DriveSuprim: Towards Precise Trajectory Selection for End-to-End Planning

Authors

  • Wenhao Yao Shanghai Key Lab of Intell. Info. Processing, School of CS, Fudan University Shanghai Collaborative Innovation Center of Intelligent Visual Computing
  • Zhenxin Li Shanghai Key Lab of Intell. Info. Processing, School of CS, Fudan University Shanghai Collaborative Innovation Center of Intelligent Visual Computing
  • Shiyi Lan NVIDIA
  • Zi Wang NVIDIA
  • Xinglong Sun NVIDIA
  • Jose M. Alvarez NVIDIA
  • Zuxuan Wu Shanghai Key Lab of Intell. Info. Processing, School of CS, Fudan University Shanghai Collaborative Innovation Center of Intelligent Visual Computing

DOI:

https://doi.org/10.1609/aaai.v40i14.38178

Abstract

Autonomous vehicles must navigate safely in complex driving environments. Imitating a single expert trajectory, as in regression-based approaches, usually does not explicitly assess the safety of the predicted trajectory. Selection-based methods address this by generating and scoring multiple trajectory candidates and predicting the safety score for each. However, they face optimization challenges in precisely selecting the best option from thousands of candidates and distinguishing subtle but safety-critical differences, especially in rare and challenging scenarios. We propose DriveSuprim to overcome these challenges and advance the selection-based paradigm through a coarse-to-fine paradigm for progressive candidate filtering, a rotation-based augmentation method to improve robustness in out-of-distribution scenarios, and a self-distillation framework to stabilize training. DriveSuprim achieves state-of-the-art performance, reaching 93.5% PDMS in NAVSIM v1 and 87.1% EPDMS in NAVSIM v2 without extra data, with 83.02 Driving Score and 60.00 Success Rate on Bench2Drive, demonstrating superior planning capabilities in various driving scenarios.

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Published

2026-03-14

How to Cite

Yao, W., Li, Z., Lan, S., Wang, Z., Sun, X., Alvarez, J. M., & Wu, Z. (2026). DriveSuprim: Towards Precise Trajectory Selection for End-to-End Planning. Proceedings of the AAAI Conference on Artificial Intelligence, 40(14), 11910-11918. https://doi.org/10.1609/aaai.v40i14.38178

Issue

Section

AAAI Technical Track on Computer Vision XI