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Motor Imagery Multi-Tasks Classification for BCIs Using the NVIDIA Jetson TX2 Board and the EEGNet Network

Nowadays, Brain–Computer Interfaces (BCIs) still captivate large interest because of multiple advantages offered in numerous domains, explicitly assisting people with motor disabilities in communicating with the surrounding environment. However, challenges of portability, instantaneous processing ti...

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Autores principales: Mwata-Velu, Tat’y, Niyonsaba-Sebigunda, Edson, Avina-Cervantes, Juan Gabriel, Ruiz-Pinales, Jose, Velu-A-Gulenga, Narcisse, Alonso-Ramírez, Adán Antonio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10145994/
https://www.ncbi.nlm.nih.gov/pubmed/37112504
http://dx.doi.org/10.3390/s23084164
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author Mwata-Velu, Tat’y
Niyonsaba-Sebigunda, Edson
Avina-Cervantes, Juan Gabriel
Ruiz-Pinales, Jose
Velu-A-Gulenga, Narcisse
Alonso-Ramírez, Adán Antonio
author_facet Mwata-Velu, Tat’y
Niyonsaba-Sebigunda, Edson
Avina-Cervantes, Juan Gabriel
Ruiz-Pinales, Jose
Velu-A-Gulenga, Narcisse
Alonso-Ramírez, Adán Antonio
author_sort Mwata-Velu, Tat’y
collection PubMed
description Nowadays, Brain–Computer Interfaces (BCIs) still captivate large interest because of multiple advantages offered in numerous domains, explicitly assisting people with motor disabilities in communicating with the surrounding environment. However, challenges of portability, instantaneous processing time, and accurate data processing remain for numerous BCI system setups. This work implements an embedded multi-tasks classifier based on motor imagery using the EEGNet network integrated into the NVIDIA Jetson TX2 card. Therefore, two strategies are developed to select the most discriminant channels. The former uses the accuracy based-classifier criterion, while the latter evaluates electrode mutual information to form discriminant channel subsets. Next, the EEGNet network is implemented to classify discriminant channel signals. Additionally, a cyclic learning algorithm is implemented at the software level to accelerate the model learning convergence and fully profit from the NJT2 hardware resources. Finally, motor imagery Electroencephalogram (EEG) signals provided by HaLT’s public benchmark were used, in addition to the k-fold cross-validation method. Average accuracies of 83.7% and 81.3% were achieved by classifying EEG signals per subject and motor imagery task, respectively. Each task was processed with an average latency of 48.7 ms. This framework offers an alternative for online EEG-BCI systems’ requirements, dealing with short processing times and reliable classification accuracy.
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spelling pubmed-101459942023-04-29 Motor Imagery Multi-Tasks Classification for BCIs Using the NVIDIA Jetson TX2 Board and the EEGNet Network Mwata-Velu, Tat’y Niyonsaba-Sebigunda, Edson Avina-Cervantes, Juan Gabriel Ruiz-Pinales, Jose Velu-A-Gulenga, Narcisse Alonso-Ramírez, Adán Antonio Sensors (Basel) Article Nowadays, Brain–Computer Interfaces (BCIs) still captivate large interest because of multiple advantages offered in numerous domains, explicitly assisting people with motor disabilities in communicating with the surrounding environment. However, challenges of portability, instantaneous processing time, and accurate data processing remain for numerous BCI system setups. This work implements an embedded multi-tasks classifier based on motor imagery using the EEGNet network integrated into the NVIDIA Jetson TX2 card. Therefore, two strategies are developed to select the most discriminant channels. The former uses the accuracy based-classifier criterion, while the latter evaluates electrode mutual information to form discriminant channel subsets. Next, the EEGNet network is implemented to classify discriminant channel signals. Additionally, a cyclic learning algorithm is implemented at the software level to accelerate the model learning convergence and fully profit from the NJT2 hardware resources. Finally, motor imagery Electroencephalogram (EEG) signals provided by HaLT’s public benchmark were used, in addition to the k-fold cross-validation method. Average accuracies of 83.7% and 81.3% were achieved by classifying EEG signals per subject and motor imagery task, respectively. Each task was processed with an average latency of 48.7 ms. This framework offers an alternative for online EEG-BCI systems’ requirements, dealing with short processing times and reliable classification accuracy. MDPI 2023-04-21 /pmc/articles/PMC10145994/ /pubmed/37112504 http://dx.doi.org/10.3390/s23084164 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Mwata-Velu, Tat’y
Niyonsaba-Sebigunda, Edson
Avina-Cervantes, Juan Gabriel
Ruiz-Pinales, Jose
Velu-A-Gulenga, Narcisse
Alonso-Ramírez, Adán Antonio
Motor Imagery Multi-Tasks Classification for BCIs Using the NVIDIA Jetson TX2 Board and the EEGNet Network
title Motor Imagery Multi-Tasks Classification for BCIs Using the NVIDIA Jetson TX2 Board and the EEGNet Network
title_full Motor Imagery Multi-Tasks Classification for BCIs Using the NVIDIA Jetson TX2 Board and the EEGNet Network
title_fullStr Motor Imagery Multi-Tasks Classification for BCIs Using the NVIDIA Jetson TX2 Board and the EEGNet Network
title_full_unstemmed Motor Imagery Multi-Tasks Classification for BCIs Using the NVIDIA Jetson TX2 Board and the EEGNet Network
title_short Motor Imagery Multi-Tasks Classification for BCIs Using the NVIDIA Jetson TX2 Board and the EEGNet Network
title_sort motor imagery multi-tasks classification for bcis using the nvidia jetson tx2 board and the eegnet network
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10145994/
https://www.ncbi.nlm.nih.gov/pubmed/37112504
http://dx.doi.org/10.3390/s23084164
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