Autores
Alfaro Ponce Mariel
Argüelles Cruz Amadeo José
Chairez Oria Jorge Isaac
Título Pattern recognition for electroencephalographic signals based on continuous neural networks
Tipo Revista
Sub-tipo JCR
Descripción Neural Networks
Resumen This study reports the design and implementation of a pattern recognition algorithm to classify electroencephalographic (EEG) signals based on artificial neural networks (NN) described by ordinary differential equations (ODEs). The training method for this kind of continuous NN (CNN) was developed according to the Lyapunov theory stability analysis. A parallel structure with fixed weights was proposed to perform the classification stage. The pattern recognition efficiency was validated by two methods, a generalization–regularization and a k-fold cross validation (k=5). The classifier was applied on two different databases. The first one was made up by signals collected from patients suffering of epilepsy and it is divided in five different classes. The second database was made up by 90 single EEG trials, divided in three classes. Each class corresponds to a different visual evoked potential. The pattern recognition algorithm achieved a maximum correct classification percentage of 97.2% using the information of the entire database. This value was similar to some results previously reported when this database was used for testing pattern classification. However, these results were obtained when only two classes were considered for the testing. The result reported in this study used the whole set of signals (five different classes). In comparison with similar pattern recognition methods that even considered less number of classes, the proposed CNN proved to achieve the same or e
Observaciones http://dx.doi.org/10.1016/j.neunet.2016.03.004
Lugar
País
No. de páginas 88–96
Vol. / Cap. Volume 79
Inicio 2016-07-01
Fin
ISBN/ISSN