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Improved Adaptive Filtering based Artifact Removal from EEG Signals

机译:改进的基于自适应滤波的脑电信号伪像去除

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Removal of the artifacts caused by eye movement is the necessary step in EEG (electroencephalogram) preprocessing. In this paper, we study the adaptive filtering algorithm for artifacts removal of eye movement and present a new LMS (Least Mean Square) based algorithm, by using eye movement artifact signal as a reference signal and take the error signal of the LMS system as the estimated EEG signal to achieve a significantly higher signal to noise ratio (SNR). In the experiments with real EEG data, we measure the mutual information (MI) and coherence (COH) that show the output of the new algorithm have better consistency with the original EEG signal. We also calculate the approximate entropy that indicates the output of the new algorithm better maintains nonlinear characteristics of the EEG signal.
机译:消除由眼球运动引起的伪影是EEG(脑电图)预处理的必要步骤。在本文中,我们研究了用于去除眼球运动的自适应滤波算法,并提出了一种新的基于LMS(最小均方)的算法,该算法将眼球运动假象信号作为参考信号,并以LMS系统的误差信号作为参考。估计的EEG信号以实现更高的信噪比(SNR)。在真实脑电数据的实验中,我们测量了互信息(MI)和相干性(COH),表明新算法的输出与原始脑电信号具有更好的一致性。我们还计算了近似熵,该熵表明新算法的输出可以更好地保持EEG信号的非线性特征。

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