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Filtering electrocardiographic signals using an unbiased and normalized adaptive noise reduction system

机译:使用无偏归一化自适应降噪系统过滤心电图信号

摘要

We present a novel unbiased and normalized adaptive noise reduction (UNANR) system to suppress random noise in electrocardiographic (ECG) signals. The system contains procedures for the removal of baseline wander with a two-stage moving-average filter, comb filtering of power-line interference with an infinite impulse response (IIR) comb filter, an additive white noise generator to test the system's performance in terms of signal-to-noise ratio (SNR), and the UNANR model that is used to estimate the noise which is subtracted from the contaminated ECG signals. The UNANR model does not contain a bias unit, and the coefficients are adaptively updated by using the steepest-descent algorithm. The corresponding adaptation process is designed to minimize the instantaneous error between the estimated signal power and the desired noise-free signal power. The benchmark MIT-BIH arrhythmia database was used to evaluate the performance of the UNANR system with different levels of input noise. The results of adaptive filtering and a study on convergence of the UNANR learning rate demonstrate that the adaptive noise-reduction system that includes the UNANR model can effectively eliminate random noise in ambulatory ECG recordings., leading to a higher SNR improvement than that with the same system using the popular least-mean-square (LMS) filter. The SNR improvement provided by the proposed UNANR system was higher than that provided by the system with the LMS filter, with the input SNR in the range of 5-20 dB over the 48 ambulatory ECG recordings tested. Crown Copyright (C) 2008 Published by Elsevier Ltd on behalf of IPEM. All rights reserved.
机译:我们提出了一种新颖的无偏和归一化自适应降噪(UNANR)系统,以抑制心电图(ECG)信号中的随机噪声。该系统包含使用两级移动平均滤波器消除基线漂移,通过无限脉冲响应(IIR)梳状滤波器对电力线干扰进行梳状滤波,用于测试系统性能的附加白噪声发生器的过程信噪比(SNR)和用于估计从受污染ECG信号中减去的噪声的UNANR模型。 UNANR模型不包含偏差单位,并且使用最速下降算法自适应地更新系数。相应的适配过程被设计为使估计的信号功率与所需的无噪声信号功率之间的瞬时误差最小。基准的MIT-BIH心律失常数据库用于评估具有不同输入噪声水平的UNANR系统的性能。自适应滤波的结果以及对UNANR学习速率收敛性的研究表明,包含UNANR模型的自适应降噪系统可以有效消除动态ECG记录中的随机噪声,从而导致SNR的提高要高于同类型的ECG。系统使用流行的最小均方(LMS)过滤器。拟议的UNANR系统提供的SNR改善高于带有LMS滤波器的系统,在48个动态ECG记录中输入SNR在5-20 dB范围内。 Crown版权所有(C)2008,由Elsevier Ltd代表IPEM发布。版权所有。

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