Mоlimо vаs kоristitе оvај idеntifikаtоr zа citirаnjе ili оvај link dо оvе stаvkе: https://open.uns.ac.rs/handle/123456789/2002
Nаziv: Image Inpainting and Demosaicing via Total Variation and Markov Random Field-Based Modeling
Аutоri: Panić, Marko 
Jakovetić, Dušan 
Crnojević, Vladimir 
Pižurica, Aleksandra
Dаtum izdаvаnjа: нов-2018
Čаsоpis: 2018 26th Telecommunications Forum, TELFOR 2018 - Proceedings
Sažetak: © 2018 IEEE. The problem of image reconstruction from incomplete data can be formulated as a linear inverse problem and is usually approached using optimization theory tools. Total variation (TV) regularization has been widely applied in this framework, due to its effectiveness in capturing spatial information and availability of elegant, fast algorithms. In this paper we show that significant improvements can be gained by extending this approach with a Markov Random Field (MRF) model for image gradient magnitudes. We propose a novel method that builds upon the Chambolle's fast projected algorithm designed for solving TV minimization problem. In the Chambolle's algorithm, we incorporate a MRF model which selects only a subset of image gradients to be effectively included in the algorithm iterations. The proposed algorithm is especially effective when a large portion of image data is missing. We also apply the proposed method to demosacking where algorithm shows less sensitivity to the initial choice of the tuning parameter and also for its wide range of values outperformes the method without the MRF model.
URI: https://open.uns.ac.rs/handle/123456789/2002
ISBN: 9781538671702
DOI: 10.1109/TELFOR.2018.8612138
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