Using Models Based on Cognitive Theory to Predict Human Behavior in
Traffic: A Case Study
- URL: http://arxiv.org/abs/2305.15187v2
- Date: Mon, 9 Oct 2023 12:32:17 GMT
- Title: Using Models Based on Cognitive Theory to Predict Human Behavior in
Traffic: A Case Study
- Authors: Julian F. Schumann, Aravinda Ramakrishnan Srinivasan, Jens Kober,
Gustav Markkula, Arkady Zgonnikov
- Abstract summary: We investigate the usefulness of a novel cognitively plausible model for predicting human behavior in gap acceptance scenarios.
We show that this model can compete with or even outperform well-established data-driven prediction models.
- Score: 4.705182901389292
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The development of automated vehicles has the potential to revolutionize
transportation, but they are currently unable to ensure a safe and
time-efficient driving style. Reliable models predicting human behavior are
essential for overcoming this issue. While data-driven models are commonly used
to this end, they can be vulnerable in safety-critical edge cases. This has led
to an interest in models incorporating cognitive theory, but as such models are
commonly developed for explanatory purposes, this approach's effectiveness in
behavior prediction has remained largely untested so far. In this article, we
investigate the usefulness of the \emph{Commotions} model -- a novel
cognitively plausible model incorporating the latest theories of human
perception, decision-making, and motor control -- for predicting human behavior
in gap acceptance scenarios, which entail many important traffic interactions
such as lane changes and intersections. We show that this model can compete
with or even outperform well-established data-driven prediction models across
several naturalistic datasets. These results demonstrate the promise of
incorporating cognitive theory in behavior prediction models for automated
vehicles.
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