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Cancellation of artifacts in ECG signals using block adaptive filtering techniques

机译:使用块自适应滤波技术消除ECG信号中的伪影

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摘要

In this chapter, various block-based adaptive filter structures are presented, which estimate the deterministic components of the electrocardiogram (ECG) signal and remove the noise. The familiar Block LMS algorithm (BLMS) and its fast implementation, Fast Block LMS (FBLMS) algorithm, is proposed for removing artifacts preserving the low frequency components and tiny features of the ECG. The proposed implementation is suitable for applications requiring large signal-to-noise ratios with fast convergence rate. Finally, we have applied these algorithms on real ECG signals obtained from the MIT-BIH database and compared its performance with the conventional LMS algorithm. The results show that the performance of the block-based algorithms is superior than the LMS algorithm.
机译:在本章中,将介绍各种基于块的自适应滤波器结构,这些结构可估计心电图(ECG)信号的确定性分量并消除噪声。提出了熟悉的Block LMS算法(BLMS)及其快速实现,即Fast Block LMS(FBLMS)算法,用于去除保留低频成分和ECG微小特征的伪像。所提出的实现方式适合于需要大信噪比且具有快速收敛速率的应用。最后,我们将这些算法应用于从MIT-BIH数据库获得的真实ECG信号,并将其性能与常规LMS算法进行了比较。结果表明,基于块的算法的性能优于LMS算法。

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