A time-series prediction approach for feature extraction in a brain-computer interface.

Damien Coyle, Girijesh Prasad, Thomas Martin McGinnity
Author Information
  1. Damien Coyle: Intelligent Systems Engineering Laboratory, School of Computing and Intelligent Systems, Faculty of Engineering, University of Ulster, Derry, Northern Ireland, UK. dh.coyle@ulster.ac.uk

Abstract

This paper presents a feature extraction procedure (FEP) for a brain-computer interface (BCI) application where features are extracted from the electroencephalogram (EEG) recorded from subjects performing right and left motor imagery. Two neural networks (NNs) are trained to perform one-step-ahead predictions for the EEG time-series data, where one NN is trained on right motor imagery and the other on left motor imagery. Features are derived from the power (mean squared) of the prediction error or the power of the predicted signals. All features are calculated from a window through which all predicted signals pass. Separability of features is achieved due to the morphological differences of the EEG signals and each NNs specialization to the type of data on which it is trained. Linear discriminant analysis (LDA) is used for classification. This FEP is tested on three subjects off-line and classification accuracy (CA) rates range between 88% and 98%. The approach compares favorably to a well-known adaptive autoregressive (AAR) FEP and also a linear AAR model based prediction approach.

MeSH Term

Algorithms
Artificial Intelligence
Brain
Communication Devices for People with Disabilities
Electroencephalography
Evoked Potentials, Motor
Humans
Pattern Recognition, Automated
Reproducibility of Results
Sensitivity and Specificity
Time Factors
User-Computer Interface

Word Cloud

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