Asynchronous multiclass mental tasks classification through very fast Versatile elliptic basis function neural network

Developing efficient and usable brain-computer interfaces (BCIs) requires well-designed trade-off between accuracy and computational time. This paper presents a very fast and accurate method to classify asynchronous brain signals from a multi-class mental tasks dataset using time-domain features. Fi...

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Main Authors: Hamedi, M., Salleh, S. H., Mohammad-Rezazadeh, I., Astaraki, M., Mohd. Noor, A.
Format: Conference or Workshop Item
Published: 2015
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Online Access:http://eprints.utm.my/id/eprint/59164/
http://dx.doi.org/10.1109/IECBES.2014.7047506
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spelling my.utm.591642022-04-05T05:54:39Z http://eprints.utm.my/id/eprint/59164/ Asynchronous multiclass mental tasks classification through very fast Versatile elliptic basis function neural network Hamedi, M. Salleh, S. H. Mohammad-Rezazadeh, I. Astaraki, M. Mohd. Noor, A. TJ Mechanical engineering and machinery Developing efficient and usable brain-computer interfaces (BCIs) requires well-designed trade-off between accuracy and computational time. This paper presents a very fast and accurate method to classify asynchronous brain signals from a multi-class mental tasks dataset using time-domain features. Five different statistical time-domain features were extracted to characterize various properties of three mental tasks electroencephalograms (EEGs). Versatile Elliptic Basis Function Neural Network (VEBFNN) was employed to classify single EEG features as well as multi-feature set. Discriminating power of single features was evaluated and compared by considering the classification accuracy and computational cost consumed during the training stage. Finally, the performance of the best single EEG feature was compared to the multi-feature set. The results indicated the usefulness of Willison Amplitude EEG feature in classifying the different motor tasks as it provided the highest discrimination ratio. Classification results showed the high potential of VEBFNN by the average 89.78% accuracy and 0.21 seconds computation time obtained for its offline training. Moreover, VEBFNN outperformed the conventional support vector machine classifier in both terms of accuracy and speed. 2015 Conference or Workshop Item PeerReviewed Hamedi, M. and Salleh, S. H. and Mohammad-Rezazadeh, I. and Astaraki, M. and Mohd. Noor, A. (2015) Asynchronous multiclass mental tasks classification through very fast Versatile elliptic basis function neural network. In: 3rd IEEE Conference on Biomedical Engineering and Sciences, IECBES 2014, 8 - 10 December 2014, Kuala Lumpur, Malaysia. http://dx.doi.org/10.1109/IECBES.2014.7047506
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic TJ Mechanical engineering and machinery
spellingShingle TJ Mechanical engineering and machinery
Hamedi, M.
Salleh, S. H.
Mohammad-Rezazadeh, I.
Astaraki, M.
Mohd. Noor, A.
Asynchronous multiclass mental tasks classification through very fast Versatile elliptic basis function neural network
description Developing efficient and usable brain-computer interfaces (BCIs) requires well-designed trade-off between accuracy and computational time. This paper presents a very fast and accurate method to classify asynchronous brain signals from a multi-class mental tasks dataset using time-domain features. Five different statistical time-domain features were extracted to characterize various properties of three mental tasks electroencephalograms (EEGs). Versatile Elliptic Basis Function Neural Network (VEBFNN) was employed to classify single EEG features as well as multi-feature set. Discriminating power of single features was evaluated and compared by considering the classification accuracy and computational cost consumed during the training stage. Finally, the performance of the best single EEG feature was compared to the multi-feature set. The results indicated the usefulness of Willison Amplitude EEG feature in classifying the different motor tasks as it provided the highest discrimination ratio. Classification results showed the high potential of VEBFNN by the average 89.78% accuracy and 0.21 seconds computation time obtained for its offline training. Moreover, VEBFNN outperformed the conventional support vector machine classifier in both terms of accuracy and speed.
format Conference or Workshop Item
author Hamedi, M.
Salleh, S. H.
Mohammad-Rezazadeh, I.
Astaraki, M.
Mohd. Noor, A.
author_facet Hamedi, M.
Salleh, S. H.
Mohammad-Rezazadeh, I.
Astaraki, M.
Mohd. Noor, A.
author_sort Hamedi, M.
title Asynchronous multiclass mental tasks classification through very fast Versatile elliptic basis function neural network
title_short Asynchronous multiclass mental tasks classification through very fast Versatile elliptic basis function neural network
title_full Asynchronous multiclass mental tasks classification through very fast Versatile elliptic basis function neural network
title_fullStr Asynchronous multiclass mental tasks classification through very fast Versatile elliptic basis function neural network
title_full_unstemmed Asynchronous multiclass mental tasks classification through very fast Versatile elliptic basis function neural network
title_sort asynchronous multiclass mental tasks classification through very fast versatile elliptic basis function neural network
publishDate 2015
url http://eprints.utm.my/id/eprint/59164/
http://dx.doi.org/10.1109/IECBES.2014.7047506
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score 13.211869