Abstract
In the field of brain–computer interfaces, one of the main issues is to classify the electroencephalogram (EEG) accurately. EEG signals have a good temporal resolution, but a low spatial one. In this article, metaheuristics are used to compute spatial filters to improve the spatial resolution. Additionally, from a physiological point of view, not all frequency bands are equally relevant. Both spatial filters and relevant frequency bands are user-dependent. In this article a multi-objective formulation for spatial filter optimization and frequency-band selection is proposed. Several multi-objective metaheuristics have been tested for this purpose. The experimental results show, in general, that multi-objective algorithms are able to select a subset of the available frequency bands, while maintaining or improving the accuracy obtained with the whole set. Also, among the different metaheuristics tested, GDE3, which is based on differential evolution, is the most useful algorithm in this context.
Acknowledgements
This work has been funded by the Spanish Ministry of Science under contract TIN2008-06491-C04-03 (MSTAR project).
Notes
returns complex numbers, with phase and modulus. SMR phenomena can be easily detected by means of the amplitude, so the phase will be ignored in this article (Dornhege et al.
Citation2007).
rounds x to the nearest integer greater than or equal to x.