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Improvement of Residual Attention Network for Image Classification

机译:改进图像分类的剩余注意网络

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The existing residual attention network (RAN) method mainly utilizes the deeper network layer for the image objects which are to be classified. However, when the network depth is simply increased, it will lead to gradient dispersion (or explosion) effect. To address the problem, we propose a new improvement method of residual attention network for image classification, which applies several upsampling schemes to the RAN process, i.e., the stacked network structure extraction, and the bottom-up and top-down feedforward attention for residual learning. In the experiments, we have given comparisons of different network structures and different upsampling methods that are applied to the RAN. The proposed improvement method achieves state-of-the-art image classification performance on two benchmark datasets including CIFAR-10 (4.23% error) and CIFAR-100 (21.15% error). Compared with the traditional RAN method, the proposed improvement method can improve the accuracy of image classification to some extent.
机译:现有的残差网络(RAN)方法主要利用更深的网络层进行分类的图像对象。然而,当网络深度简单地增加时,它将导致梯度分散(或爆炸)效应。为了解决问题,我们提出了一种新的改进方法,用于图像分类的剩余注意网络,这将多个上采样方案应用于RAN过程,即堆叠的网络结构提取,以及残差的自下而上和自上而下的前馈注意学习。在实验中,我们已经给出了应用于ran的不同网络结构和不同的上采样方法的比较。所提出的改进方法在包括CIFAR-10(4.23%误差)和CIFAR-100(21.15%误差)的两个基准数据集中实现了最先进的图像分类性能。与传统的RAN方法相比,所提出的改进方法可以在一定程度上提高图像分类的准确性。

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