Supervised classification of multisensor and multiresolution remote sensing images with a hierarchical copula-based approach

A Voisin, VA Krylov, G Moser… - IEEE Transactions on …, 2013 - ieeexplore.ieee.org
IEEE Transactions on Geoscience and remote sensing, 2013ieeexplore.ieee.org
In this paper, we develop a novel classification approach for multiresolution, multisensor
[optical and synthetic aperture radar (SAR)], and/or multiband images. This challenging
image processing problem is of great importance for various remote sensing monitoring
applications and has been scarcely addressed so far. To deal with this classification
problem, we propose a two-step explicit statistical model. We first design a model for the
multivariate joint class-conditional statistics of the coregistered input images at each …
In this paper, we develop a novel classification approach for multiresolution, multisensor [optical and synthetic aperture radar (SAR)], and/or multiband images. This challenging image processing problem is of great importance for various remote sensing monitoring applications and has been scarcely addressed so far. To deal with this classification problem, we propose a two-step explicit statistical model. We first design a model for the multivariate joint class-conditional statistics of the coregistered input images at each resolution by resorting to multivariate copulas. Such copulas combine the class-conditional marginal probability density functions (pdfs) of each input channel that are estimated by finite mixtures of well-chosen parametric families. We consider different distribution families for the most common types of remote sensing imagery acquired by optical and SAR sensors. We then plug the estimated joint pdfs into a hierarchical Markovian model based on a quad-tree structure, where each tree-scale corresponds to the different input image resolutions and to corresponding multiscale decimated wavelet transforms, thus preventing a strong resampling of the initial images. To obtain the classification map, we resort to an exact estimator of the marginal posterior mode. We integrate a prior update in this model in order to improve the robustness of the developed classifier against noise and speckle. The resulting classification performance is illustrated on several remote sensing multiresolution data sets, including very high resolution and multisensor images acquired by COSMO-SkyMed and GeoEye-1.
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