Review on self-driving cars using neural network architectures

Srinivas Rao P, Rohan Gudla *, Vijay Shankar Telidevulapalli, Jayasree Sarada Kota and Gayathri Mandha

Department of Computer Science and Engineering, ACE Engineering College, Hyderabad, Telangana, India.
 
Review Article
World Journal of Advanced Research and Reviews, 2022, 16(02), 736-746
Article DOI: 10.30574/wjarr.2022.16.2.1240
 
Publication history: 
Received on 08 October 2022; revised on 15 November 2022; accepted on 18 November 2022
 
Abstract: 
A self-driving automobile is one that can sense its environment and navigate obstacles like traffic and other vehicles on its own with little to no human intervention. Although it has been debated and worked on for a very long time, Tesla was able to produce this cutting-edge technology, which is currently being used in the automotive sector. These cars started to appear in other markets in recent years as both private and public transportation (taxis etc.). In this product development, numerous businesses are involved, including Waymo, UBER, Nissan, and Nvidia. With this kind of vehicle, the efficiency, safety, and ability to reduce human error in all aspects of automobile transportation are all improved, and driving is made as safe as possible. This kind of system can revolutionize transportation for those with disabilities and support independent travel for the blind. In this article, the development of self-driving automobiles is briefly discussed. The deep learning techniques used for self-driving automobiles are thoroughly discussed in this review article. It focuses on current techniques for lane recognition, path planning, and traffic sign detection. Additionally, it covers the experimental findings related to each of the aforementioned techniques.
 
Keywords: 
Self Driving; Convolutional Neural Network (CNN); Computer Vision; Autonomous Driving; Neural Network; Deep Learning
 
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