Advanced SearchSearch Tips
Research of Controled Traffic Signal by Image Processing and Fuzzy Logic
facebook(new window)  Pirnt(new window) E-mail(new window) Excel Download
 Title & Authors
Research of Controled Traffic Signal by Image Processing and Fuzzy Logic
Shin, Ji-Hwan; Park, Mu-Hun;
  PDF(new window)
In this paper, We propose a method which prevents severe traffic jam by controlling traffic signal by itself based on image-processed information and fuzzy logic. The detailed idea of this method is first to let a closed monitoring camera gather the number of cars which show the flow of traffic the designated roads which are commonly considered to have traffic. After executing the image processing method on each image gathered from the monitoring camera, this system determines the changing timing of traffic signal based on fuzzy logic. Also, this image processing method shows good performance in real road environment because the setup background image which used in this system is designed to be updated in real time. All of good points mentioned above would lead driver and users to cost efficient and time efficient results by preventing the increase of the number of traffic on road in advance with the automatic traffic signal controlling algorithm based on the fuzzy logic.
Automatic traffic signal controlling algorithm;Fuzzy logic;Image processing;Real time;
 Cited by
K. B. Kim, "Intelligent Traffic Light Control using Fuzzy Method"Korea Institute of Information and Communication Engineering, vol. 15, pp. 1593-1598, Aug, 2012.

'Analysis of Traffic Congestion Cost', The Korea Transport Institute, 2013.

S. M. Jin, S. H. Kim, C. W. Do, "Development of the Traffic Actuation Signal Control System Based on Fuzzy Logic on an Arterial Street" Journal of Korea Transportation Research Society, vol. 21, no. 3, pp. 71-83, 2003.

Y. Y. Nam, Y. J. Choi, S. J. Hong, W. D. Cho,, Intelligent video surveillance systems: principles, pp. 20-40, JINHANM&B, 2011.

J. B. Shin, S. B. Jang, I. H. Ji, Introduction of Digital Image Processing, HANBITMEDIA, 2008.

G. R. Bradski, A. Keahler, Learning OpenCV, Korea, SU: HANBIT Media, 2009.

E. J. Kang, J. E. Ha, Digital Image Processing by VISUAL C++, HANBITMEDIA, 2009.

S. G. Hwang, Image Processing Programming by C++. HANBITMEDIA, 2009.

R. C. Gnalez, R. E. Woods, Digital Image Processing, England, pp. 40-120, EG: Addison Wesley Longman Limited, 1992.

J. S. Lee, Basic of Transport Image Processing, pp. 17-50, DONGHWAJISUL, 2013.

J. S. Kim, M. Y. Um, Digital Signal Processing by Image, pp. 35-70, HANBITACADEMY, 2014.

J. Mohammad, Applications of fuzzy logic : towards high machine intelligence quotient systems, pp. 40-620, Upper Saddle River, N.J : Prentice Hall PTR, 1997.

J. Ross, J. Timothy, Fuzzy logic with engineering applications, Hoboken, pp. 80-580, NJ : John Wiley, 2010.

Y. G. Jeong, T. O. Um, D. G. Kim, "Study on the Efficient Control for Intersection Traffic Light Using by Fuzzy Logic Controller" The Korea Institute of Communications and Information Sciences, vol. 9, no. 1, pp. 615-618, 1996.

G. M. Baek, J. H. Shin, M. H. Park, "Development of Auto Traffic Light Control System for Prevention of Traffic Jam" The Korea Institute of Signal Processing and Systems , vol. 15, no. 4, pp. 148-154, 2014.