑处理。这两种算法中的每一种都依赖于一个正则化参数,该参数在所提出的算法中自动选择。对真实心电数据和模拟心电数据的仿真结果表明,该算法可以成功地用于心电数据去噪。此外,与用于执行类似任务的现有技术相比,所提出的算法也显示出显着改进的结果。
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