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Main Authors: Lu, Qiujing, Wang, Xuanhan, Yuan, Runze, Lu, Wei, Gong, Xinyi, Feng, Shuo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.07874
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author Lu, Qiujing
Wang, Xuanhan
Yuan, Runze
Lu, Wei
Gong, Xinyi
Feng, Shuo
author_facet Lu, Qiujing
Wang, Xuanhan
Yuan, Runze
Lu, Wei
Gong, Xinyi
Feng, Shuo
contents Ensuring the safety of autonomous vehicles (AV) requires rigorous testing under both everyday driving and rare, safety-critical conditions. A key challenge lies in simulating environment agents, including background vehicles (BVs) and vulnerable road users (VRUs), that behave realistically in nominal traffic while also exhibiting risk-prone behaviors consistent with real-world accidents. We introduce Controllable Risk Agent Generation (CRAG), a framework designed to unify the modeling of dominant nominal behaviors and rare safety-critical behaviors. CRAG constructs a structured latent space that disentangles normal and risk-related behaviors, enabling efficient use of limited crash data. By combining risk-aware latent representations with optimization-based mode-transition mechanisms, the framework allows agents to shift smoothly and plausibly from safe to risk states over extended horizons, while maintaining high fidelity in both regimes. Extensive experiments show that CRAG improves diversity compared to existing baselines, while also enabling controllable generation of risk scenarios for targeted and efficient evaluation of AV robustness.
format Preprint
id arxiv_https___arxiv_org_abs_2512_07874
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Controllable risk scenario generation from human crash data for autonomous vehicle testing
Lu, Qiujing
Wang, Xuanhan
Yuan, Runze
Lu, Wei
Gong, Xinyi
Feng, Shuo
Machine Learning
Ensuring the safety of autonomous vehicles (AV) requires rigorous testing under both everyday driving and rare, safety-critical conditions. A key challenge lies in simulating environment agents, including background vehicles (BVs) and vulnerable road users (VRUs), that behave realistically in nominal traffic while also exhibiting risk-prone behaviors consistent with real-world accidents. We introduce Controllable Risk Agent Generation (CRAG), a framework designed to unify the modeling of dominant nominal behaviors and rare safety-critical behaviors. CRAG constructs a structured latent space that disentangles normal and risk-related behaviors, enabling efficient use of limited crash data. By combining risk-aware latent representations with optimization-based mode-transition mechanisms, the framework allows agents to shift smoothly and plausibly from safe to risk states over extended horizons, while maintaining high fidelity in both regimes. Extensive experiments show that CRAG improves diversity compared to existing baselines, while also enabling controllable generation of risk scenarios for targeted and efficient evaluation of AV robustness.
title Controllable risk scenario generation from human crash data for autonomous vehicle testing
topic Machine Learning
url https://arxiv.org/abs/2512.07874