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A Research Paper on Self Driving Car

Abhishek Solanki, Gargi Mishra, Gaurav kumar, Jatin Saini, Qanit Raza

Abstract


A summary of the main idea of this subject is to extend the autonomous community of the vehicle, they will explore their environment, and are able to move without human intervention. This article suggests that vehicle automation, with the help of the placement of road signs, traffic signs, barriers, warning, response, and decision, including the fact that changing the direction of the car, to prevent the raspberry screen, the prevention and transmission for green screen use. The Neural Networks. Enter the track pin will send commands to a control device which controls the acceleration, braking, and steering. Use the objectives of the programme code of the instruction, and the prevention and algorithms for simplified models, and smart objects, in recognition, in order to track the visitor, to help, to be the software, and then follow the carriage steps.

 


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References


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