ACANet: A Fine-grained Image Classification Optimization Method Based on Convolution and Attention Fusion

Zhi Tan Zhi Tan, Zi-Hao Xu Zhi Tan
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Abstract

The key to solve the problem of fine-grained image classification is to find the differentiation regions related to fine-grained features. In this paper, we try to add new network components to the original network and adjust various parameters to try to propose a new fine-grained image classification network. We propose a fine-grained image classification network based on the fusion of asymmetric convolution, convolution and self-attention mechanisms. Firstly, an enhanced module using asymmetric convolution to assist classical convolution proposed to help convolution learn deep features. Secondly, according to the common points of convolution and self-attention mechanism, we invented a fusion module of convolution and self-attention mechanism to improve the learning ability of the network.We integrate these two modules into the residual network and invent a new residual network .Finally, according to the experience, we design a new downsampling layer to adapt to the new component of the attention mechanism and improve the performance of the model. The experiment test on three publicly available datasets, and three methods for comparison. The results show that the new structure can effectively complete the task of fine-grained image classification, and the classification accuracy of different methods and different datasets are significantly improved.  
ACANet:基于卷积和注意力融合的精细图像分类优化方法
解决细粒度图像分类问题的关键在于找到与细粒度特征相关的区分区域。本文尝试在原有网络的基础上添加新的网络组件,并调整各种参数,试图提出一种新的细粒度图像分类网络。我们提出了一种基于非对称卷积、卷积和自注意机制融合的细粒度图像分类网络。首先,我们提出了一个利用非对称卷积辅助经典卷积的增强模块,以帮助卷积学习深度特征。其次,根据卷积和自注意机制的共同点,我们发明了卷积和自注意机制的融合模块,以提高网络的学习能力。最后,根据经验,我们设计了一个新的下采样层,以适应注意机制的新成分,提高模型的性能。实验测试在三个公开的数据集上进行,并采用三种方法进行比较。结果表明,新结构能有效完成细粒度图像分类任务,不同方法和不同数据集的分类准确率都有显著提高。
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