Automatic Coregistration Of Sar And Optical Images Exploiting Complementary Geometry And Mutual Information

Mario Costantini,Massimo Zavagli,Javier Martin,Anabella Medina, Aureliana Barghini, Jorge Naya, Carlos Hernando,Flavia Macina, Inés Ruíz, Enrique Nicolas, Severino Fernandez

IGARSS 2018 - 2018 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM(2018)

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摘要
Image coregistration aims at stacking two or multiple images in a way such that, for each image, the same pixel corresponds to the same point of the target scene (possibly with sub-pixel accuracy). We can distinguish two families of image coregistration problems, basically depending on if the images to be coregistered are taken by sensors of the same or different type (e.g., sensing different wavelenghts), and with similar or different illumination and acquisition geometries (e.g. different sun illumination conditions and/or different acquisition incidence angles).Whilst the first type of image coregistration is well established, multimodal coregistration is not yet well founded and due to difficulty of finding correspondences between the images (tie points) in a robust way, and the available approaches often recur to manual assistance.The multimodal image coregistration technique proposed in this work overcomes the problems due to differences in radiometries and in geometries by exploiting two main concepts: complementary geometry information between the images to be coregistered, and mutual information (or entropy) as similarity metric. The method focuses on coregistration of very high resolution synthetic aperture radar (SAR) and optical images, but the approach is of general validity.The tests performed on real very high resolution optical and SAR data confirm the validity of the method.
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关键词
image coregistration, multimodal image coregistration, mutual information, bundle adjustment, SAR feature extraction
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