A Survey about Intelligent Solutions for Autonomous Vehicles based on FPGA

Author:

Kasem Ashraf1,Reda Ahmad1,Vásárhelyi József1,Bouzid Ahmed1

Affiliation:

1. Institute of Automation and Infocommunication , University of Miskolc , Miskolc , Hungary

Abstract

Abstract Safe driving and reducing the number of accidents victims have been the main motivations for researchers and automotive companies for decades. Today, humanity is very close to make the old dream of fully autonomous vehicles a reality, thanks to the rapid spread of AI (artificial intelligence) and the evolution of semiconductor technologies. But the real problem here is the increasing demand for computational power and that of course will increase power requirements, hence it will not be suitable for autonomous driving applications. GPU is not suitable for solving this problem due to its power consumption as well as heat generation. On the other hand, CPU also does not satisfy the performance requirements. For the above condition, FPGA (Field Programmable Gate Array) has drawn attention as a hardware accelerator since it features high performance with low power consumption. This paper reviews the common solutions involving artificial intelligence implemented on FPGA for autonomous vehicle applications. Research, development, and current trends related to the topic are emphasized.

Publisher

Walter de Gruyter GmbH

Reference29 articles.

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