Abstract

Multimodal remote sensing images contain complementary information, thus, could potentially benefit many remote sensing applications. To this end, the image registration is a common requirement for utilizing the multimodal images. However, due to the rather different imaging mechanisms, multimodal image registration becomes much more challenging than ordinary registration, particular for optical and synthetic aperture radar (SAR) images. In this work, we design a deep matching network to exploit the latent and coherent features between multimodal patch pairs for inferring their matching labels. But, the network requires immense data for training, which is not usually met. To address this issue, we propose a generative matching network (GMN) to generate the coupled optical and SAR images, hence, improve the quantity and diversity of the training data. The experimental results show that our proposal significantly improves the registration performance of optical and SAR image registration, and achieves subpixel or close to subpixel error.

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