Decoupled Contrastive Learning Constrained by Physical Feature for SAR Target Recognition

Longfei Wang;Zhunga Liu;Zuowei Zhang;Xiaokui Yue
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Abstract

In the field of remote sensing target recognition, the fusion of synthetic aperture radar (SAR) and optical targets faces significant challenges due to the huge differences in feature representation. Current fusion recognition methods primarily focus on the feature alignment, overlooking the effective utilization of the distinct features inherent to each modality. A decoupled contrastive learning framework constrained by incoherent entropy (DCL-IE) is proposed to fuse the differential features of both SAR and optical modalities. DCL-IE can effectively enhance the model’s ability to distinguish between interclass differences between SAR and optical targets, thereby improving the accuracy of SAR target recognition. Specifically, decoupled contrastive learning (DCL) is designed to efficiently concentrate on different class features when oriented to cross-modal differential representations. The proposed relaxed label assignment algorithm can effectively distinguish between one specific class and the other classes, promoting the extension of DCL into the unsupervised learning domain. Furthermore, the physical incoherent entropy (IE) features are utilized to guide the learning direction of interclass representations, which enhances the extraction of intraclass features by leveraging frequency robustness. Extensive experiments with various target recognition methods on SAR and optical datasets, including FUSAR-Ship, FGSC-23, and FGSCR-42, demonstrate the effectiveness of the proposed framework.
基于物理特征约束的解耦对比学习SAR目标识别
在遥感目标识别领域,合成孔径雷达(SAR)与光学目标的融合由于特征表示的巨大差异而面临着巨大的挑战。目前的融合识别方法主要集中在特征对齐上,忽略了有效利用每个模态固有的独特特征。提出了一种非相干熵约束下的解耦对比学习框架(DCL-IE),以融合SAR和光学模态的差异特征。DCL-IE可以有效增强模型区分SAR与光学目标类间差异的能力,从而提高SAR目标识别的精度。具体来说,解耦对比学习(DCL)的目的是在面向跨模态差分表示时有效地集中在不同的类特征上。所提出的宽松标签分配算法可以有效地区分特定类别和其他类别,促进了DCL向无监督学习领域的扩展。此外,利用物理不相干熵(IE)特征来指导类间表征的学习方向,利用频率鲁棒性增强了类内特征的提取。在SAR和光学数据集(包括FUSAR-Ship、FGSC-23和fgsc -42)上使用各种目标识别方法进行的大量实验证明了所提出框架的有效性。
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