A dataset on the physiological state and behavior of drivers in conditionally automated driving
Version
Published
Date Issued
2023-03-06
Author(s)
Meteier, Quentin
Capallera, Marine
de Salis, Emmanuel
Angelini, Leonardo
Carrino, Stefano
Widmer, Marino
Khaled, Omar Abou
Mugellini, Elena
Type
Article
Language
English
Subjects
Abstract
This dataset contains data of 346 drivers collected during six experiments conducted in a fixed-base driving simulator. Five studies simulated conditionally automated driving (L3 SAE), and the other one simulated manual driving (L0-SAE). The dataset includes physiological data (electrocardiogram (ECG), electrodermal activity (EDA), and respiration (RESP)), driving and behavioral data (reaction time, steering wheel angle, …), performance data of non-driving-related tasks, and questionnaire responses. Among them, measures from standardized questionnaires were collected, either to control the experimental manipulation of the driver's state, or to measure constructs related to human factors and driving safety (drowsiness, mental workload, affective state, situation awareness, situational trust, user experience).
In the provided dataset, some raw data have been processed, notably physiological data from which physiological indicators (or features) have been calculated. The latter can be used as input for machine learning models to predict various states (sleep deprivation, high mental workload, ...) that may be critical for driver safety. Subjective self-reported measures can also be used as ground truth to apply regression techniques. Besides that, statistical analyses can be performed using the dataset, in particular to analyze the situational awareness or the takeover quality of drivers, in different states and different driving scenarios.
Overall, this dataset contributes to better understanding and consideration of the driver's state and behavior in conditionally automated driving. In addition, this dataset stimulates and inspires research in the fields of physiological/affective computing and human factors in transportation, and allows companies from the automotive industry to better design adapted human-vehicle interfaces for safe use of automated vehicles on the roads.
In the provided dataset, some raw data have been processed, notably physiological data from which physiological indicators (or features) have been calculated. The latter can be used as input for machine learning models to predict various states (sleep deprivation, high mental workload, ...) that may be critical for driver safety. Subjective self-reported measures can also be used as ground truth to apply regression techniques. Besides that, statistical analyses can be performed using the dataset, in particular to analyze the situational awareness or the takeover quality of drivers, in different states and different driving scenarios.
Overall, this dataset contributes to better understanding and consideration of the driver's state and behavior in conditionally automated driving. In addition, this dataset stimulates and inspires research in the fields of physiological/affective computing and human factors in transportation, and allows companies from the automotive industry to better design adapted human-vehicle interfaces for safe use of automated vehicles on the roads.
Subjects
BF Psychology
QA75 Electronic computers. Computer science
TL Motor vehicles. Aeronautics. Astronautics
Publisher DOI
Journal
Data in Brief
ISSN
23523409
Publisher URL
Volume
47
Publisher
Elsevier, Science Direkt
Submitter
Sonderegger, Andreas
Citation apa
Meteier, Q., Capallera, M., de Salis, E., Angelini, L., Carrino, S., Widmer, M., Khaled, O. A., Mugellini, E., & Sonderegger, A. (2023). A dataset on the physiological state and behavior of drivers in conditionally automated driving. In Data in Brief (Vol. 47). Elsevier, Science Direkt. https://doi.org/10.24451/arbor.18920
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