Quantifying driver frustration to improve road safety
R Taib, J Tederry, B Itzstein - CHI'14 Extended Abstracts on Human …, 2014 - dl.acm.org
R Taib, J Tederry, B Itzstein
CHI'14 Extended Abstracts on Human Factors in Computing Systems, 2014•dl.acm.orgAutomatically identifying driver inattention could dramatically improve road safety. This
paper presents a preliminary study aiming to correlate high levels of frustration with posture
information collected from the driver's seat. Using a driving simulator, participants had to
drive under normal and frustrating conditions, for example parking in a tight spot with some
time constraint. Binary classification using a range of machine learning algorithms provided
encouraging results, showing that posture features could help reflect frustration and possibly …
paper presents a preliminary study aiming to correlate high levels of frustration with posture
information collected from the driver's seat. Using a driving simulator, participants had to
drive under normal and frustrating conditions, for example parking in a tight spot with some
time constraint. Binary classification using a range of machine learning algorithms provided
encouraging results, showing that posture features could help reflect frustration and possibly …
Automatically identifying driver inattention could dramatically improve road safety. This paper presents a preliminary study aiming to correlate high levels of frustration with posture information collected from the driver's seat. Using a driving simulator, participants had to drive under normal and frustrating conditions, for example parking in a tight spot with some time constraint. Binary classification using a range of machine learning algorithms provided encouraging results, showing that posture features could help reflect frustration and possibly other drivers' mental states.
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