Surveillance Video-Based Traffic Accident Detection Using Transformer Architecture
Tanu Singh, Pranamesh Chakraborty, and Long T. Truong

TL;DR
This paper introduces a transformer-based model for traffic accident detection using a newly curated diverse dataset, achieving high accuracy by integrating motion cues like optical flow.
Contribution
The study presents a comprehensive dataset and a novel transformer architecture that effectively models spatial-temporal dependencies for accident detection.
Findings
Achieved 88.3% accuracy with RGB and optical flow features.
Demonstrated the importance of motion cues in accident detection.
Compared transformer-based approach with vision language models, showing competitive performance.
Abstract
Road traffic accidents represent a leading cause of mortality globally, with incidence rates rising due to increasing population, urbanization, and motorization. Rising accident rates raise concerns about traffic surveillance effectiveness. Traditional computer vision methods for accident detection struggle with limited spatiotemporal understanding and poor cross-domain generalization. Recent advances in transformer architectures excel at modeling global spatial-temporal dependencies and parallel computation. However, applying these models to automated traffic accident detection is limited by small, non-diverse datasets, hindering the development of robust, generalizable systems. To address this gap, we curated a comprehensive and balanced dataset that captures a wide spectrum of traffic environments, accident types, and contextual variations. Utilizing the curated dataset, we propose…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic and Road Safety · Traffic Prediction and Management Techniques
