ScenePilot: Controllable Boundary-Driven Critical Scenario Generation for Autonomous Driving 文章

ArXiv CS.AI2026-05-27NEWSen作者: Qiyu Ruan, Yuxuan Wang, He Li, Zhenning Li, Cheng-zhong Xu

摘要

arXiv:2605.21168v2 Announce Type: replace Abstract: Safety-critical scenarios are central to evaluating autonomous driving systems, yet their rarity in naturalistic logs makes simulation-based stress testing indispensable. Most scenario generation methods treat surrounding agents as adversaries, but they either (i) induce failures without explicitly modeling vehicle-road physical limits, yielding visually extreme yet physically unsolvable crashes, or (ii) enforce physical feasibility or policy feasibility in isolation, which can over-focus on aggressive maneuvers or remain tied to a controller-dependent capability boundary. We propose ScenePilot, a feasibility-guided, boundary-driven framework that targets the boundary band: scenarios that are physically solvable in principle yet still cause the deployed autonomy stack to fail.