Title of article :
Exploring dimensionality reduction of EEG features in motor imagery task classification
Author/Authors :
Ignacio and Garcيa-Laencina، نويسنده , , Pedro J. and Rodrيguez-Bermudez، نويسنده , , Germلn and Roca-Dorda، نويسنده , , Joaquيn، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
A Brain-Computer Interface (BCI) system based on motor imagery (MI) identifies patterns of electrical brain activity to predict the user intention while certain movement imagination tasks are performed. Currently, one of the most important challenges is the adaptive design of a BCI system. For solving it, this work explores dimensionality reduction techniques: once features have been extracted from Electroencephalogram (EEG) signals, the high-dimensional EEG data has to be mapped onto a new reduced feature space to make easier the classification stage. Besides the standard sequential feature selection methods, this paper analyzes two unsupervised transformation-based approaches – Principal Component Analysis and Locality Preserving Projections – and the Local Fisher Discriminant Analysis (LFDA), which works in a supervised manner. The dimensionality in the projected space is chosen following a wrapper-based approach by an efficient leave-one-out estimation. Experiments have been conducted on five novice subjects during their first sessions with MI-based BCI systems in order to show that the appropriate use of dimensionality reduction methods allows increasing the performance. In particular, obtained results show that LFDA gives a significant enhancement in classification terms without increasing the computational complexity and, then, it is a promising technique for designing MI-based BCI system.
Keywords :
Dimensionality reduction , Local fisher discriminant analysis , Linear discriminants , Brain-computer interfaces , Electroencephalogram signals , Motor imagery , Feature Transformation
Journal title :
Expert Systems with Applications
Journal title :
Expert Systems with Applications