A NLMS Based Approach for Artifacts Removal in Multichannel EEG Signals with ICA and Double Density Wavelet Transform

Vandana Roy, S. Shukla
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引用次数: 11

Abstract

Presence of artifacts in electroencephalogram (EEG) signals is significant hurdles in analysis of spectral behavior. These artifacts are the low amplitude signals from unconscious ocular activity and muscles activity of human body. Since the source and noise in received signals originate from different sources, ICA method has been extensively revised for proper filtering. It involves the generating a set of individual components of given signal followed by rejection of unwanted artifacts. The results of this research show that considerable artifacts components persist in clean EEG signals. In this paper, we propose Double-Density DWT algorithm as the overhead computation with ICA for further filtering the signals. ICA segments the artifact peaks and DWT decompose them for suitable signal value. The Wavelet ICA suppression not only remove artifacts but also preserves the spectral (amplitude) and coherence (phase) characteristics of neural activity. In addition to this, NLMS filter is used at output of DWT to discard any trace of artifacts left in signal. The comparison of proposed scheme and conventional ICA indicates that NLMS filtered DWT-ICA outperforms the previous methods.
基于NLMS的多通道脑电信号伪影去除方法及双密度小波变换
在脑电图信号中存在伪影是分析频谱行为的一个重要障碍。这些伪影是人体无意识眼活动和肌肉活动产生的低振幅信号。由于接收信号中的源和噪声来自不同的来源,ICA方法已被广泛修订以进行适当的滤波。它包括生成给定信号的一组单独的分量,然后抑制不需要的伪影。研究结果表明,在干净的脑电信号中存在相当大的伪影成分。在本文中,我们提出了双密度DWT算法作为ICA的开销计算来进一步滤波信号。ICA对伪峰进行分割,DWT对其进行分解得到合适的信号值。小波独立分量分析抑制既能去除伪影,又能保持神经活动的频谱(振幅)和相干(相位)特征。除此之外,在DWT的输出端使用NLMS滤波器来丢弃任何留在信号中的伪影痕迹。与传统ICA方法的比较表明,NLMS滤波后的DWT-ICA方法优于传统方法。
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