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A Fourier domain acceleration framework for convolutional neural networks

机译:卷积神经网络的傅立叶域加速框架

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Acceleration of training and inference of convolutional neural networks (CNNs) plays a significant role in deep learning efforts for large-scale datasets. However, it is difficult to accelerate the training and inference of CNNs based on traditional Fourier domain acceleration frameworks because Fourier domain training and inference are related to many complicated factors, such as the architecture of Fourier domain propagation passes, the representation of the activation function and the design of downsampling operations. A conceptually intuitive, useful and general Fourier domain acceleration framework for CNNs is proposed in this paper. Taking the proposed Fourier domain rectified linear unit (FReLU) as an activation function and the proposed Fourier domain pooling function (FPool) as a downsampling function, a Fourier domain acceleration framework is established for CNNs, and the inverse activation function (FReLU-1) and inverse downsampling function (FPool(-1)) are further obtained for the backward propagation pass. Furthermore, a block decomposition pipeline is integrated into the Fourier domain forward/backward propagation passes of CNNs to accelerate the training and inference of CNNs. The results show that the proposed acceleration framework can accelerate the training and inference of CNNs by a significant factor without reducing the recognition precision. (C) 2019 Elsevier B.V. All rights reserved.
机译:卷积神经网络(CNN)的训练和推理加速在大规模数据集的深度学习工作中起着重要作用。然而,由于傅立叶域的训练和推理与许多复杂的因素有关,例如傅立叶域传播通道的体系结构,激活函数的表示以及基于傅立叶域的加速框架,因此很难基于传统的傅立叶域加速框架来加速CNN的训练和推理。下采样操作的设计。本文提出了一种概念上直观,有用且通用的CNN傅立叶域加速框架。以拟议的傅立叶域整流线性单元(FReLU)为激活函数,拟议的傅立叶域池化函数(FPool)为下采样函数,为CNN建立了傅立叶域加速框架,并建立了反向激活函数(FReLU-1)进一步为反向传播通过获得反向下采样函数(FPool(-1))。此外,将块分解流水线集成到CNN的Fourier域正向/反向传播通道中,以加快CNN的训练和推理。结果表明,本文提出的加速框架可以在不降低识别精度的前提下,极大地加速CNN的训练和推理。 (C)2019 Elsevier B.V.保留所有权利。

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