Computer Vision Based Traffic Monitoring and Analyzing From On-Road Videos
Computer Vision Based Traffic Monitoring and Analyzing From On-Road Videos
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Keywords

video based traffic monitoring
traffic surveillance
counting vehicles
traffic model

How to Cite

Md. Shamim Reza Sajib, & T.M. Amir-Ul-Haque Bhuiyan. (2019). Computer Vision Based Traffic Monitoring and Analyzing From On-Road Videos. Global Journal of Computer Science and Technology, 19(G2), 19–24. Retrieved from https://gjcst.com/index.php/gjcst/article/view/501

Abstract

Traffic monitoring and traffic analysis is much needed to ensure a modern and convenient traffic system However it is a very challenging task as the traffic condition is dynamic which makes it quite impossible to maintain the traffic through traditional way Designing a smart traffic system is also inevitable for the big and busy cities In this paper we propose a vision based traffic monitoring system that will help to maintain the traffic system smartly We also generate an analysis of the traffic for a certain period which will be helpful to design a smart and feasible traffic system for a busy city In the proposed method we use Haar feature based Adaboost classifier to detect vehicles from a video We also count the number of vehicles appeared in the video utilizing two virtual detection lines VDL Detecting and counting vehicles by proposed method will provide an easy and cost effective solution for fruitful and operative traffic monitoring system along with information to design an efficient traffic model
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