Using Bilinear-Siamese architecture for remote sensing scene classification

Xu Cao, H. Zou, Xinyi Ying, Runlin Li, Shitian He, Fei Cheng
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Abstract

The key challenge of remote sensing (RS) scene classification is that features generated by similar scenes are difficult to distinguish. To solve the problem, we present a Bilinear-Siamese architecture to learn to distinguish the subtle discriminative features between similar scenes. Specifically, a pair of images are sent to the feature extraction module. Then, the extracted paired features are sent to two branches: 1) A fully connected (FC) layer to generate the normal classification results. 2) A bilinear mix module and a FC layer to generate the bilinear mixed classification results. Finally, we introduce a discriminative fusion method to fuse the aforementioned classification results for final output. Noted that, the contrast loss of Bilinear-Siamese architecture improves the ability to distinguish similar scenes based on metric learning. In addition, we introduce the additional bilinear loss to improve the generalization and the robustness of our network. We conduct extensive experiments on benchmark RS datasets to demonstrate the effectiveness of our network and the experimental results show that the performance of the proposed method surpasses other existing methods.
基于双线性-暹罗结构的遥感场景分类
遥感场景分类面临的主要挑战是相似场景产生的特征难以区分。为了解决这个问题,我们提出了一种双线性-暹罗结构,以学习区分相似场景之间的细微区别特征。具体来说,将一对图像发送到特征提取模块。然后,将提取的配对特征发送到两个分支:1)一个完全连接(FC)层,生成正常分类结果。2)双线性混合模块和FC层,生成双线性混合分类结果。最后,我们引入了一种判别融合方法,将上述分类结果融合为最终输出。值得注意的是,双线性-暹罗结构的对比度损失提高了基于度量学习区分相似场景的能力。此外,我们引入了额外的双线性损失来提高网络的泛化和鲁棒性。我们在基准RS数据集上进行了大量的实验,以证明我们的网络的有效性,实验结果表明,所提出的方法的性能优于其他现有方法。
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