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A SEMI-SUPERVISED APPROACH TO SAR-OPTICAL IMAGE MATCHING

机译:SAR光学图像匹配的半监督方法

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Matching synthetic aperture radar (SAR) and optical remote sensing imagery is a key first step towards exploiting the complementary nature of these data in data fusion frameworks. While numerous signal-based approaches to matching have been proposed, they often fail to perform well in multi-sensor situations. In recent years deep learning has become the go-to approach for solving image matching in computer vision applications, and has also been adapted to the case of SAR-optical image matching. However, the hitherto proposed techniques still fail to match SAR and optical imagery in a generalizable manner. These limitations are largely due to the complexities in creating large-scale datasets of corresponding SAR and optical image patches. In this paper we frame the matching problem within semi-supervised learning, and use this as a proxy for investigating the effects of data scarcity on matching. In doing so we make an initial contribution towards the use of semi-supervised learning for matching SAR and optical imagery. We further gain insight into the non-complementary nature of commonly used supervised and unsupervised loss functions, as well as dataset size requirements for semi-supervised matching.
机译:匹配的合成孔径雷达(SAR)和光学遥感图像是利用这些数据在数据融合框架中的互补性质的关键第一步。虽然已经提出了许多基于信号的匹配方法,但它们通常不能在多传感器情况下表现良好。近年来,深入学习已成为求解计算机视觉应用中的图像匹配的进入方法,并且还适用于SAR光学图像匹配的情况。然而,迄今为止的技术仍然无法以更广泛的方式匹配SAR和光学图像。这些限制主要是由于创建了相应的SAR和光学图像斑块的大规模数据集的复杂性。在本文中,我们在半监督学习中框架匹配问题,并将其用作调查数据稀缺对匹配的影响的代理。在此过程中,我们对利用半监督学习进行匹配的SAR和光学图像做出初步贡献。我们进一步深入了解常用监督和无监督损失功能的非互补性,以及半监督匹配的数据集大小要求。

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