2022
DOI: 10.1109/jstars.2022.3208577
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Coregistration of Remote Sensing Image Based on Histogram Kernel Predictability

Abstract: Registration of remote sensing images has been approached using different strategies; one of the most popular is based on similarity measures. There are different measures of similarity in the literature: Normalized Cross-Correlation (NCC), Mutual Information (MI), etc. Normalized Mutual Information (NMI) has received the most attention in image processing; among the most important limitations are its high computational cost and lack of robustness to strong radiometric changes. For this reason, in this work, w… Show more

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“…Carlos et al, 2022: In [ 99 ], the authors develop a methodology for registration of land images captured in various spectral domains by satellites. One direction of development is the use of a new similarity indicator based on histogram kernel predictability (HKP) [ 100 ].…”
Section: Articlesmentioning
confidence: 99%
“…Carlos et al, 2022: In [ 99 ], the authors develop a methodology for registration of land images captured in various spectral domains by satellites. One direction of development is the use of a new similarity indicator based on histogram kernel predictability (HKP) [ 100 ].…”
Section: Articlesmentioning
confidence: 99%