Hardware Design Automation of Convolutional Neural Networks

Andrea Solazzo, Emanuele Del Sozzo, Irene De Rose, M. Silvestri, Gianluca Durelli, M. Santambrogio
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引用次数: 9

Abstract

Convolutional Neural Networks (CNNs) are a variation of feed-forward Neural Networks inspired by the biological process in the visual cortex of animals. The interest in this supervised learning algorithm has rapidly grown in many fields like image and video recognition and natural language processing. Nowadays they have become the state of the art in various applications like mobile robot vision, video surveillance and Big Data analytics. The specific computation pattern of CNNs results to be highly suitable for hardware acceleration, in fact different types of accelerators have been proposed based on GPU, Field Programmable Gate Array (FPGA) and ASIC. In particular, in the embedded systems context, due to real time and power consumption challenges, it is crucial to find the right tradeoff between performance, energy efficiency, fast development round and cost. This work proposes a framework meant as a tool for the user to accelerate and simplify the design and the implementation of CNNs on FPGAs by leveraging High Level Synthesis, still providing a certain level of customization of the hardware design.
卷积神经网络的硬件设计自动化
卷积神经网络(cnn)是前馈神经网络的一种变体,其灵感来自于动物视觉皮层的生物过程。对这种监督学习算法的兴趣在许多领域迅速增长,如图像和视频识别以及自然语言处理。如今,它们已成为移动机器人视觉、视频监控和大数据分析等各种应用领域的最新技术。cnn的具体计算模式非常适合硬件加速,实际上已经提出了基于GPU、现场可编程门阵列(FPGA)和ASIC的不同类型的加速器。特别是,在嵌入式系统环境中,由于实时和功耗方面的挑战,在性能、能源效率、快速开发周期和成本之间找到适当的权衡是至关重要的。这项工作提出了一个框架,作为一种工具,用户可以通过利用高级合成来加速和简化fpga上cnn的设计和实现,同时仍然提供一定程度的硬件设计定制。
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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