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Poster

Solving Motion Planning Tasks with a Scalable Generative Model

Yihan Hu · Siqi Chai · Zhening Yang · Jingyu Qian · Kun Li · Wenxin Shao · Haichao Zhang · Wei Xu · Qiang Liu

Strong blind review: This paper was not made available on public preprint services during the review process Strong Double Blind
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Wed 2 Oct 7:30 a.m. PDT — 9:30 a.m. PDT

Abstract:

As autonomous driving systems being deployed to millions of vehicles, there is a pressing need of improving the system's scalability, safety and reducing the engineering cost. A realistic, scalable and practical simulator of the driving world is highly desired. In this paper, we present an efficient solution based on generative models which learns the dynamics of the driving scenes. With this model, we can not only simulate the diverse futures of a given driving scenario but also generate a variety of driving scenarios conditioned on various prompts. Our innovative design allows the model to operate in both full-Autoregressive and partial-Autoregressive modes, significantly improving inference and training speed without sacrificing generative capability. This efficiency makes it ideal to be used as an online reactive environment for reinforcement learning, an evaluator for planning policies, and a high-fidelity simulator for testing. We have evaluated our model against two real-world datasets: the Waymo motion dataset and the nuPlan dataset. On the simulation realism and scene generation benchmark, our model achieves the state-of-the-art performance. And in the planning benchmarks, our planner outperforms the prior arts. We conclude that the proposed generative model may serve as a foundation to a variety of motion planning tasks, including data generation, simulation, planning, and online training. Code will be publicly available.

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