Extended Anisotropic Diffusion Profiles in GPU for Hyperspectral Imagery

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Morphological profiles are a common approach for extracting spatial information from remote sensing hyperspectral images by extracting structural features. Other profiles can be built based on different approaches such as, for example, differential morphological profiles, or attribute profiles. Another technique used for characterizing spatial information on the images at different scales is based on computing profiles relying on edge-preserving filters such as anisotropic diffusion filters. Their main advantage is the preservation of the distinctive morphological features of the images at the cost of an iterative calculation. In this article, the high computational cost associated with the construction of anisotropic diffusion profiles (ADPs) is highly reduced. In particular, we propose a low-cost computational approach for computing ADPs on Nvidia GPUs as well as a detailed characterization of the method, comparing it in terms of accuracy and structural similarity to other existing alternatives

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Álvaro Acción, Francisco Argüello and Dora B. Heras (2019) Extended Anisotropic Diffusion Profiles in GPU for Hyperspectral Imagery. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 12 (12), 4964-4976. Doi: 10.1109/JSTARS.2019.2939857

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This work was supported in part by the Consellería de Educación, Universidade e Formación Profesional under Grants GRC2014/008, ED431C 2018/19, and ED431G/08, in part by Ministerio de Economía y Empresa, Government of Spain under Grant TIN2016-76373-P, and in part by the European Regional Development Fund

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