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A fast and scalable architecture to run convolutional neural networks in low density FPGAs

机译:一种快速且可扩展的架构,可在低密度FPGA中运行卷积神经网络

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Deep learning and, in particular, convolutional neural networks (CNN) achieve very good results on several computer vision applications like security and surveillance, where image and video analysis are required. These networks are quite demanding in terms of computation and memory and therefore are usually implemented in high-performance computing platforms or devices. Running CNNs in embedded platforms or devices with low computational and memory resources requires a careful optimization of system architectures and algorithms to obtain very efficient designs. In this context, Field Programmable Gate Arrays (FPGA) can achieve this efficiency since the programmable hardware fabric can be tailored for each specific network. In this paper, a very efficient configurable architecture for CNN inference targeting any density FPGAs is described. The architecture considers fixed-point arithmetic and image batch to reduce computational, memory and memory bandwidth requirements without compromising network accuracy. The developed architecture supports the execution of large CNNs in any FPGA devices including those with small on-chip memory size and logic resources. With the proposed architecture, it is possible to infer an image in AlexNet in 4.3 ms in a ZYNQ7020 and 1.2 ms in a ZYNQ7045. (c) 2020 Elsevier B.V. All rights reserved.
机译:深入学习,特别是卷积神经网络(CNN)在需要的若干计算机视觉应用中实现了非常好的结果,如安全性和监视,其中需要图像和视频分析。在计算和存储器方面,这些网络非常苛刻,因此通常在高性能计算平台或设备中实现。在嵌入式平台或具有低计算和内存资源的设备中运行CNN需要仔细优化系统架构和算法以获得非常有效的设计。在此上下文中,现场可编程门阵列(FPGA)可以实现这种效率,因为可编程硬件结构可以针对每个特定网络量身定制。在本文中,描述了针对靶向任何密度FPGA的CNN推断的非常有效的可配置架构。该架构考虑了固定点算术和图像批处理,以减少计算,内存和内存带宽要求,而不会影响网络精度。开发架构支持在任何FPGA设备中执行大型CNN,包括具有小片上内存大小和逻辑资源的FPGA设备。利用所提出的架构,可以在ZynQ7020中的Zynq7020和1.2ms中在4.3 ms中推断图像中的图像。 (c)2020 Elsevier B.v.保留所有权利。

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