Moving vehicle detection from video sequences for Traffic Surveillance System

  • Jency Rubia J Assistant Professor, M.A.M. College of Engineering and Technology. Tiruchirappalli, India http://orcid.org/0000-0002-0088-3611
  • Babitha Lincy R Department of Electronics and Communication Engineering, Sri Venkateshwara College of Engineering. Bengaluru, India http://orcid.org/0000-0003-2520-2410
  • Ahmed Thair Al-Heety Department of Electrical, Electronic and Systems Engineering, Universiti Kebangsaan Malaysia. Bangi, Selangor, Malaysia http://orcid.org/0000-0002-1863-9318

Abstract

In the current scenario, Intelligent Transportation Systems play a significant role in smart city platform. Automatic moving vehicle detection from video sequences is the core component of the automated traffic management system. Humans can easily detect and recognize objects from complex scenes in a flash. Translating that thought process to a machine, however, requires us to learn the art of object detection using computer vision algorithms. This paper solves the traffic issues of the urban areas with an intelligent automatic transportation system. This paper includes automatic vehicle counting with the help of blob analysis, background subtraction with the use of a dynamic autoregressive moving average model, identify the moving objects with the help of a Boundary block detection algorithm, and tracking the vehicle. This paper analyses the procedure of a video-based traffic congestion system and divides it into greying, binarisation, de-nosing, and moving target detection. The investigational results show that the planned system can provide useful information for traffic surveillance.

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Published
2021-02-15
How to Cite
J, J., R, B., & Al-Heety, A. (2021). Moving vehicle detection from video sequences for Traffic Surveillance System. ITEGAM-JETIA, 7(27), 41-48. https://doi.org/10.5935/jetia.v7i27.731
Section
Articles