Fusing Driver Perceived and Physical Risk for Safety Critical Scenario Screening in Autonomous Driving
arXiv cs.RO / 3/24/2026
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Key Points
- The paper proposes a driver-risk fusion approach to efficiently screen safety-critical scenarios in autonomous driving testing using large-scale naturalistic data.
- It avoids manual frame-by-frame risk annotation and expensive per-frame risk evaluation by generating supervision from a learned Driver Risk Field during training and predicting scenario-level risk scores with fast inference.
- The method improves risk estimation with a risk height function and a speed-adaptive look-ahead mechanism, and it uses a dynamic cost model combining kinetic energy, oriented bounding box constraints, and Gaussian-kernel diffusion smoothing to better model interactions.
- A risk trajectory cross-attention decoder jointly decodes risk and trajectories, aiming for more accurate and smoother risk estimates.
- Experiments on INTERACTION and FLUID show improved performance, including AUC 0.792 and AP 0.825 on FLUID, outperforming PODAR by 9.1% (AUC) and 5.1% (AP).
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