基于fpga的流水线卷积神经网络

Gheni A. Ali, Ahmed Hussein Ali
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引用次数: 0

摘要

为了加快卷积神经网络(cnn)的速度,本研究全面概述了基于fpga的流水线对cnn硬件加速的使用。如今,大多数人使用卷积神经网络(cnn)来执行图像分类和物体识别等计算机视觉任务。然而,cnn的处理和内存需求可能会过高,特别是对于实时应用。为了加快cnn的速度,基于fpga的流水线由于其并行处理能力和低功耗而成为一种可行的选择。考试描述了基于fpga的流水线的基本原理和卷积神经网络(cnn)的基本结构。然后回顾了目前在fpga上为cnn开发流水线加速器的最佳实践,涵盖了分区和流水线等主题。面积和功率限制、内存需求和延迟考虑只是本文讨论的一些困难和权衡。此外,该调查在性能、能耗和资源利用率方面评估和对比了用于cnn的各种流水线FPGA加速器。本文还讨论了未来的方向和潜在的研究领域,例如近似计算技术的使用,可重构架构与新兴存储技术的集成,以及结合fpga和其他硬件加速器的混合架构的探索。本调查旨在通过全面概述基于fpga的cnn流水线的当前趋势和问题,帮助研究人员和从业者开发高效的神经网络硬件加速器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Neural Networks using FPGA-based Pipelining
In order to speed up convolutional neural networks (CNNs), this study gives a complete overview of the use of FPGA-based pipelining for hardware acceleration of CNNs. These days, most people use convolutional neural networks (CNNs) to perform computer vision tasks like picture categorization and object recognition. The processing and memory demands of CNNs, however, can be excessive, especially for real-time applications. In order to speed up CNNs, FPGA-based pipelining has emerged as a viable option thanks to its parallel processing capabilities and low power consumption. The examination describes the fundamentals of FPGA-based pipelining and the basic structure of convolutional neural networks (CNNs). The current best practises for developing pipelined accelerators for CNNs on FPGAs are then reviewed, covering topics like partitioning and pipelining. Area and power limits, memory needs, and latency considerations are only some of the difficulties and trade-offs discussed in the article. In addition, the survey evaluates and contrasts the various pipelined FPGA accelerators for CNNs in terms of performance, energy consumption, and resource utilisation. Future directions and potential research areas are also discussed in the paper, such as the use of approximate computing techniques, the integration of reconfigurable architectures with emerging memory technologies, and the exploration of hybrid architectures that combine FPGAs and other hardware accelerators. This survey was created to aid researchers and practitioners in developing efficient and effective hardware accelerators for neural networks by providing a thorough overview of current trends and issues in FPGA-based pipelining for CNNs.
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CiteScore
4.30
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