Learning physically grounded traffic accident reconstruction from public accident reports
arXiv cs.LG / 5/4/2026
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Key Points
- The paper proposes a parameterized multimodal learning approach to reconstruct traffic accidents using publicly accessible accident reports together with available scene measurements, addressing the scarcity of detailed measurements and expert reconstructions.
- It introduces CISS-REC, a dataset of 6,217 real-world accident cases curated from the NHTSA Crash Investigation Sampling System, linking report semantics to road topology and participant attributes.
- The framework reconstructs lane-consistent pre-impact motion and then refines collision-relevant interactions using localized geometric reasoning and temporal allocation.
- The method outperforms several baselines on CISS-REC, improving overall reconstruction fidelity, including accident point accuracy and collision consistency.
- The authors argue that public accident reports can become a scalable computational substrate for quantitatively verifiable reconstruction, supporting traffic safety analysis, simulation, and autonomous driving research.
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