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Automatic EOG Artifact Elimination of EEG based on subspace decomposition |
FU Rong-rong,HOU Pei-guo,SHI Pei-ming,MENG Zong |
School of Electrical Engineering, Yanshan University, Qinhuangdao, Hebei 066004, China |
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Abstract To solve the electrooculogram (EOG) artifact elimination problem of electroencephalogram (EEG) signals,an automatic EOG artifact removal method is proposed based on geometric subspace decomposition. Geometric subspace is constructed by maximum noise fraction (MNF) approach, the decomposition in geometric subspace is used to separate multichannel EEG into a series of MNF components. The MNF components have the high correlation degree contain EOG artifact based on Spearman rank correlation coefficient. Thus EOG artifacts can be extracted in this detail way. Then the artifact free EEG signals are obtained by accumulating and reconstructing the processed components after projected back in signal space. Both generated data set and raw recordings were studied, combining the advantage of energy distribution visualization in brain mapping plots, the experiment results showed the effectiveness of the proposed method in artifact elimination.
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Received: 21 September 2016
Published: 27 September 2017
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[1]罗志增, 袁飞龙, 高云园, 等. 小波和希尔伯特变换在脑电信号消噪中的对比研究 [J]. 计量学报, 2013, 34(6): 567-572.
[2]Kanoga S, Nakanishi M, Mitsukura Y. Assessing the effects of voluntary and involuntary eyeblinks in independent components of electroencephalogram [J]. Neurocomputing, 2016, 193: 20-32.
[3]张立国, 张玉曼, 金梅, 等. 基于盲源分离的运动想象脑电信号特征提取方法的研究 [J]. 计量学报, 2015, 36(5): 535-539.
[4]Zeng K, Chen D, Ouyang G X, et al. An EEMD-ICA approach to enhancing artifact rejection for noisy multivariate neural data [J]. IEEE Trans on Neural Systems and Rehabilitation Engineering, 2016, 24 (6): 630-638.
[5]杨帮华, 章云元, 何亮飞, 等. 脑机接口中基于ICA-RLS的EOG伪迹自动去除[J]. 仪器仪表学报, 2015, 36(3): 668-674.
[6]计瑜, 沈继忠, 施锦河. 一种基于盲源分离的眼电伪迹自动去除方法[J]. 浙江大学学报(工学版), 2013, 47(3): 415-421.
[7]Anderson C W, Knight J N, O'connor T, et al. Geometric subspace methods and time-delay embedding for EEG artifact removal and classification[J]. IEEE Trans on Neural Systems and Rehabilitation Engineering, 2006, 14 (2): 142-146.
[8]Fu Rong-rong,Wang Hong. Detection of driving fatigue by using non-contact EMG and ECG signals measurement system[J]. International Journal of Neural Systems,2014, 24(24): 478-491.
[9]Sun L, Rieger J, Hinrichs H. Maximum noise fraction transformation to remove ballistocardiographic artifacts in EEG signals recorded during fMRI scanning [J]. Neuroimage, 2009, 46(1):144-53.
[10]Zhang W Y, Zong W W, Wang B H,et al. Measuring mixing patterns in complex networks by Spearman rank correlation coefficient[J]. Physica A, 2016, 451: 440-450.
[11]Chang W D, Cha H S, Kim K, et al. Detection of eye blink artifacts from single prefrontal channel electroencephalogram [J]. Computer Methods and Programs in Biomedicine, 2016, 124(C): 19-30.
[12]Xie Y, Wang Y, Nallanathan A,et al. An improved K-Nearest-Neighbor indoor localization method based on Spearman distance [J]. IEEE Signal Processing Letters, 2016, 23(3): 351-355. |
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