Multi-temporal and multi-source remote sensing image classification by nonlinear relative normalization
Devis Tuia, Diego Marcos, Gustau Camps-Valls

TL;DR
This paper introduces Kernel Manifold Alignment (KEMA), a nonlinear data normalization method for multi-temporal and multi-source remote sensing image classification, addressing challenges of data misalignment and spectral distortions.
Contribution
The paper proposes a novel kernelized manifold alignment technique that effectively aligns multi-source remote sensing data with minimal labeled samples, improving transferability across different imaging conditions.
Findings
KEMA outperforms traditional histogram matching methods.
Effective in multi-temporal and multi-source classification tasks.
Enhances model invariance to shadowing in hyperspectral imaging.
Abstract
Remote sensing image classification exploiting multiple sensors is a very challenging problem: data from different modalities are affected by spectral distortions and mis-alignments of all kinds, and this hampers re-using models built for one image to be used successfully in other scenes. In order to adapt and transfer models across image acquisitions, one must be able to cope with datasets that are not co-registered, acquired under different illumination and atmospheric conditions, by different sensors, and with scarce ground references. Traditionally, methods based on histogram matching have been used. However, they fail when densities have very different shapes or when there is no corresponding band to be matched between the images. An alternative builds upon \emph{manifold alignment}. Manifold alignment performs a multidimensional relative normalization of the data prior to product…
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