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Removal of EOG Artifacts From Single Channel EEG Signals Using Combined Singular Spectrum Analysis and Adaptive Noise Canceler

机译:结合奇异频谱分析和自适应噪声消除器从单通道脑电信号中去除EOG伪像

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摘要

The electroencephalogram (EEG) signals represent the electrical activity of the brain. In applications, such as brain-computer interface (BCI), features of the EEG signals are used to control the devices. However, while recording, EEG signals often contaminated by electrooculogram (EOG) artifacts; such artifacts degrade the performance of the BCI. In this paper, we proposed a new technique using singular spectrum analysis (SSA) and adaptive noise canceler (ANC) to remove the EOG artifact from the contaminated EEG signal. In this technique, first, we proposed a novel grouping technique for SSA to construct the reference signal (EOG) for ANC. Later, using the extracted reference signal, the adaptive filter was employed to remove EOG artifact from the contaminated EEG signal. To quantify the performance of the proposed technique, we carried out simulations on synthetic and real-life EEG signals. In terms of relative root mean square error and mean absolute error, the proposed SSA-ANC method outperforms the existing techniques.
机译:脑电图(EEG)信号代表大脑的电活动。在诸如脑机接口(BCI)之类的应用中,EEG信号的功能用于控制设备。但是,在记录时,EEG信号经常被眼电图(EOG)伪影污染;这样的工件会降低BCI的性能。在本文中,我们提出了一种使用奇异频谱分析(SSA)和自适应噪声消除器(ANC)从污染的EEG信号中去除EOG伪影的新技术。在这项技术中,首先,我们提出了一种针对SSA的新颖分组技术,以构建ANC的参考信号(EOG)。随后,使用提取的参考信号,采用自适应滤波器从受污染的EEG信号中去除EOG伪影。为了量化所提出技术的性能,我们对合成和现实生活中的脑电信号进行了仿真。在相对均方根误差和均方根误差方面,所提出的SSA-ANC方法优于现有技术。

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