Adaptive non-local level-set model for despeckling and deblurring of synthetic aperture radar imagery

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2018

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Taylor and Francis Ltd. michael.wagreich@univie.ac.at

Abstract

In this article, we modify Mumford–Shah level-set model to handle speckles and blur in synthetic aperture radar (SAR) imagery. The proposed model is formulated using a non-local regularization framework. Hence, the model duly cares about local gradient oscillations (corresponding to the fine details/textures) during the evolution process. It is assumed that the speckle intensity is gamma distributed, while designing a maximum a posteriori estimator of the functional. The parameters of the gamma distribution (i.e. scale and shape) are estimated using a maximum likelihood estimator. The regularization parameter of the model is evaluated adaptively using these (estimated) parameters at each iteration. The split-Bregman iterative scheme is employed to improve the convergence rate of the model. The proposed and the state-of-the-art despeckling models are experimentally verified and compared using a large number of speckled and blurred SAR images. Statistical quantifiers are used to numerically evaluate the performance of various models under consideration. © 2018, © 2018 Informa UK Limited, trading as Taylor & Francis Group.

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Keywords

Image enhancement, Maximum likelihood estimation, Parameter estimation, Speckle, Synthetic aperture radar, Tracking radar, Gamma distribution, Gamma-distributed, Iterative schemes, Maximum a Posteriori Estimator, Maximum likelihood estimator, Non-local regularization, Regularization parameters, Synthetic Aperture Radar Imagery, Radar imaging, image processing, imagery, modeling, speckle, synthetic aperture radar

Citation

International Journal of Remote Sensing, 2018, 39, 20, pp. 6540-6556

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