Beta Distribution Learning for Reliable Roadway Crash Risk Assessment

Authors

  • Ahmad Elallaf Texas A&M University-San Antonio
  • Nathan Jacobs Washington University, Saint Louis
  • Xinyue Ye The University of Alabama
  • Mei Chen The University of Kentucky
  • Gongbo Liang Texas A&M University-San Antonio

DOI:

https://doi.org/10.1609/aaai.v40i45.41182

Abstract

Roadway traffic accidents represent a global health crisis, responsible for over a million deaths annually and costing many countries up to 3% of their GDP. Traditional traffic safety studies often examine risk factors in isolation, overlooking the spatial complexity and contextual interactions inherent in the built environment. Furthermore, conventional Neural Network-based risk estimators typically generate point estimates without conveying model uncertainty, limiting their utility in critical decision-making. To address these shortcomings, we introduce a novel geospatial deep learning framework that leverages satellite imagery as a comprehensive spatial input. This approach enables the model to capture the nuanced spatial patterns and embedded environmental risk factors that contribute to fatal crash risks. Rather than producing a single deterministic output, our model estimates a full Beta probability distribution over fatal crash risk, yielding accurate and uncertainty-aware predictions--a critical feature for trustworthy AI in safety-critical applications. Our model outperforms baselines by achieving a 17-23% improvement in recall, a key metric for flagging potential dangers, while delivering superior calibration. By providing reliable and interpretable risk assessments from satellite imagery alone, our method enables safer autonomous navigation and offers a highly scalable tool for urban planners and policymakers to enhance roadway safety equitably and cost-effectively.

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Published

2026-03-14

How to Cite

Elallaf, A., Jacobs, N., Ye, X., Chen, M., & Liang, G. (2026). Beta Distribution Learning for Reliable Roadway Crash Risk Assessment. Proceedings of the AAAI Conference on Artificial Intelligence, 40(45), 38413-38421. https://doi.org/10.1609/aaai.v40i45.41182

Issue

Section

AAAI Special Track on AI for Social Impact I