Autores
Virgilio González Carlos Daniel
Sossa Azuela Juan Humberto
Título Motor Imagery Task Classification in EEG Signals with Spiking Neural Network
Tipo Congreso
Sub-tipo Indefinido
Descripción 11th Mexican Conference on Pattern Recognition (MCPR, 2019)
Resumen We report the development and evaluation of brain signal classifiers, specifically Spiking Neuron based classifiers. The proposal consists of two main stages: feature extraction and pattern classification. The EEG signals used represent four motor imagery tasks: Left Hand, Right Hand, Foot and Tongue movements. In addition, one more class was added: Rest. These EEG signals were obtained from a database provided by the Technological University of Graz. Feature extraction stage was carried out by applying two algorithms: Power Spectral Density and Wavelet Decomposition. The tested algorithms were: K-Nearest Neighbors, Multilayer Perceptron, Single Spiking Neuron and Spiking Neural Network. All of them were evaluated in the classification between two Motor Imagery tasks; all possible pairings were made with the 5 mental tasks (Rest, Left Hand, Right Hand, Tongue and Foot). In the end, a performance comparison was made between a Multilayer Perceptron and Spiking Neural Network.
Observaciones DOI: 10.1007/978-3-030-21077-9_2
Lugar Querétaro
País Mexico
No. de páginas 14-24
Vol. / Cap. Lecture Notes in Computer Science v. 11524
Inicio 2019-06-26
Fin 2019-06-29
ISBN/ISSN