Noise-Aware Generative Microscopic Traffic Simulation
Vindula Jayawardana, Catherine Tang, Junyi Ji, Jonah Philion, Xue Bin Peng, Cathy Wu

TL;DR
This paper introduces a noise-aware generative modeling approach for microscopic traffic simulation using a realistic, imperfect dataset, improving realism by embracing sensor noise rather than ignoring it.
Contribution
The paper presents the I-24 MOTION Scenario Dataset with realistic sensor noise and adapts generative models with noise-aware loss functions for more realistic traffic simulation.
Findings
Models outperform traditional baselines in realism.
Explicitly modeling sensor noise improves simulation quality.
Dataset captures real-world sensing imperfections.
Abstract
Accurately modeling individual vehicle behavior in microscopic traffic simulation remains a key challenge in intelligent transportation systems, as it requires vehicles to realistically generate and respond to complex traffic phenomena such as phantom traffic jams. While traditional human driver simulation models offer computational tractability, they do so by abstracting away the very complexity that defines human driving. On the other hand, recent advances in infrastructure-mounted camera-based roadway sensing have enabled the extraction of vehicle trajectory data, presenting an opportunity to shift toward generative, agent-based models. Yet, a major bottleneck remains: most existing datasets are either overly sanitized or lack standardization, failing to reflect the noisy, imperfect nature of real-world sensing. Unlike data from vehicle-mounted sensors-which can mitigate sensing…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic control and management · Vehicular Ad Hoc Networks (VANETs)
