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arxiv: 2410.16197 · v3 · pith:NEPIR7EM · submitted 2024-10-21 · cs.RO · cs.MA

LASER: Script Execution by Autonomous Agents for On-demand Traffic Simulation

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classification cs.RO cs.MA
keywords autonomouslasertrafficagentsdatadrivinggeneratesgeneration
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Autonomous Driving Systems (ADS) require diverse and safety-critical traffic scenarios for effective training and testing, but the existing data generation methods struggle to provide flexibility and scalability. We propose LASER, a novel frame-work that leverage large language models (LLMs) to conduct traffic simulations based on natural language inputs. The framework operates in two stages: it first generates scripts from user-provided descriptions and then executes them using autonomous agents in real time. Validated in the CARLA simulator, LASER successfully generates complex, on-demand driving scenarios, significantly improving ADS training and testing data generation.

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