Application-Specific Soft-Core Vector Processor For Advanced Driver Assistance Systems

2017 27TH INTERNATIONAL CONFERENCE ON FIELD PROGRAMMABLE LOGIC AND APPLICATIONS (FPL)(2017)

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Abstract
Implementing convolutional neural networks for scene labelling is a current hot topic in the field of advanced driver assistance systems. The massive computational demands under hard real-time and energy constraints can only be tackled using specialized architectures. Also, cost-effectiveness is an important factor when targeting lower quantities. In this PhD thesis, a vector processor architecture optimized for FPGA devices is proposed. Amongst other hardware mechanisms, a novel complex operand addressing mode and an intelligent DMA are used to increase perfromance. Also, a C-compiler support for creating applications is introduced.
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Key words
scene labelling,advanced driver assistance systems,energy constraints,vector processor architecture,application-specific soft-core vector processor,convolutional neural networks,FPGA devices,field programmable gate array,C-compiler support,complex operand addressing mode,intelligent DMA
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