Ensemble of classifiers applied to motor imagery task classification for BCI applications
Brain Computer Interfaces allow the interaction between a person and their environment using signals extracted directly from the brain. One of the most common non-invasive methods of brain signal acquisition is the electroencephalography (EEG). An EEG based BCI system generally involves four steps:...
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Published in | Proceedings of ... International Joint Conference on Neural Networks pp. 2995 - 3002 |
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Main Authors | , , , |
Format | Conference Proceeding |
Language | English |
Published |
IEEE
01.05.2017
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Online Access | Get full text |
ISSN | 2161-4407 |
DOI | 10.1109/IJCNN.2017.7966227 |
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Abstract | Brain Computer Interfaces allow the interaction between a person and their environment using signals extracted directly from the brain. One of the most common non-invasive methods of brain signal acquisition is the electroencephalography (EEG). An EEG based BCI system generally involves four steps: preprocessing, feature extraction, feature selection, and classification. In order to design a real applicable BCI system, it is important to provide: good classification performance, adequate computational cost, robustness to variations of the signal between trials and between subjects, and a classifiers model that cope with highly dimensional data. Ensemble of classifiers is a learning model that, with a proper design, can satisfy those conditions, which make them a good match for a BCI application. In this paper, some ensemble of classifiers designs are evaluated and compared with other BCI approaches on three different subjects. In the proposed model, Genetic Algorithm is employed as feature selection method and Wavelet Packet Decomposition as preprocessing procedure. Four fusion methods were applied in the ensembles design, including: Majority Voting, Weighted Majority Voting, Genetic Algorithm for classifier selection and Genetic Algorithm to compute the weights for the Weighted Majority fusion method. The best results were obtained with the Weighted Majority Voting fusion method based on Genetic Algorithm. |
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AbstractList | Brain Computer Interfaces allow the interaction between a person and their environment using signals extracted directly from the brain. One of the most common non-invasive methods of brain signal acquisition is the electroencephalography (EEG). An EEG based BCI system generally involves four steps: preprocessing, feature extraction, feature selection, and classification. In order to design a real applicable BCI system, it is important to provide: good classification performance, adequate computational cost, robustness to variations of the signal between trials and between subjects, and a classifiers model that cope with highly dimensional data. Ensemble of classifiers is a learning model that, with a proper design, can satisfy those conditions, which make them a good match for a BCI application. In this paper, some ensemble of classifiers designs are evaluated and compared with other BCI approaches on three different subjects. In the proposed model, Genetic Algorithm is employed as feature selection method and Wavelet Packet Decomposition as preprocessing procedure. Four fusion methods were applied in the ensembles design, including: Majority Voting, Weighted Majority Voting, Genetic Algorithm for classifier selection and Genetic Algorithm to compute the weights for the Weighted Majority fusion method. The best results were obtained with the Weighted Majority Voting fusion method based on Genetic Algorithm. |
Author | Ramos, Alimed Celecia Vellasco, Pedro Hernandez, Rene Gonzalez Vellasco, Marley |
Author_xml | – sequence: 1 givenname: Alimed Celecia surname: Ramos fullname: Ramos, Alimed Celecia email: alimedcr22@gmail.com organization: Electrical Engineering Department, PUC Rio de Janeiro, Rio de Janeiro, Brazil – sequence: 2 givenname: Rene Gonzalez surname: Hernandez fullname: Hernandez, Rene Gonzalez email: reneglezh17@gmail.com organization: Electrical Engineering Department, PUC Rio de Janeiro, Rio de Janeiro, Brazil – sequence: 3 givenname: Marley surname: Vellasco fullname: Vellasco, Marley email: marley@ele.puc-rio.br organization: Electrical Engineering Department, PUC-Rio, Rio de Janeiro, Brazil – sequence: 4 givenname: Pedro surname: Vellasco fullname: Vellasco, Pedro email: vellasco@eng.uerj.br organization: Structural Engineering Department, UERJ, Rio de Janeiro, Brazil |
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Snippet | Brain Computer Interfaces allow the interaction between a person and their environment using signals extracted directly from the brain. One of the most common... |
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SubjectTerms | brain computer interface Brain modeling Classification algorithms Classifier Ensemble Electroencephalography Feature extraction fusion methods Genetic Algorithm Genetic algorithms motor imagery task classification Robustness Wavelet packets Weighted Majority Voting |
Title | Ensemble of classifiers applied to motor imagery task classification for BCI applications |
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