一种用于图像分类的多粒度注意残差网络

Wu Xiaogang, T. Tanprasert
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引用次数: 0

摘要

深度学习中的注意机制可以关注目标任务中的关键特征,而忽略无关的细节。本文提出了一种新的多粒度注意力模型(MGAN)来提取图像中的部分。该模型包括多粒空间注意(MSA)机制和多粒通道注意(MCA)机制。我们使用不同的卷积分支和池化层来关注样本特征空间中的关键信息,并从图像中提取更丰富的多粒度特征。该模型使用ResNet和Res2Net作为骨干网络来实现图像分类任务。在CIFAR10/100和Mini-Imagenet数据集上的实验表明,所提出的模型MGAN能够更好地关注样本特征空间中的关键信息,从图像中提取更丰富的多粒度特征,显著提高网络的图像分类精度。
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A Multi-Grained Attention Residual Network for Image Classification
Attention mechanisms in deep learning can focus on critical features and ignore irrelevant details in the target task. This paper proposes a new multi-grained attention model (MGAN) to extract parts from images. The model includes a multi-grain spatial attention (MSA) mechanism and a multi-grain channel attention (MCA) mechanism. We use different convolutional branches and pooling layers to focus on the crucial information in the sample feature space and extract richer multi-grain features from the image. The model uses ResNet and Res2Net as the backbone networks to implement the image classification task. Experiments on the CIFAR10/100 and Mini-Imagenet datasets show that the proposed model MGAN can better focus on the critical information in the sample feature space, extract richer multi-grain features from the images, and significantly improve the image classification accuracy of the network.
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来源期刊
Transactions on Electrical Engineering, Electronics, and Communications
Transactions on Electrical Engineering, Electronics, and Communications Engineering-Electrical and Electronic Engineering
CiteScore
1.60
自引率
0.00%
发文量
45
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