Estimation of Traffic Occupancy using Image Segmentation
Increased traffic flow results in high road occupancy. Traffic road occupancy is often used as a parameter for the prediction of traffic conditions by traffic engineers. Although traffic monitoring systems are based on a large number of technologies, challenges are still present. Most of the methods...
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Zusammenfassung: | Increased traffic flow results in high road occupancy.
Traffic road occupancy is often used as a parameter for the
prediction of traffic conditions by traffic engineers. Although
traffic monitoring systems are based on a large number of
technologies, challenges are still present. Most of the methods
work efficiently for free-flow traffic but not in heavy congestion.
Image processing techniques are more effective than other
methods, as they are based on loop sensors and detectors to
monitor road traffic. A huge number of image frames are
processed in image processing hence there is a need for a more
efficient and low-cost image processing technique for accurate
vehicle detection. In this paper, a novel approach is adopted to
calculate road occupancy. The proposed framework has robust
performance under road conjunction and diverse environmental
conditions. A combination of image segmentation threshold
technique and shadow removal technique is used. The study
comprised of segmenting 1056 images extracted from recorded
videos. The obtained results by image segmentation were
compared with traffic road occupancy calculated manually using
Autocad. A final percentage difference of 8.17 was observed. |
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DOI: | 10.48084/etasr.4218 |