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Subtractive Fuzzy Classifier Based Driver Distraction Levels Classification Using EEG

[Purpose] In earlier studies of driver distraction, researchers classified distraction into two levels (not distracted, and distracted). This study classified four levels of distraction (neutral, low, medium, high). [Subjects and Methods] Fifty Asian subjects (n=50, 43 males, 7 females), age range 2...

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Autores principales: Wali, Mousa Kadhim, Murugappan, Murugappan, Ahmad, Badlishah
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Society of Physical Therapy Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3818778/
https://www.ncbi.nlm.nih.gov/pubmed/24259914
http://dx.doi.org/10.1589/jpts.25.1055
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author Wali, Mousa Kadhim
Murugappan, Murugappan
Ahmad, Badlishah
author_facet Wali, Mousa Kadhim
Murugappan, Murugappan
Ahmad, Badlishah
author_sort Wali, Mousa Kadhim
collection PubMed
description [Purpose] In earlier studies of driver distraction, researchers classified distraction into two levels (not distracted, and distracted). This study classified four levels of distraction (neutral, low, medium, high). [Subjects and Methods] Fifty Asian subjects (n=50, 43 males, 7 females), age range 20–35 years, who were free from any disease, participated in this study. Wireless EEG signals were recorded by 14 electrodes during four types of distraction stimuli (Global Position Systems (GPS), music player, short message service (SMS), and mental tasks). We derived the amplitude spectrum of three different frequency bands, theta, alpha, and beta of EEG. Then, based on fusion of discrete wavelet packet transforms and fast fourier transform yield, we extracted two features (power spectral density, spectral centroid frequency) of different wavelets (db4, db8, sym8, and coif5). Mean ± SD was calculated and analysis of variance (ANOVA) was performed. A fuzzy inference system classifier was applied to different wavelets using the two extracted features. [Results] The results indicate that the two features of sym8 posses highly significant discrimination across the four levels of distraction, and the best average accuracy achieved by the subtractive fuzzy classifier was 79.21% using the power spectral density feature extracted using the sym8 wavelet. [Conclusion] These findings suggest that EEG signals can be used to monitor distraction level intensity in order to alert drivers to high levels of distraction.
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spelling pubmed-38187782013-11-20 Subtractive Fuzzy Classifier Based Driver Distraction Levels Classification Using EEG Wali, Mousa Kadhim Murugappan, Murugappan Ahmad, Badlishah J Phys Ther Sci Original [Purpose] In earlier studies of driver distraction, researchers classified distraction into two levels (not distracted, and distracted). This study classified four levels of distraction (neutral, low, medium, high). [Subjects and Methods] Fifty Asian subjects (n=50, 43 males, 7 females), age range 20–35 years, who were free from any disease, participated in this study. Wireless EEG signals were recorded by 14 electrodes during four types of distraction stimuli (Global Position Systems (GPS), music player, short message service (SMS), and mental tasks). We derived the amplitude spectrum of three different frequency bands, theta, alpha, and beta of EEG. Then, based on fusion of discrete wavelet packet transforms and fast fourier transform yield, we extracted two features (power spectral density, spectral centroid frequency) of different wavelets (db4, db8, sym8, and coif5). Mean ± SD was calculated and analysis of variance (ANOVA) was performed. A fuzzy inference system classifier was applied to different wavelets using the two extracted features. [Results] The results indicate that the two features of sym8 posses highly significant discrimination across the four levels of distraction, and the best average accuracy achieved by the subtractive fuzzy classifier was 79.21% using the power spectral density feature extracted using the sym8 wavelet. [Conclusion] These findings suggest that EEG signals can be used to monitor distraction level intensity in order to alert drivers to high levels of distraction. The Society of Physical Therapy Science 2013-10-20 2013-09 /pmc/articles/PMC3818778/ /pubmed/24259914 http://dx.doi.org/10.1589/jpts.25.1055 Text en 2013©by the Society of Physical Therapy Science http://creativecommons.org/licenses/by-nc-nd/3.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution Non-Commercial No Derivatives (by-nc-nd) License.
spellingShingle Original
Wali, Mousa Kadhim
Murugappan, Murugappan
Ahmad, Badlishah
Subtractive Fuzzy Classifier Based Driver Distraction Levels Classification Using EEG
title Subtractive Fuzzy Classifier Based Driver Distraction Levels Classification Using EEG
title_full Subtractive Fuzzy Classifier Based Driver Distraction Levels Classification Using EEG
title_fullStr Subtractive Fuzzy Classifier Based Driver Distraction Levels Classification Using EEG
title_full_unstemmed Subtractive Fuzzy Classifier Based Driver Distraction Levels Classification Using EEG
title_short Subtractive Fuzzy Classifier Based Driver Distraction Levels Classification Using EEG
title_sort subtractive fuzzy classifier based driver distraction levels classification using eeg
topic Original
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3818778/
https://www.ncbi.nlm.nih.gov/pubmed/24259914
http://dx.doi.org/10.1589/jpts.25.1055
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