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Classification of EEG signals using a genetic-based machine learning classifier.

Author information

1
Mechatronics and Intelligent Systems Group, University of Technology, Sydney, 2000, Australia. brad.skinner@uts.edu.au

Abstract

This paper investigates the efficacy of the genetic-based learning classifier system XCS, for the classification of noisy, artefact-inclusive human electroencephalogram (EEG) signals represented using large condition strings (108bits). EEG signals from three participants were recorded while they performed four mental tasks designed to elicit hemispheric responses. Autoregressive (AR) models and Fast Fourier Transform (FFT) methods were used to form feature vectors with which mental tasks can be discriminated. XCS achieved a maximum classification accuracy of 99.3% and a best average of 88.9%. The relative classification performance of XCS was then compared against four non-evolutionary classifier systems originating from different learning techniques. The experimental results will be used as part of our larger research effort investigating the feasibility of using EEG signals as an interface to allow paralysed persons to control a powered wheelchair or other devices.

PMID:
18002656
DOI:
10.1109/IEMBS.2007.4352990
[Indexed for MEDLINE]

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