Traffic Light Control System Using Raspberry-PI
DOI:
https://doi.org/10.51983/ajes-2016.5.1.1970Keywords:
Traffic control, Raspberry-pi, Image processing, Vehicle counting, Open CV, IR sensorAbstract
Nowadays congestion in traffic is a serious issue. The traffic congestion can also be caused by large red light delays etc. The delay of respective light is hard coded in the traffic light and it is not dependent on traffic. In this paper we studied the optimization of traffic light controller in a city using microcontroller. The system tries to reduce possibilities of traffic jams, caused by traffic lights, to an extent. The system is based on raspberry-pi. The system contains IR transmitter and IR receiver which are mounted on either sides of roads respectively. Based on different vehicles count, the raspberrypi takes desicision and updates the traffic lights delays as a result. Thus based on vehicles count, raspberry-pi defines different ranges for traffic light delays and updates those accordingly. This recorded vehicle count data can be used in future to analyze traffic condition at respective traffic lights connected to the system. For appropriate analysis, the record data can be downloaded to the controller through communication between raspberry-pi and the computer then it will send correct signal into the LED lights . In future in this system can be used to inform people about different places traffic condition.
References
Rajasheswari sunder, Santhoshs Hebber , and varaprasad Golla, Implimenting intelligence Traffic control system for congestion control, Ambulance Clearness, and Stolen Vehicle Detection " IEEE Sensors Journal, Vol. 15, No.2 February 2015.
M.Vidhyia, K.Paramasivam, S.Elayaraja, S.Bharathiraja Reordering of Test vectors using weighting factor based on Average power for test power Minimization, Vol.4, No.2, 2015, pp.10-15
Raspberry pi Web page:Https://en.wikipedia.org/wiki/Rasspberry-pi [NOV 2015].
K.Vidhya, A.Bazila Banu, "Density Based Traffic signal System" , Volume 3, Special Issue 3, March 2014.
Priyanka Khanke, prof. P.S.Kulkarni, "A Technique on Road Traffic Analysis using Image Processing", Vol. 3 Issue 2, February 2014.
Ms. Pallavi Choudekar, Ms. Sayanti Banerjee Prof. M.K. Muju, Real Time Traffic Light Control Using Image processing " Vol.2, No.March 2014.
R. Nithin Goutham1, J. Sharon Roza2, M.Santhosh3, Intelligent signal control system, Vol.3, Special Issue 4, May 2014.
S. Lokesh, T. Prahald Reddy, An Adaptive Traffic Control System Using Rasspberry pi, Vol 3(6): June, 2014
Traffic Management Centre. [online]. Available: http://www.bangaloretrafficpolice.gov.in/index.php
option=com=content&view=article&id=87&btp=87, accessed 2014.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2016 The Research Publication
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.