Out-of-the-loop crash prediction: The Automation Expectation Mismatch (AEM) algorithm
Journal article, 2019

This study uses behavioural data from the complete drive for a subset of 54 participants from the automation expectation mismatch set of test track experiments and aims to develop an algorithm that can predict which drivers are likely to crash. Participants experienced 30 min of highly reliable supervised automation and were required to intervene to avoid crashing with a stationary object at the end of the drive. Many of them still crashed, despite having their eyes on the conflict object. They were informed about their role as supervisors, automation limitations, and received attention reminders if visually distracted. Three pre-conflict behavioural patterns were found to be associated with increased risk of crash involvement: low levels of visual attention to the forward path, high per cent road centre (i.e. gaze concentration), and long visual response times to attention reminders. One algorithm showed very high performance in classifying crashers when combining metrics related to all three behaviours. This algorithm is possible to implement as a real-time function in eye-tracker equipped vehicles. The algorithm can detect drivers that are not sufficiently engaged in the driving task, and provide feedback (e.g. reduce function performance, turn off function) to increase their engagement.

crash avoidance

automation

Assisted driving

visual attention

Author

Emma Tivesten

Volvo Cars

Trent Victor

Volvo Cars

Pär Gustavsson

Volvo Cars

Joel Johansson

Volvo Cars

Mikael Ljung Aust

Volvo Cars

IET Intelligent Transport Systems

1751-956X (ISSN) 1751-9578 (eISSN)

Vol. 13 8 1231-1240

Driving Forces

Sustainable development

Innovation and entrepreneurship

Areas of Advance

Transport

Subject Categories

Infrastructure Engineering

Applied Psychology

Information Science

DOI

10.1049/iet-its.2018.5555

More information

Latest update

8/10/2022