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Traffic Lights Using Open CV: A Review

Divya Arora

Abstract


The goal of traffic signal streamlining is to deal with decreasing the timeframe squander holding up at traffic signals the method of utilizing a PC application to change the timing boundaries for each traffic stream and the planned relationship among signalized intersections is known as traffic light improvement this idea endeavors to set the green sign clock in view of continuous gridlocks for example the vehicle populace in a particular traffic light zone to finish this venture we will utilize the OpenCV way to deal with recognize cars then execute our estimations in the calculation to gauge when the green light will turn on the tasks significant objective is to diminish the hours spent holding up while a light is green our significant objective is to decrease the time spent holding up while a sign is green.


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References


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