Robust classification of motor imagery EEG signals using statistical time–domain features

The tradeoff between computational complexity and speed, in addition to growing demands for real-time BMI (brain–machine interface) systems, expose the necessity of applying methods with least possible complexity. Willison amplitude (WAMP) and slope sign change (SSC) are two promising time– domain...

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Main Authors: Khorshidtalab, Aida, Salami, Momoh Jimoh Eyiomika, Hamedi , Mahyar
Format: Article
Language:English
Published: IOP Publishing 2013
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Online Access:http://irep.iium.edu.my/33034/1/0967-3334_34_11_1563.pdf
http://irep.iium.edu.my/33034/
http://iopscience.iop.org/0967-3334/34/11/1563
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spelling my.iium.irep.330342014-01-08T01:45:36Z http://irep.iium.edu.my/33034/ Robust classification of motor imagery EEG signals using statistical time–domain features Khorshidtalab, Aida Salami, Momoh Jimoh Eyiomika Hamedi , Mahyar QP Physiology The tradeoff between computational complexity and speed, in addition to growing demands for real-time BMI (brain–machine interface) systems, expose the necessity of applying methods with least possible complexity. Willison amplitude (WAMP) and slope sign change (SSC) are two promising time– domain features only if the right threshold value is defined for them. To overcome the drawback of going through trial and error for the determination of a suitable threshold value, modified WAMP and modified SSC are proposed in this paper. Besides, a comprehensive assessment of statistical time–domain features in which their effectiveness is evaluated with a support vector machine (SVM) is presented. To ensure the accuracy of the results obtained by the SVM, the performance of each feature is reassessed with supervised fuzzy C-means. The general assessment shows that every subject had at least one of his performances near or greater than 80%. The obtained results prove that for BMI applications, in which a few errors can be tolerated, these combinations of feature–classifier are suitable. Moreover, features that could perform satisfactorily were selected for feature combination. Combinations of the selected features are evaluated with the SVM, and they could significantly improve the results, in some cases, up to full accuracy. IOP Publishing 2013-10-24 Article REM application/pdf en http://irep.iium.edu.my/33034/1/0967-3334_34_11_1563.pdf Khorshidtalab, Aida and Salami, Momoh Jimoh Eyiomika and Hamedi , Mahyar (2013) Robust classification of motor imagery EEG signals using statistical time–domain features. Physiological Measurement, 34 . pp. 1563-1579. ISSN 1361-6579 (O), 0967-3334 (P) http://iopscience.iop.org/0967-3334/34/11/1563 10.1088/0967-3334/34/11/1563
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
topic QP Physiology
spellingShingle QP Physiology
Khorshidtalab, Aida
Salami, Momoh Jimoh Eyiomika
Hamedi , Mahyar
Robust classification of motor imagery EEG signals using statistical time–domain features
description The tradeoff between computational complexity and speed, in addition to growing demands for real-time BMI (brain–machine interface) systems, expose the necessity of applying methods with least possible complexity. Willison amplitude (WAMP) and slope sign change (SSC) are two promising time– domain features only if the right threshold value is defined for them. To overcome the drawback of going through trial and error for the determination of a suitable threshold value, modified WAMP and modified SSC are proposed in this paper. Besides, a comprehensive assessment of statistical time–domain features in which their effectiveness is evaluated with a support vector machine (SVM) is presented. To ensure the accuracy of the results obtained by the SVM, the performance of each feature is reassessed with supervised fuzzy C-means. The general assessment shows that every subject had at least one of his performances near or greater than 80%. The obtained results prove that for BMI applications, in which a few errors can be tolerated, these combinations of feature–classifier are suitable. Moreover, features that could perform satisfactorily were selected for feature combination. Combinations of the selected features are evaluated with the SVM, and they could significantly improve the results, in some cases, up to full accuracy.
format Article
author Khorshidtalab, Aida
Salami, Momoh Jimoh Eyiomika
Hamedi , Mahyar
author_facet Khorshidtalab, Aida
Salami, Momoh Jimoh Eyiomika
Hamedi , Mahyar
author_sort Khorshidtalab, Aida
title Robust classification of motor imagery EEG signals using statistical time–domain features
title_short Robust classification of motor imagery EEG signals using statistical time–domain features
title_full Robust classification of motor imagery EEG signals using statistical time–domain features
title_fullStr Robust classification of motor imagery EEG signals using statistical time–domain features
title_full_unstemmed Robust classification of motor imagery EEG signals using statistical time–domain features
title_sort robust classification of motor imagery eeg signals using statistical time–domain features
publisher IOP Publishing
publishDate 2013
url http://irep.iium.edu.my/33034/1/0967-3334_34_11_1563.pdf
http://irep.iium.edu.my/33034/
http://iopscience.iop.org/0967-3334/34/11/1563
_version_ 1643610350129512448
score 13.159004