Volume 29, Issue. 6, December, 2013


A novel single-trial event-related potential estimation method based on compressed sensing

 Zhihua Huang1,2,*, Minghong Li2,*, Shangchuan Yang2, Yuanye Ma2, Changle Zhou3 


1College of Mathematics and Computer Science, Fuzhou University, Fuzhou 350108, China
2Kunming Institute of Zoology, CAS, Kunming 650223, China
3Cognitive Science Department, Xiamen University, Xiamen 361005, China
*These authors contributed equally to this work.

Abstract 

Cognitive functions are often studied using eventrelated potentials (ERPs) that are usually estimated by an averaging algorithm. Clearly, estimation of single-trial ERPs can provide researchers with many more details of cognitive activity than the averaging algorithm. A novel method to estimate single-trial ERPs is proposed in this paper. This method includes two key ideas. First, singular value decomposition was used to construct a matrix, which mapped singletrial electroencephalographic recordings (EEG) into a low-dimensional vector that contained little information from the spontaneous EEG. Second, we used the theory of compressed sensing to build a procedure to restore single-trial ERPs from this low-dimensional vector. ERPs are sparse or approximately sparse in the frequency domain. This fact allowed us to use the theory of compressed sensing. We verified this method in simulated and real data. Our method and dVCA (differentially variable component analysis), another method of single-trial ERPs estimation, were both used to estimate single-trial ERPs from the same simulated data. Results demonstrated that our method significantly outperforms dVCA under various conditions of signal-to-noise ratio. Moreover, the single-trial ERPs estimated from the real data by our method are statistically consistent with the theories of cognitive science.

Keywords

compressed sensing; event-related potentials; single-trial electroencephalography; singular value decomposition

[SpringerLink]