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GRAPH-CONSTRAINED DIFFUSION FOR END-TO-END PATH PLANNING

  • Dingyuan Shi
  • , Yongxin Tong*
  • , Zimu Zhou
  • , Ke Xu
  • , Zheng Wang
  • , Jieping Ye
  • *此作品的通讯作者
  • Beihang University
  • City University of Hong Kong
  • University of Michigan, Ann Arbor

科研成果: 会议稿件论文同行评审

摘要

Path planning underpins various applications such as transportation, logistics, and robotics. Conventionally, path planning is formulated with explicit optimization objectives such as distance or time. However, real-world data reveals that user intentions are hard-to-model, suggesting a need for data-driven path planning that implicitly incorporates the complex user intentions. In this paper, we propose GDP, a diffusion-based model for end-to-end data-driven path planning. It effectively learns path patterns via a novel diffusion process that incorporates constraints from road networks, and plans paths as conditional path generation given the origin and destination as prior evidence. GDP is the first solution that bypasses the traditional search-based frameworks, a long-standing performance bottleneck in path planning. We validate the efficacy of GDP on two real-world datasets. Our GDP beats strong baselines by 14.2% ∼ 43.5% and achieves state-of-the-art performances.

源语言英语
出版状态已出版 - 2024
活动12th International Conference on Learning Representations, ICLR 2024 - Hybrid, Vienna, 奥地利
期限: 7 5月 202411 5月 2024

会议

会议12th International Conference on Learning Representations, ICLR 2024
国家/地区奥地利
Hybrid, Vienna
时期7/05/2411/05/24

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