IIR与小波滤波在心电降噪中的比较。

Computing in cardiology Pub Date : 2010-09-26
Js Sørensen, L Johannesen, Usl Grove, K Lundhus, J-P Couderc, C Graff
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引用次数: 0

摘要

本研究比较了五种小波滤波器和三种IIR滤波器在心电信号中保留信息和减少噪声污染的能力。使用了2个3导联动态心电图。将高斯白噪声以10%的覆盖率增量添加到第一个ECG上。第二次心电图包含交替肌瞬态和无噪声段。计算并比较了不同噪声覆盖下的计算次数和信噪比改进。从具有瞬态肌肉噪声的ECG无噪声段计算均方根误差。当信号噪声覆盖率大于50%时,小波滤波器比IIR滤波器更能提高信噪比。相比之下,IIR滤波器的计算时间(6秒)比小波滤波器的计算时间(88秒)短。在具有瞬态肌肉噪声的ECG上,小波滤波和IIR滤波在性能上有所权衡。在临床环境中,噪声的数量是未知的,使用IIR滤波器似乎是首选的一致的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Comparison of IIR and Wavelet Filtering for Noise Reduction of the ECG.

A Comparison of IIR and Wavelet Filtering for Noise Reduction of the ECG.

A Comparison of IIR and Wavelet Filtering for Noise Reduction of the ECG.

A Comparison of IIR and Wavelet Filtering for Noise Reduction of the ECG.

This study compares the ability to preserve information and reduce noise contaminants on the ECG for five wavelet filters and three IIR filters. Two 3-lead Holter ECGs were used. White Gaussian Noise was added to the first ECG in increments of 10% coverage. The second ECG contained alternating muscle transients and noise-free segments. Computation times and SNR improvements for different noise coverages were calculated and compared. RMS errors were calculated from noise-free segments on the ECG with transient muscle noise. Wavelet filters improved SNR more than IIR filters when the signal coverage was more than 50% noise. In contrast, the computation times were shorter for IIR filters (6 s) than for wavelet filters (88 s). On the ECG with transient muscle noise there was a trade-off in performance between wavelet and IIR filtering. In a clinical setting where the amount of noise is unknown, using IIR filters appears to be preferred for consistent performance.

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