An EEG blind source separation algorithm based on a weak exclusion principle

The question of how to separate individual brain and non-brain signals, mixed by volume conduction in electroencephalographic (EEG) and other electrophysiological recordings, is a significant problem in contemporary neuroscience. This study proposes and evaluates a novel EEG Blind Source Separation (BSS) algorithm based on a weak exclusion principle (WEP). The chief point in which it differs from most previous EEG BSS algorithms is that the proposed algorithm is not based upon the hypothesis that the sources are statistically independent. Our first step was to investigate algorithm performance on simulated signals which have ground truth. The purpose of this simulation is to illustrate the proposed algorithm's efficacy. The results show that the proposed algorithm has good separation performance. Then, we used the proposed algorithm to separate real EEG signals from a memory study using a revised version of Sternberg Task. The results show that the proposed algorithm can effectively separate the non-brain and brain sources.

[1]  Barak A. Pearlmutter,et al.  Blind Source Separation by Sparse Decomposition in a Signal Dictionary , 2001, Neural Computation.

[2]  Arnaud Delorme,et al.  EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysis , 2004, Journal of Neuroscience Methods.

[3]  P. Comon Independent Component Analysis , 1992 .

[4]  Asoke K. Nandi,et al.  Blind Source Separation , 1999 .

[5]  Terrence J. Sejnowski,et al.  Enhanced detection of artifacts in EEG data using higher-order statistics and independent component analysis , 2007, NeuroImage.

[6]  R. Oostenveld,et al.  Independent EEG Sources Are Dipolar , 2012, PloS one.

[7]  Tzyy-Ping Jung,et al.  Independent Component Analysis of Electroencephalographic Data , 1995, NIPS.

[8]  Ziauddin Muhammed Kamran. Blind source separation using higher-order statistics. , 2000 .

[9]  J. Cardoso Infomax and maximum likelihood for blind source separation , 1997, IEEE Signal Processing Letters.

[10]  T. Sejnowski,et al.  Removing electroencephalographic artifacts by blind source separation. , 2000, Psychophysiology.

[11]  Michael J Kahana,et al.  EEG correlates of verbal and nonverbal working memory , 2005, Behavioral and Brain Functions.

[12]  Henrik Walter,et al.  Evidence for Quantitative Domain Dominance for Verbal and Spatial Working Memory in Frontal and Parietal Cortex , 2003, Cortex.

[13]  D. Rowe A Bayesian approach to blind source separation , 2002 .

[14]  Eric Moulines,et al.  A blind source separation technique using second-order statistics , 1997, IEEE Trans. Signal Process..

[15]  Tzyy-Ping Jung,et al.  EEG-based drowsiness estimation for safety driving using independent component analysis , 2005, IEEE Transactions on Circuits and Systems I: Regular Papers.

[16]  Tülay Adali,et al.  Optimization and Estimation of Complex-Valued Signals: Theory and applications in filtering and blind source separation , 2014, IEEE Signal Processing Magazine.

[17]  Seungjin Choi,et al.  Independent Component Analysis , 2009, Handbook of Natural Computing.

[18]  E. Oja,et al.  Independent Component Analysis , 2013 .