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http://dx.doi.org/10.12815/kits.2020.19.5.97

Traffic Data Calculation Solution for Moving Vehicles using Vision Tracking  

Park, Young ki (Graduate School of Nano IT Design Fusion, Seoul National University of Science & Technology)
Im, Sang il (Graduate School of Nano IT Design Fusion, Seoul National University of Science & Technology)
Jo, Ik hyeon (Signtelecom Co.)
Cha, Jae sang (Dept. of Electronics & IT Media Eng., Seoul National University of Science and Technology)
Publication Information
The Journal of The Korea Institute of Intelligent Transport Systems / v.19, no.5, 2020 , pp. 97-105 More about this Journal
Abstract
Recently, for a smart city, there is a demand for a technology for acquiring traffic information using an intelligent road infrastructure and managing it. In the meantime, various technologies such as loop detectors, ultrasonic detectors, and image detectors have been used to analyze road traffic information but these have difficulty in collecting various informations, such as traffic density and length of a queue required for building a traffic information DB for moving vehicles. Therefore, in this paper, assuming a smart city built on the basis of a camera infrastructure such as intelligent CCTV on the road, a solution for calculating the traffic DB of moving vehicles using Vision Tracking of road CCTV cameras is presented. Simulation and verification of basic performance were conducted and solution can be usefully utilized in related fields as a new intelligent traffic DB calculation solution that reflects the environment of road-mounted CCTV cameras and moving vehicles in a variable smart city road environment. It is expected to be there.
Keywords
Traffic Information; ITS DB; CCTV; Visual Tracking; 60km/h;
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