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Optimization of Traffic Lights Using OpenCV

Ashutosh Dubey, Chirag Keshri, Divya Arora, Poornima Suryvanshi, Monica Bhutani

Abstract


The objective of traffic light optimization is to work on reducing the length of time waste waiting at traffic lights the procedure of employing a computer application to adjust the timing parameters for each traffic flow and the scheduled relationship among signalized junctions is known as traffic signal optimization this concept attempts to set the green signal timer based on real-time traffic jams i.e. the vehicle population in a specific traffic signal zone to complete this project we will use the OpenCV approach to detect automobiles then execute our calculations in the algorithm to forecast when the green light will turn on the projects major goal is to reduce the hours spent waiting while a light is green our major goal is to reduce the time spent waiting while a signal is green.


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References


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