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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

Benjamin Stoler, Ingrid Navarro, Jonathan Francis, Jean Oh• 2024

Related benchmarks

TaskDatasetResultRank
Adversarial Scenario GenerationWaymo Open Motion Dataset Replay policy
Attack Success Rate63.93
27
Adversarial GenerationWOMD
Attack Success Rate33.7
17
Open-loop Adversarial Scenario GenerationWOMD and MetaDrive against Replay Policy (open-loop evaluation)
Attack Success Rate (ASR)63.93
8
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