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AdvDiffuser: Generating Adversarial Safety-Critical Driving Scenarios Via Guided Diffusion

Yuting Xie, Xianda Guo, Cong Wang, Liu Kunhua, Long Chen

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Abstract

Safety-critical scenarios are infrequent in natu- ral driving environments but hold significant importance for the training and testing of autonomous driving systems. The prevailing approach involves generating safety-critical scenar- ios automatically in simulation by introducing adversarial adjustments to natural environments. These adjustments are often tailored to specific tested systems, thereby disregarding their transferability across different systems. In this paper, we propose AdvDiffuser, an adversarial framework for generating safety-critical driving scenarios through guided diffusion. By incorporating a diffusion model to capture plausible collective behaviors of background vehicles and a lightweight guide model to effectively handle adversarial scenarios, AdvDiffuser facilitates transferability. Experimental results on the nuScenes dataset demonstrate that AdvDiffuser, trained on offline driving logs, can be applied to various tested systems with minimal warm-up episode data and outperform other existing methods in terms of realism, diversity, and adversarial performance.

Index terms

Simulation and Animation Autonomous Agents Autonomous Vehicle Navigation