Classifying event-related desynchronization in EEG, ECoG and MEG signals

PATTERN RECOGNITION, PROCEEDINGS(2006)

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摘要
We employed three different brain signal recording methods to perform Brain-Computer Interface studies on untrained subjects. In all cases, we aim to develop a system that could be used for fast, reliable preliminary screening in clinical BCI application, and we are interested in knowing how long screening sessions need to be. Good performance could be achieved, on average, after the first 200 trials in EEG, 75–100 trials in MEG, or 25–50 trials in ECoG. We compare the performance of Independent Component Analysis and the Common Spatial Pattern algorithm in each of the three sensor types, finding that spatial filtering does not help in MEG, helps a little in ECoG, and improves performance a great deal in EEG. In all cases the unsupervised ICA algorithm performed at least as well as the supervised CSP algorithm, which can suffer from poor generalization performance due to overfitting, particularly in ECoG and MEG.
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关键词
supervised csp algorithm,unsupervised ica algorithm,common spatial pattern algorithm,independent component analysis,meg signal,brain-computer interface study,good performance,poor generalization performance,clinical bci application,reliable preliminary screening,long screening session,event-related desynchronization,machine learning,spatial filtering,motor imagery,brain computer interface,common spatial pattern
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