An adaptive noise cancelation model for removal of noise from modeled ECG signals

S. Javed, N. Ahmad
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引用次数: 11

Abstract

In this paper an adaptive noise cancelation (ANC) model is presented to remove baseline wander (BW) noise from mathematically modeled ECG signals. The ANC model is designed to have a trade-off between the correlation properties of noise and reference signals. Matlab is used to simulate ECG signals artificially, to represent different sinus rhythms and leads of ECG waveform. Furthermore contamination of an important artifact (baseline wander) is simulated for normal ECG lead II, and then identified using LMS algorithm and its preconditioned versions: NLMS and TDLMS algorithms, to get denoised ECG signals. Experimental results are presented for a comparison of these adaptive algorithm, which shows preference of TDLMS algorithm over the rest.
一种自适应噪声消除模型,用于去除建模心电信号中的噪声
本文提出了一种自适应噪声消除(ANC)模型,用于从数学建模的心电信号中去除基线漂移(BW)噪声。ANC模型被设计为在噪声和参考信号的相关特性之间进行权衡。利用Matlab对心电信号进行人工模拟,以表示不同的窦性节律和心电波形导联。此外,对正常心电图导联II的重要伪影(基线漂移)进行了模拟,然后使用LMS算法及其预处理版本:NLMS和TDLMS算法进行识别,以获得去噪的心电信号。实验结果表明,TDLMS算法具有较好的自适应性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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