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LeAD: The LLM Enhanced Planning System Converged with End-to-end Autonomous Driving

LeAD: The LLM Enhanced Planning System Converged with End-to-end Autonomous Driving

来源:Arxiv_logoArxiv
英文摘要

A principal barrier to large-scale deployment of urban autonomous driving systems lies in the prevalence of complex scenarios and edge cases. Existing systems fail to effectively interpret semantic information within traffic contexts and discern intentions of other participants, consequently generating decisions misaligned with skilled drivers' reasoning patterns. We present LeAD, a dual-rate autonomous driving architecture integrating imitation learning-based end-to-end (E2E) frameworks with large language model (LLM) augmentation. The high-frequency E2E subsystem maintains real-time perception-planning-control cycles, while the low-frequency LLM module enhances scenario comprehension through multi-modal perception fusion with HD maps and derives optimal decisions via chain-of-thought (CoT) reasoning when baseline planners encounter capability limitations. Our experimental evaluation in the CARLA Simulator demonstrates LeAD's superior handling of unconventional scenarios, achieving 71 points on Leaderboard V1 benchmark, with a route completion of 93%.

Yuhang Zhang、Jiaqi Liu、Chengkai Xu、Peng Hang、Jian Sun

公路运输工程

Yuhang Zhang,Jiaqi Liu,Chengkai Xu,Peng Hang,Jian Sun.LeAD: The LLM Enhanced Planning System Converged with End-to-end Autonomous Driving[EB/OL].(2025-07-08)[2025-07-16].https://arxiv.org/abs/2507.05754.点此复制

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