Fast algorithm using summed area tables with unified layer performing convolution and average pooling

Akihiko Kasagi, T. Tabaru, H. Tamura
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引用次数: 19

Abstract

Convolutional neural networks (CNNs), in which several convolutional layers extract feature patterns from an input image, are one of the most popular network architectures used for image classification. The convolutional computation, however, requires a high computational cost, resulting in an increased power consumption and processing time. In this paper, we propose a novel algorithm that substitutes a single layer for a pair formed by a convolutional layer and the following average-pooling layer. The key idea of the proposed scheme is to compute the output of the pair of original layers without the computation of convolution. To achieve this end, our algorithm generates summed area tables (SATs) of input images first and directly computes the output values from the SATs. We implemented our algorithm for forward propagation and backward propagation to evaluate the performance. Our experimental results showed that our algorithm achieved 17.1 times faster performance than the original algorithm for the same parameter used in ResNet-34.
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快速算法使用求和面积表与统一层执行卷积和平均池化
卷积神经网络(cnn)是最流行的用于图像分类的网络体系结构之一,其中几个卷积层从输入图像中提取特征模式。然而,卷积计算需要很高的计算成本,从而导致功耗和处理时间的增加。在本文中,我们提出了一种新的算法,用一个单层代替由卷积层和下面的平均池化层组成的一对。该方案的关键思想是在不计算卷积的情况下计算原始层对的输出。为了实现这一目的,我们的算法首先生成输入图像的求和面积表(SATs),并直接计算SATs的输出值。我们实现了前向传播和后向传播算法来评估性能。实验结果表明,在ResNet-34中使用的相同参数下,我们的算法比原始算法的性能提高了17.1倍。
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