JOURNAL ARTICLE

Design of FPGA-Based Accelerator for Convolutional Neural Network under Heterogeneous Computing Framework with OpenCL

Li LuoYakun WuFei QiaoYi YangQi WeiXiaobo ZhouYongkai FanShuzheng XuXin-Jun LiuHuazhong Yang

Year: 2018 Journal:   International Journal of Reconfigurable Computing Vol: 2018 Pages: 1-10   Publisher: Hindawi Publishing Corporation

Abstract

CPU has insufficient resources to satisfy the efficient computation of the convolution neural network (CNN), especially for embedded applications. Therefore, heterogeneous computing platforms are widely used to accelerate CNN tasks, such as GPU, FPGA, and ASIC. Among these, FPGA can accelerate the computation by mapping the algorithm to the parallel hardware instead of CPU, which cannot fully exploit the parallelism. By fully using the parallelism of the neural network’s structure, FPGA can reduce the computing costs and increase the computing speed. However, the development of FPGA requires great design skills. As a heterogeneous development platform, OpenCL has some advantages such as high abstraction level, short development cycle, and strong portability, which can make up for the lack of skilled designers. This paper uses Xilinx SDAccel to realize the parallel acceleration of CNN task, and it also proposes an optimizing strategy of single convolutional layer to accelerate CNN. Simulation results show that the calculation speed could be improved by adopting the proposed optimizing strategy. Compared with the baseline design, the strategy of single convolutional layer could increase the computing speed 14 times. Performance of the whole CNN task could be improved 2 times more than before, and the speed of image classification could attain more than 48 fps.

Keywords:
Computer science Software portability Field-programmable gate array Convolutional neural network Parallel computing Speedup Application-specific integrated circuit Symmetric multiprocessor system Abstraction layer Computation Convolution (computer science) Task (project management) Computer architecture Embedded system Artificial neural network Software Artificial intelligence Algorithm

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7
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6
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0.61
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Citation History

Topics

Advanced Neural Network Applications
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Image Processing Techniques and Applications
Physical Sciences →  Engineering →  Media Technology
CCD and CMOS Imaging Sensors
Physical Sciences →  Engineering →  Electrical and Electronic Engineering
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