Modeling Pedestrian Crossing Behavior: A Reinforcement Learning Approach With Sensory Motor Constraints

Yueyang Wang, Aravinda Ramakrishnan Srinivasan, Yee Mun Lee, Gustav Markkula

Published: 2025, Last Modified: 02 Mar 2026IEEE Trans. Intell. Transp. Syst. 2025EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Understanding pedestrian behavior is crucial for the safe deployment of Autonomous Vehicles (AVs) in urban environments. Traditional pedestrian behavior models often fall into two categories: mechanistic models, which do not generalize well to complex environments, and machine-learned models, which generally overlook sensory-motor constraints influencing human behavior and which are thus prone to fail in unseen scenarios. We hypothesize that sensory-motor constraints, fundamental to how humans perceive and interact with their surroundings, are essential for realistic simulations. Thus, we introduce a constrained reinforcement learning (RL) model that simulates the crossing decision and locomotion of pedestrians. Our model includes human sensory constraints, giving the agent imperfect information about the environment, and human motor constraints incorporated through a bio-mechanical model of walking. We gathered data from a human-in-the-loop experiment to understand pedestrian behavior. The findings reveal several behavioral patterns not addressed by existing pedestrian models, regarding how pedestrians adapt their walking speed to the kinematics and behavior of the approaching vehicle. Our model successfully captures these human-like walking speed patterns, enabling us to understand these patterns as a trade-off between time pressure and walking effort. Importantly, the model with both sensory and motor constraints performed better than models only incorporating one of the two. Additionally, behavioral patterns related to external human-machine interfaces and light conditions were also captured by the model. Overall, our results not only demonstrate the potential of constrained RL in modeling pedestrian behaviors but also highlight the importance of sensory-motor mechanisms in modeling pedestrian-vehicle interactions.
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