Design of Efficient CNN Accelerator Based on Zynq Platform

Sha Sun, Hanjun Jiang, Mingchao Yin, Chun Zhang
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Abstract

With the rapid development of deep learning, convolution neural network is widely used in image recognition and object detection. However, CNN with extensive calculation is not suitable for the mobile terminals. In this paper, lightweight convolution neural network MobileNet is modified as backbone network for small object detection based on the Zynq platform. A method of data bypass is proposed which reserves shallow feature map information to the last convolutional layer, with which the detection accuracy increases by 8%. Additionally, 16 x 4 Wallace tree addition tree is designed instead of the original two-operand addition tree generated by Vivado HLS. The usage of hardware resources is reduced by 26%. The detection accuracy of the entire acceleration system is 73.7% and the FPS is 28. Based on the methods proposed, the accelerator achieve both high detection speed and accuracy, which are better than other MobileNet hardware acceleration works.
基于Zynq平台的高效CNN加速器设计
随着深度学习的迅速发展,卷积神经网络在图像识别和目标检测中得到了广泛的应用。但是,计算量大的CNN并不适合移动终端。本文将轻量级卷积神经网络MobileNet改进为基于Zynq平台的小目标检测骨干网络。提出了一种将浅层特征映射信息保留到最后一层的数据旁路方法,使检测精度提高8%。另外,设计了16 × 4 Wallace树加法树,取代了原先由Vivado HLS生成的双操作数加法树。硬件资源的使用减少了26%。整个加速度系统的检测精度为73.7%,FPS为28。基于所提出的方法,该加速器实现了较高的检测速度和精度,优于其他MobileNet硬件加速工作。
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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