TL;DR
This paper introduces a unified probabilistic framework for traffic conflict detection that improves consistency, adaptability, and comprehensiveness in identifying potential collisions across diverse traffic scenarios using real-world data.
Contribution
It proposes a novel unified probabilistic approach that models traffic conflicts as context-dependent extreme events, enabling data-driven, consistent detection across various interaction types.
Findings
Effective collision warnings demonstrated in real-world data
Method generalizes across different datasets and environments
Captures a broad spectrum of conflict intensities
Abstract
Traffic conflict detection is essential for proactive road safety by identifying potential collisions before they occur. Existing methods rely on surrogate safety measures tailored to specific interactions (e.g., car-following, side-swiping, or path-crossing) and require varying thresholds in different traffic conditions. This variation leads to inconsistencies and limited adaptability of conflict detection in evolving traffic environments. Consequently, a need persists for consistent detection of traffic conflicts across interaction contexts. To address this need, this study proposes a unified probabilistic approach. The proposed approach establishes a unified framework of traffic conflict detection, where traffic conflicts are formulated as context-dependent extreme events of road user interactions. The detection of conflicts is then decomposed into a series of statistical learning…
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