Traffic Danger Recognition With Surveillance Cameras Without Training Data
November 29, 2018 Β· Declared Dead Β· π Advanced Video and Signal Based Surveillance
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Authors
Lijun Yu, Dawei Zhang, Xiangqun Chen, Alexander Hauptmann
arXiv ID
1811.11969
Category
cs.CV: Computer Vision
Cross-listed
cs.MM
Citations
24
Venue
Advanced Video and Signal Based Surveillance
Last Checked
4 months ago
Abstract
We propose a traffic danger recognition model that works with arbitrary traffic surveillance cameras to identify and predict car crashes. There are too many cameras to monitor manually. Therefore, we developed a model to predict and identify car crashes from surveillance cameras based on a 3D reconstruction of the road plane and prediction of trajectories. For normal traffic, it supports real-time proactive safety checks of speeds and distances between vehicles to provide insights about possible high-risk areas. We achieve good prediction and recognition of car crashes without using any labeled training data of crashes. Experiments on the BrnoCompSpeed dataset show that our model can accurately monitor the road, with mean errors of 1.80% for distance measurement, 2.77 km/h for speed measurement, 0.24 m for car position prediction, and 2.53 km/h for speed prediction.
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