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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Autonomous Driving | NAVSIM v1 (test) | NC98.6 | 99 | |
| Autonomous Driving Planning | NAVSIM (navtest) | NC98.6 | 50 | |
| Open-loop Autonomous Driving Planning | NAVSIM 1.0 (test) | NC97.2 | 19 | |
| End-to-end Planning | NAVSIM v1 | NC0.976 | 17 | |
| End-to-End Autonomous Driving Planning | NAVSIM v1 (navtest) | NC Score0.976 | 16 | |
| Motion Planning | NAVSIM v2 (test) | NC97.2 | 15 | |
| End-to-end Driving | NAVSIM v2 (test) | NC98.5 | 9 | |
| Autonomous Driving | NAVSIM v2 | NC97.2 | 8 | |
| Autonomous Driving | NAVSIM navtest v2 (test) | NC97.2 | 7 | |
| Closed-loop Planning | NAVSIM v2 | NC97.2 | 7 |