Browse > Article

Development of a Vehicle Tracking Algorithm using Automatic Detection Line Calculation  

Oh, Ju-Taek (한국교통연구원)
Min, Joon-Young (상지영서대학 전자계산과)
Hur, Byung-Do (상지영서대학)
Kim, Myung-Seob (한국교통연구원)
Publication Information
Journal of Korean Society of Transportation / v.26, no.4, 2008 , pp. 265-273 More about this Journal
Abstract
Video Image Processing (VIP) for traffic surveillance has been used not only to gather traffic information, but also to detect traffic conflicts and incident conditions. This paper presents a system development of gathering traffic information and conflict detection based on automatic calculation of pixel length within the detection zone on a Video Detection System (VDS). This algorithm improves the accuracy of traffic information using the automatic detailed line segmentsin the detection zone. This system also can be applied for all types of intersections. The experiments have been conducted with CCTV images, installed at a Bundang intersection, and verified through comparison with a commercial VDS product.
Keywords
Individual Vehicle Tracking; Detection Line; Vehicle Detection; Video Detection System; Occlusion;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
1 Koller, D., Daniilidis, K., Nagel, H.(1993) Model-based object tracking in monocular image sequences of road traffic scenes, International Journal of Computer Vision 10, pp.257-281   DOI
2 Z. Kim(2006), Realtime Obstacle Detection and Tracking Based on Constrained Delaunay Triangulation, IEEE Intelligent Transportation Systems Conference, pp.548-553
3 Chan S. Park(1985), Interactive Microcomputer Graphics, Addison-Wesley Publishing Company
4 Kentaro Toyama, John Krumm, Barry Brmitt, Brain Meyers(1999), Wallflower: Principles and Practice of Background Maintenance, International Conference on Computer Vision
5 B. Coifman, D. Beymer, P. McLauchlan, J. Malik(1998), A Real-Time Computer Vision System for Vehicle Tracking and Traffic Surveillance, Transportation Research Part C, pp.271-288
6 Koller, D., Weber, J., Huang, T., Malik, J., Ogasawara, G., Rao, B., Russell, S.(1994b) Towards robust automatic traffic scene analysis in real-time, Vol.1, ICPR, Israel, pp.126-131
7 N. Otsu(1979), A Threshold Selection Method from Gray level Histogram, IEEE Transaction on Systems, Man, and Cybernetics Vol. 9, No.1, pp.62-66   DOI   ScienceOn
8 Simeon Indupalli, "Video Surveillance Systems for Traffic Monitoring," http://web2.uwindsor.ca/courses/cs/aggarwal/cs60520/SeminarMaterial/Video.ppt
9 Dar-Shyang Lee(2005), Effective Gaussian Mixture Learning for Video Background Subtraction, IEEE Trans. on Pattern Analysis and Machine Intelligence, Vol. 27, No. 5, pp. 827-832   DOI   ScienceOn
10 오주택.민준영.김승우.허병도.김명섭(2008), Tripwire 및 Tracking 기반의 영상검지시스템 개발 (Autoscope와의 성능비교를 중심으로), 대한교통학회지, 제27권, 제2호, 대한교통학회, pp.177-186   과학기술학회마을