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  4. Bayesian classification of single-trial event-related potentials in EEG
 
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2004
Journal Article
Title

Bayesian classification of single-trial event-related potentials in EEG

Abstract
We present a systematic and straightforward approach to the problem of single-trial classification of event-related potentials (ERP) in EEG. Instead of using a generic classifier off-the-shelf, like a neural network or support vector machine, our classifier design is guided by prior knowledge about the problem and statistical properties found in the data. In particular, we exploit the well-known fact that event-related drifts in EEG potentials, albeit hard to detect in a single trial, can well be observed if averaged over a sufficiently large number of trials. We propose to use the average signal and its variance as a generative model for each event class and use Bayes' decision rule for the classification of new and unlabeled data. The method is successfully applied to a data set from the NIPS*2001 Brain-Computer Interface post-workshop competition. Our result turned out to be competitive with the best result of the competition.
Author(s)
Kohlmorgen, J.
Blankertz, B.
Journal
International Journal of Bifurcation and Chaos in Applied Sciences and Engineering  
DOI
10.1142/S0218127404009429
Language
English
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