Variational Bayesian Blind Image Deconvolution: A review. Ruiz, P., Zhou, X., Mateos, J., Molina, R., & Katsaggelos, A. K. Digital Signal Processing, 47:116–127, dec, 2015.
Variational Bayesian Blind Image Deconvolution: A review [link]Paper  doi  abstract   bibtex   
In this paper we provide a review of the recent literature on Bayesian Blind Image Deconvolution (BID) methods. We believe that two events have marked the recent history of BID: the predominance of Variational Bayes (VB) inference as a tool to solve BID problems and the increasing interest of the computer vision community in solving BID problems. VB inference in combination with recent image models like the ones based on Super Gaussian (SG) and Scale Mixture of Gaussians (SMG) representations have led to the use of very general and powerful tools to provide clear images from blurry observations. In the provided review emphasis is paid on VB inference and the use of SG and SMG models with coverage of recent advances in sampling methods. We also provide examples of current state of the art BID methods and discuss problems that very likely will mark the near future of BID.
@article{Bruno2013,
abstract = {In this paper we provide a review of the recent literature on Bayesian Blind Image Deconvolution (BID) methods. We believe that two events have marked the recent history of BID: the predominance of Variational Bayes (VB) inference as a tool to solve BID problems and the increasing interest of the computer vision community in solving BID problems. VB inference in combination with recent image models like the ones based on Super Gaussian (SG) and Scale Mixture of Gaussians (SMG) representations have led to the use of very general and powerful tools to provide clear images from blurry observations. In the provided review emphasis is paid on VB inference and the use of SG and SMG models with coverage of recent advances in sampling methods. We also provide examples of current state of the art BID methods and discuss problems that very likely will mark the near future of BID.},
author = {Ruiz, Pablo and Zhou, Xu and Mateos, Javier and Molina, Rafael and Katsaggelos, Aggelos K.},
doi = {10.1016/j.dsp.2015.04.012},
isbn = {9780992862602 22195491 , issue = 10},
issn = {10512004},
journal = {Digital Signal Processing},
keywords = {Bayesian modeling,Blind deconvolution,Image deblurring,Image restoration,Variational Bayesian},
month = {dec},
pages = {116--127},
title = {{Variational Bayesian Blind Image Deconvolution: A review}},
url = {https://linkinghub.elsevier.com/retrieve/pii/S105120041500144X},
volume = {47},
year = {2015}
}

Downloads: 0