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Papers/Hydra-MDP: End-to-end Multimodal Planning with Multi-targe...

Hydra-MDP: End-to-end Multimodal Planning with Multi-target Hydra-Distillation

Zhenxin Li, Kailin Li, Shihao Wang, Shiyi Lan, Zhiding Yu, Yishen Ji, Zhiqi Li, Ziyue Zhu, Jan Kautz, Zuxuan Wu, Yu-Gang Jiang, Jose M. Alvarez

2024-06-11Knowledge Distillation
PaperPDFCode(official)Code(official)Code

Abstract

We propose Hydra-MDP, a novel paradigm employing multiple teachers in a teacher-student model. This approach uses knowledge distillation from both human and rule-based teachers to train the student model, which features a multi-head decoder to learn diverse trajectory candidates tailored to various evaluation metrics. With the knowledge of rule-based teachers, Hydra-MDP learns how the environment influences the planning in an end-to-end manner instead of resorting to non-differentiable post-processing. This method achieves the $1^{st}$ place in the Navsim challenge, demonstrating significant improvements in generalization across diverse driving environments and conditions. More details by visiting \url{https://github.com/NVlabs/Hydra-MDP}.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesOpenScenePDMS91Hydra-MDP-C
Autonomous VehiclesOpenScenePDMS91Hydra-MDP++
Autonomous DrivingOpenScenePDMS91Hydra-MDP-C
Autonomous DrivingOpenScenePDMS91Hydra-MDP++

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