Gaussian mixture model based on genetic algorithm for brain-computer interface

Boyu Wang, Chi Man Wong, Feng Wan, Peng Un Mak, Pui In Mak, Mang I Vai
2010 2010 3rd International Congress on Image and Signal Processing  
Gaussian mixture model (GMM) has been considered to model the EEG data for the classification task in braincomputer interface (BCI) system. In the practical BCI application, however, the performance of the classical GMM optimized by standard expectation-maximization (EM) algorithm may be degraded due to the noise and outliers, which often exist in realistic BCI systems. The motivation of this paper is to introduce the GMM based on the combination between the genetic algorithm (GA) and EM method
more » ... to give a probabilistic output for further analysis and, more important, to achieve the reliable estimation by pruning the potential outliers and noisy samples in the EEG data, so the performance of BCI system can be improved. Experiments on two BCI datasets demonstrate the improvement in comparison with the classical mixture model. Keywords-electroencephalogram; genetic algorithm; Gaussian mixture model; brain-computer interface I.
doi:10.1109/cisp.2010.5646204 fatcat:jjtxuqreb5cbhiwzt5veo2qoo4