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arxiv 2409.05863 v1 pith:5NAISMSY submitted 2024-09-09 cs.CV cs.AIcs.RO

Promptable Closed-loop Traffic Simulation

classification cs.CV cs.AIcs.RO
keywords prosimtrafficsimulationclosed-loopdrivingpromptablepromptsagent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Simulation stands as a cornerstone for safe and efficient autonomous driving development. At its core a simulation system ought to produce realistic, reactive, and controllable traffic patterns. In this paper, we propose ProSim, a multimodal promptable closed-loop traffic simulation framework. ProSim allows the user to give a complex set of numerical, categorical or textual prompts to instruct each agent's behavior and intention. ProSim then rolls out a traffic scenario in a closed-loop manner, modeling each agent's interaction with other traffic participants. Our experiments show that ProSim achieves high prompt controllability given different user prompts, while reaching competitive performance on the Waymo Sim Agents Challenge when no prompt is given. To support research on promptable traffic simulation, we create ProSim-Instruct-520k, a multimodal prompt-scenario paired driving dataset with over 10M text prompts for over 520k real-world driving scenarios. We will release code of ProSim as well as data and labeling tools of ProSim-Instruct-520k at https://ariostgx.github.io/ProSim.

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  1. PCASim: Promptable Closed-loop Adversarial Simulation for Urban Traffic Environment

    cs.RO 2026-05 unverdicted novelty 6.0

    PCASim uses LLMs to integrate knowledge, data, and adversarial methods for generating promptable safety-critical urban traffic scenarios, with RL training for vehicle behaviors, reporting 12% better DSL accuracy, 8% h...