Author/Authors :
Li، Yong نويسنده , , Gao، Xiaorong نويسنده , , Gao، Shangkai نويسنده , , Yang، Fusheng نويسنده , , Wang، Yijun نويسنده , , Zhang، Zhiguang نويسنده ,
Abstract :
This paper presents an algorithm for classifying single-trial electroencephalogram (EEG) during the preparation of self-paced tapping. It combines common spatial subspace decomposition with Fisher discriminant analysis to extract features from multichannel EEG. Three features are obtained based on Bereitschaftspotential and event-related desynchronization. Finally, a perceptron neural network is trained as the classifier. This algorithm was applied to the data set of "BCI Competition 2003" with a classification accuracy of 84% on the test set.