A new adaptive approach to remove baseline wander from ECG recordings using Madeline structure

J. Mateo, C. Sánchez, C. Vayá, R. Cervigón, J. J. Rieta
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引用次数: 12

Abstract

Nowadays, there exist different approaches to cancel out noise effect and baseline drift in biomedical signals. However, none of them can be considered as completely satisfactory. In this work, an artificial neural network (ANN) based approach to cancel out baseline drift in electrocardiogram signals is presented. The system is based on a grown ANN allowing to optimize both the hidden layer number of nodes and the coefficient matrixes. These matrixes are optimized following the Window-Hoff Delta algorithm, offering much lower computational cost that the traditional back propagation algorithm. The proposed methodology has been compared with traditional baseline reduction methods (FIR, Wavelet and Adaptive LMS filtering) making use of cross correlation, signal to interference ratio and signal to noise ratio indexes. Obtained results show that the ANN-based approach performs better, with respect to baseline drift reduction and signal distortion at filter output, than traditional methods.
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利用Madeline结构自适应去除心电图记录基线漂移的新方法
目前,针对生物医学信号中的噪声效应和基线漂移,存在不同的消除方法。然而,没有一个可以被认为是完全令人满意的。在这项工作中,提出了一种基于人工神经网络(ANN)的方法来消除心电图信号中的基线漂移。该系统基于一个成熟的人工神经网络,可以优化隐藏层节点数和系数矩阵。这些矩阵是根据Window-Hoff Delta算法进行优化的,与传统的反向传播算法相比,计算成本要低得多。利用互相关、信噪比和信噪比指标,将该方法与传统的基线降准方法(FIR、小波和自适应LMS滤波)进行了比较。结果表明,与传统方法相比,基于人工神经网络的方法在降低基线漂移和滤波器输出信号失真方面表现更好。
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