SEAL: Towards Safe Autonomous Driving via Skill-Enabled Adversary Learning for Closed-Loop Scenario Generation
About
Verification and validation of autonomous driving (AD) systems and components is of increasing importance, as such technology increases in real-world prevalence. Safety-critical scenario generation is a key approach to robustify AD policies through closed-loop training. However, existing approaches for scenario generation rely on simplistic objectives, resulting in overly-aggressive or non-reactive adversarial behaviors. To generate diverse adversarial yet realistic scenarios, we propose SEAL, a scenario perturbation approach which leverages learned objective functions and adversarial, human-like skills. SEAL-perturbed scenarios are more realistic than SOTA baselines, leading to improved ego task success across real-world, in-distribution, and out-of-distribution scenarios, of more than 20%. To facilitate future research, we release our code and tools: https://github.com/cmubig/SEAL
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Adversarial Scenario Generation | Waymo Open Motion Dataset Replay policy | Attack Success Rate63.93 | 27 | |
| Adversarial Generation | WOMD | Attack Success Rate33.7 | 17 | |
| Open-loop Adversarial Scenario Generation | WOMD and MetaDrive against Replay Policy (open-loop evaluation) | Attack Success Rate (ASR)63.93 | 8 |