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Drivers' Visual-distracted Take-over Performance Model and Its Application on Adaptive Adjustment of Time Budget

Overview
Journal Accid Anal Prev
Specialty Emergency Medicine
Date 2021 Mar 26
PMID 33770718
Citations 3
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Abstract

There are certain situations that automated driving (AD) systems are still unable to handle, preventing the implementation of Level 5 AD. Thus, a transition of control, colloquially known as take-over of the vehicle, is required when the system sends a take-over request (TOR) upon exiting the operational design domain (ODD). An adaptive TOR along with good take-over performance requires adjusting the time budget (TB) to drivers' visual distraction state, adhering to a reliable visual-distraction-based take-over performance model. Based on a number of driving simulator experiments, the percentage of face orientation to distraction area (PFODA) and time to boundary at take-over timing (TTBT) were proposed to accurately evaluate the degree of visual distraction based on merely face orientation under naturalistic non-driving related tasks (NDRTs) and to evaluate take-over performance, respectively. In order to elucidate the safety boundary, this study also proposed an algorithm to set a suitable minimum value of the TTBT. Finally, a multiple regression model was built to describe the relationship among PFODA, TB and TTBT along with a corrected coefficient of determination of 0.748. Based on the model, this study proposed an adaptive TB adjustment method for the take-over system.

Citing Articles

Effect of a looming visual cue on situation awareness and perceived urgency in response to a takeover request.

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PMID: 38173484 PMC: 10761363. DOI: 10.1016/j.heliyon.2023.e23053.


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Analysis of hazard perception characteristics based on driving behavior considering overt and covert hazard scenarios.

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