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Selection of Optimal Parameters for ECG Signal Smoothing and Baseline Drift Removal

机译:ECG信号平滑和基线漂移消除的最佳参数选择

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摘要

Electrocardiogram (ECG) contains crucial clinical information about the cardiac activities of the heart, however, such signal a part of being in large volume is often characterised by a low quality due to the noise and other artifacts. In order to correctly extract the important features from the ECG signal, first it needs to be preprocessed, denoised and normilised. Significant attention in the literature has been directed toward the ECG preprocessing, though there are ambiguity to which wavelet performs the best for ECG signal processing as well as which decomposition level should be used and how the baseline wander can be removed. Parameters of wavelets have been investigated but the lack of evidence for recommendations is not found. This research conducts a comprehensive study to identify some characteristics of optimal decomposition level and to identify the span that should be used. We have taken into consideration all available wavelets within the Matlab environment and tested it on a number of randomly chosen ECG signals. Results indicate that the decomposition level of 4 should be used and that the Biorthogonal wavelet bior3.9 performs the best for smoothing and baseline drift removal. Also, we concluded that the optimal value for span is 100, which guarantees the best baseline wander removal.
机译:心电图(ECG)包含有关心脏心脏活动的重要临床信息,但是,这种信号的一部分通常是大音量,由于噪音和其他伪影,其质量低下。为了正确地从ECG信号中提取重要特征,首先需要对其进行预处理,去噪和标准化。尽管不确定小波在ECG信号处理中的最佳表现,以及应该使用哪种分解级别以及如何消除基线漂移,但文献中对ECG预处理的关注很大。已经研究了小波的参数,但是没有找到建议的证据。这项研究进行了全面的研究,以确定最佳分解水平的某些特征,并确定应使用的跨度。我们考虑了Matlab环境中所有可用的小波,并在许多随机选择的ECG信号上进行了测试。结果表明,应使用分解级别4,并且双正交小波bior3.9在平滑和基线漂移去除方面表现最佳。同样,我们得出结论,跨度的最佳值为100,这保证了最佳基线漂移消除。

著录项

  • 作者

    Stantic Dejan; Jo Jun Hyung;

  • 作者单位
  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 English
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