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.

Abstract

Traffic accidents are routinely documented in textual reports, yet physically grounded accident reconstruction remains difficult because detailed scene measurements and expert reconstructions are scarce, costly and hard to scale. Here we formulate accident reconstruction from publicly accessible reports and scene measurements as a parameterized multimodal learning problem. We construct CISS-REC, a dataset of 6,217 real-world accident cases curated from the NHTSA Crash Investigation Sampling System, and develop a reconstruction framework that grounds report semantics to road topology and participant attributes, reconstructs lane consistent pre-impact motion, and refines collision relevant interactions through localized geometric reasoning and temporal allocation. Our method outperforms representative baselines on CISS-REC, achieving the strongest overall reconstruction fidelity, including improved accident point accuracy and collision consistency. These results show that public accident reports can serve as scalable computational substrates for quantitatively verifiable accident reconstruction, with potential value for traffic safety analysis, simulation and autonomous driving research.

Learning physically grounded traffic accident reconstruction from public accident reports | AI Navigate