Traffic lights system using microcontroller
DOI:
https://doi.org/10.61841/b4h8y908Keywords:
Microcontroller, Timer, Router, CameraAbstract
Since the past year's we have been using traffic lights by the microcontroller. Several stoplights, in contrast to foreign countries, will be using traffic lights. The information will offer a forecasted route to the user by contacting totally different traffic lights on the method of the user. The location of this analysis with efficiency and to save a lot of time, which helps people to move to there place in a safe manner.
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