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Main Authors: Avramidis, Kleanthis, Zhou, Emily, Feng, Tiantian, Shishavan, Hossein Hamidi, Severgnini, Frederico Marcolino Quintao, Lohan, Danny J., Schmalenberg, Paul, Dede, Ercan M., Narayanan, Shrikanth
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.14146
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author Avramidis, Kleanthis
Zhou, Emily
Feng, Tiantian
Shishavan, Hossein Hamidi
Severgnini, Frederico Marcolino Quintao
Lohan, Danny J.
Schmalenberg, Paul
Dede, Ercan M.
Narayanan, Shrikanth
author_facet Avramidis, Kleanthis
Zhou, Emily
Feng, Tiantian
Shishavan, Hossein Hamidi
Severgnini, Frederico Marcolino Quintao
Lohan, Danny J.
Schmalenberg, Paul
Dede, Ercan M.
Narayanan, Shrikanth
contents Understanding and mitigating driving stress is vital for preventing accidents and advancing both road safety and driver well-being. While vehicles are equipped with increasingly sophisticated safety systems, many limits exist in their ability to account for variable driving behaviors and environmental contexts. In this study we examine how short-term stressor events impact drivers' physiology and their behavioral responses behind the wheel. Leveraging a controlled driving simulation setup, we collected physiological signals from 31 adult participants and designed a multimodal machine learning system to estimate the presence of stressors. Our analysis explores the model sensitivity and temporal dynamics against both known and novel emotional inducers, and examines the relationship between predicted stress and observable patterns of vehicle control. Overall, this study demonstrates the potential of linking physiological signals with contextual and behavioral cues in order to improve real-time estimation of driving stress.
format Preprint
id arxiv_https___arxiv_org_abs_2507_14146
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Estimating Markers of Driving Stress through Multimodal Physiological Monitoring
Avramidis, Kleanthis
Zhou, Emily
Feng, Tiantian
Shishavan, Hossein Hamidi
Severgnini, Frederico Marcolino Quintao
Lohan, Danny J.
Schmalenberg, Paul
Dede, Ercan M.
Narayanan, Shrikanth
Signal Processing
Understanding and mitigating driving stress is vital for preventing accidents and advancing both road safety and driver well-being. While vehicles are equipped with increasingly sophisticated safety systems, many limits exist in their ability to account for variable driving behaviors and environmental contexts. In this study we examine how short-term stressor events impact drivers' physiology and their behavioral responses behind the wheel. Leveraging a controlled driving simulation setup, we collected physiological signals from 31 adult participants and designed a multimodal machine learning system to estimate the presence of stressors. Our analysis explores the model sensitivity and temporal dynamics against both known and novel emotional inducers, and examines the relationship between predicted stress and observable patterns of vehicle control. Overall, this study demonstrates the potential of linking physiological signals with contextual and behavioral cues in order to improve real-time estimation of driving stress.
title Estimating Markers of Driving Stress through Multimodal Physiological Monitoring
topic Signal Processing
url https://arxiv.org/abs/2507.14146