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Computational Optimization of Convolutional Neural Networks using Separated Filters Architecture

机译:使用分离滤波器架构的卷积神经网络计算优化

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This paper considers a convolutional neural network transformation that reduces computation complexity and thus speedups neural network processing. Usage of convolutional neural networks (CNN) is the standard approach to image recognition despite the fact they can be too computationally demanding, for example for recognition on mobile platforms or in embedded systems. In this paper we propose CNN structure transformation which expresses 2D convolution filters as a linear combination of separable filters. It allows to obtain separated convolutional filters by standard training algorithms. We study the computation efficiency of this structure transformation and suggest fast implementation easily handled by CPU or GPU. We demonstrate that CNNs designed for letter and digit recognition of proposed structure show 15% speedup without accuracy loss in industrial image recognition system. In conclusion, we discuss the question of possible accuracy decrease and the application of proposed transformation to different recognition problems. convolutional neural networks, computational optimization, separable filters, complexity reduction.
机译:本文考虑了卷积神经网络变换,该变换可降低计算复杂度并因此加快神经网络处理速度。卷积神经网络(CNN)的使用是图像识别的标准方法,尽管事实上它们可能在计算上要求很高,例如在移动平台或嵌入式系统上的识别。在本文中,我们提出了CNN结构变换,将二维卷积滤波器表示为可分离滤波器的线性组合。它允许通过标准训练算法获得分离的卷积滤波器。我们研究了这种结构转换的计算效率,并提出了可由CPU或GPU轻松处理的快速实现。我们证明,为拟议结构的字母和数字识别而设计的CNN在工业图像识别系统中显示出15%的加速,而没有精度损失。总之,我们讨论了可能降低精度的问题,以及所提出的变换在不同识别问题中的应用。卷积神经网络,计算优化,可分离滤波器,降低复杂度。

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