Eye movements predict driver reaction time to takeover request in automated driving: A real-vehicle study |
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Affiliation: | 1. Human-centered Mobility Research Center, National Institute of Advanced Industrial Science and Technology, Japan;2. DENSO CORPORATION, Japan;1. VEDECOM (Institute for Decarbonized, Connected Vehicles and New Mobility Solutions), France;2. Virtual Reality and Immersive Simulation Center, Renault, Technocentre, France;3. Laboratory of Driver Psychology, IFSTTAR, France;4. Renault, Technocentre, France;1. Centre for Accident Research and Road Safety-Queensland (CARRS-Q), Institute of Health and Biomedical Innovation (IHBI), Queensland University of Technology, Kelvin Grove, Queensland 4059, Australia;2. Seeing Machines Ltd., Fyshwick, ACT, Australia;1. Department of Sociology, Anthropology and Criminal Justice, Clemson University, Clemson, SC, United States;2. School of Civil and Environmental Engineering, Georgia Institute of Technology, Atlanta, GA, United States |
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Abstract: | For automated driving at SAE level 3 or lower, driver performance in responding to takeover requests (TORs) is decisive in providing system safety. A driver state monitoring system that can predict a driver’s performance in a TOR event will facilitate a safer control transition from vehicle to driver. This experimental study investigated whether driver eye-movement measured before a TOR can predict driving performance in a subsequent TOR event. We recruited participants (N = 36) to obtain realistic results in a real-vehicle study. In the experiment, drivers rode in an automated vehicle on a test track for about 32 min, and a critical TOR event occurred at the end of the drive. Eye movements were measured by a camera-based driver monitoring system, and five measures were extracted from the last 2-min epoch prior to the TOR event. The correlations between each eye-movement measure and driver reaction time were examined, and a multiple regression model was built using a stepwise procedure. The results showed that longer reaction time could be significantly predicted by a smaller number of large saccades, a greater number of medium saccades, and lower saccadic velocity. The implications of these relationships are consistent with previous studies. The present real-vehicle study can provide insights to the automotive industry in the search for a safer and more flexible interface between the automated vehicle and the driver. |
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Keywords: | Automated driving Eye movements Real-vehicle study Takeover performance Driver monitoring system Saccades |
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