A vision-based real-time traffic flow monitoring system for road intersections.

["Azimjonov J", "\u00d6zmen A", "Varan M"]
Multimedia tools and applications 2023
Open on PubMed

In this study, a vision based real-time traffic flow monitoring system has been developed to extract statistics passes through the intersections. A novel object tracking and data association algorithms have been developed using the bounding-box properties to estimate the vehicle trajectories. Then, rich traffic flow information such as directional and total counting, instantaneous and average speed of vehicles are calculated from the predicted trajectories. During the study, various parameters that affect the accuracy of vision based systems are examined such as camera locations and angles that may cause occlusion or illusion problems. In the last part, sample video streams are processed using both Kalman filter and new centroid-based algorithm for comparative study. The results show that the new algorithm performs 9.18% better than Kalman filter approach in general.

6 Figures Extracted
Fig. 1
Fig. 1 PMC
Block diagram of online traffic video processing system. The input video stream is normalized by reducing the number of frames, and then sent to the o...
Fig. 2
Fig. 2 PMC
Various camera placements at different intersections: a) a proper camera placement with high-angle, b) a low-angle camera placement causes occlusion, ...
Fig. 3
Fig. 3 PMC
Flow chart of centroid-based vehicle trajectory extraction algorithm. After normalizing the number of frames an object detection algorithm is used for...
Fig. 4
Fig. 4 PMC
The loss graphs obtained from training logs: a) Netherlands, b) Sweden, c) Turkey, d) Japan, e) Ukraine
Fig. 5
Fig. 5 PMC
The test videos examined in the study with different camera placements at different intersections: a) Netherlands, b) Sweden, c) Turkey, d) Japan, e) ...
Fig. 6
Fig. 6 PMC
A screen shot of form-based online tool that shows real-time traffic flow statistics acquired from the video stream