We propose a new approach to synthetic aperture radar (SAR) despeckling, based on the combination of multiple alternative estimates of the same data. The many despeckling methods proposed in the literature possess different and often complementary strengths and weaknesses. Given a reliable pixelwise characterization of the image, one can take advantage of this diversity by selecting the most appropriate combination of estimators for each image region. Following this paradigm, we develop a simple algorithm where only two state-of-The-Art despeckling tools, characterized by complementary properties, are linearly combined. To ensure the smooth combination of contributes, thus avoiding new artifacts, we propose a novel soft classification method, where a basic estimate of homogeneity is improved through nonlocal and multiresolution processing steps. The results of a number of experiments conducted on both synthetic and real-world SAR images are very promising, thus confirming the potential of the proposed approach.

SAR Image Despeckling by Soft Classification / Gragnaniello, Diego; Poggi, Giovanni; Scarpa, Giuseppe; Verdoliva, Luisa. - In: IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING. - ISSN 1939-1404. - 9:6(2016), pp. 2118-2130. [10.1109/JSTARS.2016.2561624]

SAR Image Despeckling by Soft Classification

GRAGNANIELLO, DIEGO;POGGI, GIOVANNI;SCARPA, GIUSEPPE;VERDOLIVA, LUISA
2016

Abstract

We propose a new approach to synthetic aperture radar (SAR) despeckling, based on the combination of multiple alternative estimates of the same data. The many despeckling methods proposed in the literature possess different and often complementary strengths and weaknesses. Given a reliable pixelwise characterization of the image, one can take advantage of this diversity by selecting the most appropriate combination of estimators for each image region. Following this paradigm, we develop a simple algorithm where only two state-of-The-Art despeckling tools, characterized by complementary properties, are linearly combined. To ensure the smooth combination of contributes, thus avoiding new artifacts, we propose a novel soft classification method, where a basic estimate of homogeneity is improved through nonlocal and multiresolution processing steps. The results of a number of experiments conducted on both synthetic and real-world SAR images are very promising, thus confirming the potential of the proposed approach.
2016
SAR Image Despeckling by Soft Classification / Gragnaniello, Diego; Poggi, Giovanni; Scarpa, Giuseppe; Verdoliva, Luisa. - In: IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING. - ISSN 1939-1404. - 9:6(2016), pp. 2118-2130. [10.1109/JSTARS.2016.2561624]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/642364
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