This study focusses on pedestrian crossing (crosswalk) analysis and classification in urban contexts. Deep learning models and graph theory tools serve as the foundation for the proposed approach. Deep learning models are used to identify and regress crosswalk images based on specific indices that assess pedestrian exposure to crash events, as well as raw crashes. The crosswalk images were captured using Google Earth’s capabilities and are from the entire set in Citt`a Studi, Milan, Italy. Additionally, 5-year pedestrian crash data are evaluated and linked to crosswalks when applicable. Classification produces good results, with an accuracy of approximately 60–70%. Regression models work well with exposure indices but poorly with raw crashes. Correlations between exposure indices and crash data are negative and very low.

An analysis of pedestrian crossings through deep learning models and crash data

Mussone, Lorenzo;Hassan, Omar el
2025-01-01

Abstract

This study focusses on pedestrian crossing (crosswalk) analysis and classification in urban contexts. Deep learning models and graph theory tools serve as the foundation for the proposed approach. Deep learning models are used to identify and regress crosswalk images based on specific indices that assess pedestrian exposure to crash events, as well as raw crashes. The crosswalk images were captured using Google Earth’s capabilities and are from the entire set in Citt`a Studi, Milan, Italy. Additionally, 5-year pedestrian crash data are evaluated and linked to crosswalks when applicable. Classification produces good results, with an accuracy of approximately 60–70%. Regression models work well with exposure indices but poorly with raw crashes. Correlations between exposure indices and crash data are negative and very low.
2025
Risk exposure indices
Pedestrian crossings
Pedestrian crashes
Deep learning
Classification
Regression
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1289925
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