Evaluating the reliability of automatically generated pedestrian and bicycle crash surrogates
Agnimitra Sengupta, S. Ilgin Guler, Vikash V. Gayah, Shannon Warchol

TL;DR
This study evaluates the reliability of automatically generated surrogate measures for VRU-vehicle conflicts at intersections, aiming to improve safety analysis and infrastructure planning using advanced data-driven models.
Contribution
It introduces a data-driven approach to assess the accuracy of automated conflict surrogates in predicting real conflicts involving vulnerable road users.
Findings
Certain surrogate variables are more predictive of true conflicts.
Automated surrogates can effectively support safety performance assessment.
Insights can guide data collection priorities for infrastructure improvements.
Abstract
Vulnerable road users (VRUs), such as pedestrians and bicyclists, are at a higher risk of being involved in crashes with motor vehicles, and crashes involving VRUs also are more likely to result in severe injuries or fatalities. Signalized intersections are a major safety concern for VRUs due to their complex and dynamic nature, highlighting the need to understand how these road users interact with motor vehicles and deploy evidence-based countermeasures to improve safety performance. Crashes involving VRUs are relatively infrequent, making it difficult to understand the underlying contributing factors. An alternative is to identify and use conflicts between VRUs and motorized vehicles as a surrogate for safety performance. Automatically detecting these conflicts using a video-based systems is a crucial step in developing smart infrastructure to enhance VRU safety. The Pennsylvania…
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Taxonomy
TopicsTraffic and Road Safety · Urban Transport and Accessibility · Traffic Prediction and Management Techniques
