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Driver Stress Detection Using Ultra-Short-Term HRV Analysis under Real World Driving Conditions

Considering that driving stress is a major contributor to traffic accidents, detecting drivers’ stress levels in time is helpful for ensuring driving safety. This paper attempts to investigate the ability of ultra-short-term (30-s, 1-min, 2-min, and 3-min) HRV analysis for driver stress detection un...

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Autores principales: Liu, Kun, Jiao, Yubo, Du, Congcong, Zhang, Xiaoming, Chen, Xiaoyu, Xu, Fang, Jiang, Chaozhe
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9955749/
https://www.ncbi.nlm.nih.gov/pubmed/36832561
http://dx.doi.org/10.3390/e25020194
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author Liu, Kun
Jiao, Yubo
Du, Congcong
Zhang, Xiaoming
Chen, Xiaoyu
Xu, Fang
Jiang, Chaozhe
author_facet Liu, Kun
Jiao, Yubo
Du, Congcong
Zhang, Xiaoming
Chen, Xiaoyu
Xu, Fang
Jiang, Chaozhe
author_sort Liu, Kun
collection PubMed
description Considering that driving stress is a major contributor to traffic accidents, detecting drivers’ stress levels in time is helpful for ensuring driving safety. This paper attempts to investigate the ability of ultra-short-term (30-s, 1-min, 2-min, and 3-min) HRV analysis for driver stress detection under real driving circumstances. Specifically, the t-test was used to investigate whether there were significant differences in HRV features under different stress levels. Ultra-short-term HRV features were compared with the corresponding short-term (5-min) features during low-stress and high-stress phases by the Spearman rank correlation and Bland–Altman plots analysis. Furthermore, four different machine-learning classifiers, including a support vector machine (SVM), random forests (RFs), K-nearest neighbor (KNN), and Adaboost, were evaluated for stress detection. The results show that the HRV features extracted from ultra-short-term epochs were able to detect binary drivers’ stress levels accurately. In particular, although the capability of HRV features in detecting driver stress also varied between different ultra-short-term epochs, MeanNN, SDNN, NN20, and MeanHR were selected as valid surrogates of short-term features for driver stress detection across the different epochs. For drivers’ stress levels classification, the best performance was achieved with the SVM classifier, with an accuracy of 85.3% using 3-min HRV features. This study makes a contribution to building a robust and effective stress detection system using ultra-short-term HRV features under actual driving environments.
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spelling pubmed-99557492023-02-25 Driver Stress Detection Using Ultra-Short-Term HRV Analysis under Real World Driving Conditions Liu, Kun Jiao, Yubo Du, Congcong Zhang, Xiaoming Chen, Xiaoyu Xu, Fang Jiang, Chaozhe Entropy (Basel) Article Considering that driving stress is a major contributor to traffic accidents, detecting drivers’ stress levels in time is helpful for ensuring driving safety. This paper attempts to investigate the ability of ultra-short-term (30-s, 1-min, 2-min, and 3-min) HRV analysis for driver stress detection under real driving circumstances. Specifically, the t-test was used to investigate whether there were significant differences in HRV features under different stress levels. Ultra-short-term HRV features were compared with the corresponding short-term (5-min) features during low-stress and high-stress phases by the Spearman rank correlation and Bland–Altman plots analysis. Furthermore, four different machine-learning classifiers, including a support vector machine (SVM), random forests (RFs), K-nearest neighbor (KNN), and Adaboost, were evaluated for stress detection. The results show that the HRV features extracted from ultra-short-term epochs were able to detect binary drivers’ stress levels accurately. In particular, although the capability of HRV features in detecting driver stress also varied between different ultra-short-term epochs, MeanNN, SDNN, NN20, and MeanHR were selected as valid surrogates of short-term features for driver stress detection across the different epochs. For drivers’ stress levels classification, the best performance was achieved with the SVM classifier, with an accuracy of 85.3% using 3-min HRV features. This study makes a contribution to building a robust and effective stress detection system using ultra-short-term HRV features under actual driving environments. MDPI 2023-01-19 /pmc/articles/PMC9955749/ /pubmed/36832561 http://dx.doi.org/10.3390/e25020194 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
Liu, Kun
Jiao, Yubo
Du, Congcong
Zhang, Xiaoming
Chen, Xiaoyu
Xu, Fang
Jiang, Chaozhe
Driver Stress Detection Using Ultra-Short-Term HRV Analysis under Real World Driving Conditions
title Driver Stress Detection Using Ultra-Short-Term HRV Analysis under Real World Driving Conditions
title_full Driver Stress Detection Using Ultra-Short-Term HRV Analysis under Real World Driving Conditions
title_fullStr Driver Stress Detection Using Ultra-Short-Term HRV Analysis under Real World Driving Conditions
title_full_unstemmed Driver Stress Detection Using Ultra-Short-Term HRV Analysis under Real World Driving Conditions
title_short Driver Stress Detection Using Ultra-Short-Term HRV Analysis under Real World Driving Conditions
title_sort driver stress detection using ultra-short-term hrv analysis under real world driving conditions
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9955749/
https://www.ncbi.nlm.nih.gov/pubmed/36832561
http://dx.doi.org/10.3390/e25020194
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