变压器:基于构造神经网络的图像分类

Yangrui Cheng, Fuqiang Xie, Yongzhou Li, G. Zhao
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引用次数: 0

摘要

为了解决在使用ViT网络结构实现图像分类任务时因输入大尺寸图像而导致的计算量过大的问题,本文提出了一种基于卷积神经网络(CNN)的ViT网络模型。其网络结构首先使用CNN提取低分辨率特征图,然后使用ViT结构对低分辨率特征图进行处理。此时,计算压力大大减轻。本文以VGG16为骨干和ViT网络结构,构建VGG16- te网络,并在ImageNet-1k数据集上实现图像分类任务。与VGG16模型相比,Top1和Top5的图像分类精度分别提高了2.5分和1.7分。此外,本文构建了以ResNet34为骨干网络和ViT网络的ResNet34- te网络,并在ImageNet-1k数据集上实现了图像分类任务。与ResNet34模型相比,Top1和Top5图像分类的准确率分别提高了2.1和1.2分。VGG16-TE和ResNet34-TE参数较viti - base模型分别减小68M和61.5M。
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Transformer: Image Classification Based on Constitutional Neural Networks
To solve the problem of excessive calculation caused by inputting images with a large size when using ViT network structure to implement image classification tasks, this paper proposes a ViT network model based on a convolutional neural network (CNN). Its network structure first uses CNN to extract a low-resolution feature map and then uses ViT structure to process the low-resolution feature map. At this time, the computational pressure is greatly relieved. In this paper, the author uses VGG16 as the Backbone and ViT network structure to build the VGG16-TE network and implements an image classification task on the ImageNet-1k dataset. Compared with the VGG16 model, the accuracy of Top1 and Top5 image classification is improved by 2.5 points and 1.7 points respectively. Besides, this paper builds a ResNet34-TE network with ResNet34 as the Backbone and ViT network and implements an image classification task on the ImageNet-1k dataset. Compared with the ResNet34 model, the accuracy of Top1 and Top5 image classification is improved by 2.1 points and 1.2 points respectively. VGG16-TE and ResNet34-TE parameters decrease by 68M and 61.5M compared with that of the ViT-Base model.
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