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A Novel Mutual Information Based Feature Set for Drivers’ Mental Workload Evaluation Using Machine Learning

Analysis of physiological signals, electroencephalography more specifically, is considered a very promising technique to obtain objective measures for mental workload evaluation, however, it requires a complex apparatus to record, and thus, with poor usability in monitoring in-vehicle drivers’ menta...

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Autores principales: Islam, Mir Riyanul, Barua, Shaibal, Ahmed, Mobyen Uddin, Begum, Shahina, Aricò, Pietro, Borghini, Gianluca, Di Flumeri, Gianluca
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7465285/
https://www.ncbi.nlm.nih.gov/pubmed/32823582
http://dx.doi.org/10.3390/brainsci10080551
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author Islam, Mir Riyanul
Barua, Shaibal
Ahmed, Mobyen Uddin
Begum, Shahina
Aricò, Pietro
Borghini, Gianluca
Di Flumeri, Gianluca
author_facet Islam, Mir Riyanul
Barua, Shaibal
Ahmed, Mobyen Uddin
Begum, Shahina
Aricò, Pietro
Borghini, Gianluca
Di Flumeri, Gianluca
author_sort Islam, Mir Riyanul
collection PubMed
description Analysis of physiological signals, electroencephalography more specifically, is considered a very promising technique to obtain objective measures for mental workload evaluation, however, it requires a complex apparatus to record, and thus, with poor usability in monitoring in-vehicle drivers’ mental workload. This study proposes a methodology of constructing a novel mutual information-based feature set from the fusion of electroencephalography and vehicular signals acquired through a real driving experiment and deployed in evaluating drivers’ mental workload. Mutual information of electroencephalography and vehicular signals were used as the prime factor for the fusion of features. In order to assess the reliability of the developed feature set mental workload score prediction, classification and event classification tasks were performed using different machine learning models. Moreover, features extracted from electroencephalography were used to compare the performance. In the prediction of mental workload score, expert-defined scores were used as the target values. For classification tasks, true labels were set from contextual information of the experiment. An extensive evaluation of every prediction tasks was carried out using different validation methods. In predicting the mental workload score from the proposed feature set lowest mean absolute error was 0.09 and for classifying mental workload highest accuracy was 94%. According to the outcome of the study, it can be stated that the novel mutual information based features developed through the proposed approach can be employed to classify and monitor in-vehicle drivers’ mental workload.
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spelling pubmed-74652852020-09-04 A Novel Mutual Information Based Feature Set for Drivers’ Mental Workload Evaluation Using Machine Learning Islam, Mir Riyanul Barua, Shaibal Ahmed, Mobyen Uddin Begum, Shahina Aricò, Pietro Borghini, Gianluca Di Flumeri, Gianluca Brain Sci Article Analysis of physiological signals, electroencephalography more specifically, is considered a very promising technique to obtain objective measures for mental workload evaluation, however, it requires a complex apparatus to record, and thus, with poor usability in monitoring in-vehicle drivers’ mental workload. This study proposes a methodology of constructing a novel mutual information-based feature set from the fusion of electroencephalography and vehicular signals acquired through a real driving experiment and deployed in evaluating drivers’ mental workload. Mutual information of electroencephalography and vehicular signals were used as the prime factor for the fusion of features. In order to assess the reliability of the developed feature set mental workload score prediction, classification and event classification tasks were performed using different machine learning models. Moreover, features extracted from electroencephalography were used to compare the performance. In the prediction of mental workload score, expert-defined scores were used as the target values. For classification tasks, true labels were set from contextual information of the experiment. An extensive evaluation of every prediction tasks was carried out using different validation methods. In predicting the mental workload score from the proposed feature set lowest mean absolute error was 0.09 and for classifying mental workload highest accuracy was 94%. According to the outcome of the study, it can be stated that the novel mutual information based features developed through the proposed approach can be employed to classify and monitor in-vehicle drivers’ mental workload. MDPI 2020-08-13 /pmc/articles/PMC7465285/ /pubmed/32823582 http://dx.doi.org/10.3390/brainsci10080551 Text en © 2020 by the authors. 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 (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Islam, Mir Riyanul
Barua, Shaibal
Ahmed, Mobyen Uddin
Begum, Shahina
Aricò, Pietro
Borghini, Gianluca
Di Flumeri, Gianluca
A Novel Mutual Information Based Feature Set for Drivers’ Mental Workload Evaluation Using Machine Learning
title A Novel Mutual Information Based Feature Set for Drivers’ Mental Workload Evaluation Using Machine Learning
title_full A Novel Mutual Information Based Feature Set for Drivers’ Mental Workload Evaluation Using Machine Learning
title_fullStr A Novel Mutual Information Based Feature Set for Drivers’ Mental Workload Evaluation Using Machine Learning
title_full_unstemmed A Novel Mutual Information Based Feature Set for Drivers’ Mental Workload Evaluation Using Machine Learning
title_short A Novel Mutual Information Based Feature Set for Drivers’ Mental Workload Evaluation Using Machine Learning
title_sort novel mutual information based feature set for drivers’ mental workload evaluation using machine learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7465285/
https://www.ncbi.nlm.nih.gov/pubmed/32823582
http://dx.doi.org/10.3390/brainsci10080551
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