Optimizing DCNN FPGA accelerator design for handwritten hangul character recognition: work-in-progress

Hanwool Park, Changdae Lee, Hakkyung Lee, Yechan Yoo, Yoonjin Park, Injung Kim, Kang Yi
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引用次数: 9

Abstract

Deep1 Convolutional Neural Network (DCNN) is a break-through technology in image recognition. However, because of extreme computing resource requirements, DCNN need to be implemented by hardware accelerator. In this paper, we present an FPGA-based accelerator design techniques of DCNN for handwritten Hangul character recognition engine. We achieved about 11.9ms recognition time per character with Xilinx FPGA accelerator. Our design optimization was performed with Xilinx HLS and SDAccel environment targeting Kintex XCKU115 FPGA from Xilinx. Our design outperforms CPU in terms of execution time 6.25 times, and GPGPU in terms of energy efficiency 4.7 times and cooling cost for the computing servers by 17 times. We think the research results imply deep learning with FPGA accelerator will be alternative to GPGPU solutions for real-time applications, especially in data centers or sever farms.
优化手写韩文字符识别的DCNN FPGA加速器设计:正在进行中
深度卷积神经网络(deep卷积Neural Network, DCNN)是图像识别领域的一项突破性技术。然而,由于对计算资源的要求极高,DCNN需要通过硬件加速器来实现。本文提出了一种基于fpga的手写韩文字符识别引擎DCNN加速器设计技术。我们使用Xilinx FPGA加速器实现了每个字符11.9ms的识别时间。我们的设计优化是在Xilinx HLS和SDAccel环境下进行的,目标是Xilinx的Kintex XCKU115 FPGA。我们的设计在执行时间上是CPU的6.25倍,在能效上是GPGPU的4.7倍,在计算服务器的冷却成本上是GPGPU的17倍。我们认为,研究结果意味着FPGA加速器的深度学习将成为GPGPU解决方案的替代方案,用于实时应用,特别是在数据中心或服务器场。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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