Regularization of Complex SAR Images Using Markov Random Fields

Chalkida(2009)

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摘要
This paper presents despeckling and information extraction using non-quadratic regularization. The novelty of this paper is that instead of the Gaussian prior model a Gauss-Markov random field model is chosen, because it can efficiently model textures in the images. The iterative procedure consists of noise-free image and texture parameter. The experimental results show that the proposed method satisfactorily removes noise form synthetic and real SAR images and is comparable with the state of the art methods using objective measurements on synthetic SAR images.
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关键词
gaussian processes,markov processes,iterative methods,radar imaging,synthetic aperture radar,gauss-markov random field model,gaussian prior model,markov random fields,complex sar images,information extraction,iterative procedure,non-quadratic regularization,cost function,pixel,layout,noise,image reconstruction,adaptive filters,remote sensing,bayesian methods,probability density function,speckle,parameter estimation
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