A comparison of adaptive filter and artificial neural network results in removing electrocardiogram contamination from surface EMGs

S. Abbaspour, A. Fallah, A. Maleki
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引用次数: 5

Abstract

Surface electromyograms (EMGs) are valuable in the pathophysiological study and clinical treatment. These recordings are critically often contaminated by cardiac artifact. The purpose of this article was to evaluate the performance of an adaptive filter and artificial neural network (ANN) in removing electrocardiogram (ECG) contamination from surface EMGs recorded from the pectoralismajor muscles. Performance of these methods was quantified by power spectral density, coherence, signal to noise ratio, relative error and cross correlation in simulated noisy EMG signals. In between these two methods the ANN has better results.
比较了自适应滤波和人工神经网络对表面肌电信号中心电图污染的去除效果
表面肌电图(EMGs)在病理生理学研究和临床治疗中具有重要价值。这些录音经常受到心脏伪影的严重污染。本文的目的是评估自适应滤波器和人工神经网络(ANN)在去除胸大肌表肌电信号中心电图污染的性能。采用功率谱密度、相干性、信噪比、相对误差和相互关系等指标对模拟的含噪肌电信号进行了量化。在这两种方法之间,人工神经网络有更好的效果。
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