A Research and Design of Lightweight Convolutional Neural Networks Accelerator Based on Systolic Array Structure

Yunping Zhao, Xiaowen Chen, Rui Xu, Jinhui Wei, Jianzhuang Lu, Bo Yuan
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Abstract

With the wide application of convolutional neural networks(CNNs) in the field of artificial intelligence, more attention has been paid to the architecture design of CNNs accelerator. But even so, there is little research on hardware acceleration of light-weight CNNs, and there is a lack of systematic and in-depth exploration of lightweight CNNs accelerator design space. In this paper, we propose a design scheme for the lightweight CNNs accelerator based on the systolic array structure. Taking the MobileNet series, the typical representative of lightweight CNNs, as the test benchmark, we carry out detailed experiments and research analysis on the accelerator performance under different data-flow modes and different core computing array scales. Based on the systematic and comprehensive experiments, we provide powerful experimental data supporting and scientific guidance for the design space of the systolic array based lightweight CNNs accelerator and the trade-off of various indicators including operational efficiency, acceleration ratio, cycle time and so on, which makes up for the blank of current research in this field, and makes great convenience for subsequent designers to develop lightweight CNNs accelerators. Through our research, MobileNet V1 is speeded up nearly 1.2 times under certain conditions.
基于收缩阵列结构的轻量级卷积神经网络加速器的研究与设计
随着卷积神经网络(cnn)在人工智能领域的广泛应用,卷积神经网络加速器的架构设计越来越受到人们的关注。但即便如此,关于轻量化cnn硬件加速的研究还很少,对轻量化cnn加速器设计空间缺乏系统深入的探索。本文提出了一种基于收缩阵列结构的轻量级cnn加速器设计方案。我们以轻量级cnn的典型代表MobileNet系列为测试基准,对加速器在不同数据流模式和不同核心计算阵列规模下的性能进行了详细的实验和研究分析。通过系统全面的实验,为基于收缩阵列的轻量化CNNs加速器的设计空间以及运算效率、加速比、循环时间等各项指标的权衡提供了有力的实验数据支持和科学指导,弥补了目前该领域研究的空白,为后续设计人员开发轻量化CNNs加速器提供了极大的便利。通过我们的研究,在一定条件下,MobileNet V1的速度提高了近1.2倍。
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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