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CrashFormer: A Multimodal Architecture to Predict the Risk of Crash

Authors :
Monsefi, Amin Karimi
Shiri, Pouya
Mohammadshirazi, Ahmad
Monsefi, Nastaran Karimi
Davies, Ron
Moosavi, Sobhan
Ramnath, Rajiv
Publication Year :
2024

Abstract

Reducing traffic accidents is a crucial global public safety concern. Accident prediction is key to improving traffic safety, enabling proactive measures to be taken before a crash occurs, and informing safety policies, regulations, and targeted interventions. Despite numerous studies on accident prediction over the past decades, many have limitations in terms of generalizability, reproducibility, or feasibility for practical use due to input data or problem formulation. To address existing shortcomings, we propose CrashFormer, a multi-modal architecture that utilizes comprehensive (but relatively easy to obtain) inputs such as the history of accidents, weather information, map images, and demographic information. The model predicts the future risk of accidents on a reasonably acceptable cadence (i.e., every six hours) for a geographical location of 5.161 square kilometers. CrashFormer is composed of five components: a sequential encoder to utilize historical accidents and weather data, an image encoder to use map imagery data, a raw data encoder to utilize demographic information, a feature fusion module for aggregating the encoded features, and a classifier that accepts the aggregated data and makes predictions accordingly. Results from extensive real-world experiments in 10 major US cities show that CrashFormer outperforms state-of-the-art sequential and non-sequential models by 1.8% in F1-score on average when using ``sparse'' input data.<br />Comment: The paper is accepted In 1st ACM SIGSPATIAL International Workshop on Advances in Urban-AI (UrbanAI 23), November 13, 2023, Hamburg, Germany

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.05151
Document Type :
Working Paper
Full Text :
https://doi.org/10.1145/3615900.3628769