EEG-BCI Features Discrimination between Executed and Imagined Movements Based on FastICA, Hjorth Parameters, and SVM

Author:

Mwata-Velu Tat’y123ORCID,Navarro Rodríguez Armando1ORCID,Mfuni-Tshimanga Yanick4ORCID,Mavuela-Maniansa Richard2ORCID,Martínez Castro Jesús Alberto1ORCID,Ruiz-Pinales Jose3ORCID,Avina-Cervantes Juan Gabriel3ORCID

Affiliation:

1. Centro de Investigación en Computación (CIC), Instituto Politécnico Nacional (IPN), Avenida Juan de Dios Bátiz esquina Miguel Othón de Mendizábal Colonia Nueva Industrial Vallejo, Alcadía Gustavo A. Madero, Ciudad de México 07738, Mexico

2. Institut Supérieur Pédagogique Technique de Kinshasa (ISPT-KIN), Av. de la Science 5, Gombe, Kinshasa 3287, Democratic Republic of the Congo

3. Telematics and Digital Signal Processing Research Groups (CAs), Department of Electronics Engineering, University of Guanajuato, Salamanca 36885, Mexico

4. Institut Supérieur des Techniques Appliquées (ISTA-NDOLO), Avenue de l’aérodrome, Kinshasa 6593, Democratic Republic of the Congo

Abstract

Brain–Computer Interfaces (BCIs) communicate between a given user and their nearest environment through brain signals. In the case of device handling, an accurate control-based BCI depends essentially on how the user performs corresponding mental tasks. In the BCI illiteracy-related literature, one subject could perform a defined paradigm better than another. Therefore, this work aims to identify recorded Electroencephalogram (EEG) signal segments related to the executed and imagined motor tasks for BCI system applications. The proposed approach implements pass-band filters and the Fast Independent Component Analysis (FastICA) algorithm to separate independent sources from raw EEG signals. Next, EEG features of selected channels are extracted using Hjorth parameters. Finally, a Support Vector Machines (SVMs)-based classifier identifies executed and imagined motor features. Concretely, the Physionet dataset, related to executed and imagined motor EEG signals, provided training, testing, and validating data. The numerical results let us discriminate between executed and imagined motor tasks accurately. Therefore, the proposed method offers a reliable alternative to extract EEG features for BCI based on executed and imagined movements.

Funder

Centro de Investigación en Computación–Instituto Politécnico Nacional

University of Guanajuato

Mexican Council of Humanities, Science, and Technology

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference52 articles.

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