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Hydra-MDP++: Advancing End-to-End Driving via Expert-Guided Hydra-Distillation

About

Hydra-MDP++ introduces a novel teacher-student knowledge distillation framework with a multi-head decoder that learns from human demonstrations and rule-based experts. Using a lightweight ResNet-34 network without complex components, the framework incorporates expanded evaluation metrics, including traffic light compliance (TL), lane-keeping ability (LK), and extended comfort (EC) to address unsafe behaviors not captured by traditional NAVSIM-derived teachers. Like other end-to-end autonomous driving approaches, \hydra processes raw images directly without relying on privileged perception signals. Hydra-MDP++ achieves state-of-the-art performance by integrating these components with a 91.0% drive score on NAVSIM through scaling to a V2-99 image encoder, demonstrating its effectiveness in handling diverse driving scenarios while maintaining computational efficiency.

Kailin Li, Zhenxin Li, Shiyi Lan, Yuan Xie, Zhizhong Zhang, Jiayi Liu, Zuxuan Wu, Zhiding Yu, Jose M.Alvarez• 2025

Related benchmarks

TaskDatasetResultRank
Autonomous DrivingNAVSIM v1 (test)
NC98.6
99
Autonomous Driving PlanningNAVSIM (navtest)
NC98.6
50
Open-loop Autonomous Driving PlanningNAVSIM 1.0 (test)
NC97.2
19
End-to-end PlanningNAVSIM v1
NC0.976
17
End-to-End Autonomous Driving PlanningNAVSIM v1 (navtest)
NC Score0.976
16
Motion PlanningNAVSIM v2 (test)
NC97.2
15
End-to-end DrivingNAVSIM v2 (test)
NC98.5
9
Autonomous DrivingNAVSIM v2
NC97.2
8
Autonomous DrivingNAVSIM navtest v2 (test)
NC97.2
7
Closed-loop PlanningNAVSIM v2
NC97.2
7
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