General choice of the regularization functional in regularized image restoration

Type: Article

Publication Date: 1995-05-01

Citations: 211

DOI: https://doi.org/10.1109/83.382494

Abstract

The determination of the regularization parameter is an important issue in regularized image restoration, since it controls the trade-off between fidelity to the data and smoothness of the solution. A number of approaches have been developed in determining this parameter. In this paper, a new paradigm is adopted, according to which the required prior information is extracted from the available data at the previous iteration step, i.e., the partially restored image at each step. We propose the use of a regularization functional instead of a constant regularization parameter. The properties such a regularization functional should satisfy are investigated, and two specific forms of it are proposed. An iterative algorithm is proposed for obtaining a restored image. The regularization functional is defined in terms of the restored image at each iteration step, therefore allowing for the simultaneous determination of its value and the restoration of the degraded image. Both proposed iteration adaptive regularization functionals are shown to result in a smoothing functional with a global minimum, so that its iterative optimization does not depend on the initial conditions. The convergence of the algorithm is established and experimental results are shown.

Locations

  • IEEE Transactions on Image Processing - View - PDF
  • PubMed - View

Similar Works

Action Title Year Authors
+ <title>Regularized iterative image restoration based on an iteratively updated convex smoothing functional</title> 1993 Moon Gi Kang
Aggelos K. Katsaggelos
+ Iterative evaluation of the regularization parameter in regularized image restoration 1992 Aggelos K. Katsaggelos
Moon Gi Kang
+ A general formulation of the weighted smoothing functional for regularized image restoration 2002 Moon Gi Kang
Aggelos K. Katsaggelos
+ <title>Globally optimal smoothing functional for edge-enhancing regularized image restoration</title> 1996 Moon Gi Kang
Aggelos K. Katsaggelos
Kyu Tae Park
+ Image restoration based on the minimized surface regularization 2018 Zhiā€Feng Pang
Li-Zhen Guo
Yuping Duan
Jian LĆ¼
+ Minimum residual method based optimal selection of regularization parameter in image restoration 2016 Yamuna Narayana Swamy
Phaneendra K. Yalavarthy
+ Adaptively regularized constrained total least-squares image restoration 2000 Wufan Chen
Ming Chen
Jie Zhou
+ <title>Robust regularized image restoration</title> 1991 Taek-Mu Kwon
M. Zervakis
+ Primal-dual method to the minimized surface regularization for image restoration 2016 Zhiā€Feng Pang
Yuping Duan
+ Optimal regularized image restoration with constraints 1992 Stanley J. Reeves
+ PDF Chat Optimal choice of local regularization weights in iterative image restoration 2002 Sheungā€On Choy
Yukā€Hee Chan
Wan-Chi Siu
+ Methods for choosing the regularization parameter and estimating the noise variance in image restoration and their relation 1992 N.P. Galatsanos
Aggelos K. Katsaggelos
+ Regularization Parameter Adaptive Selection for Blurred Image Restoration 2019 Ruinan Chi
Xin Huang
+ Regularization Method of Inverse Problems in Image Information Processing 2013 Yan Yan
Yamian Peng
Yuanyuan Cai
Shifeng Li
+ Robust estimation techniques in regularized image restoration 1992 M. Zervakis
Taek-Mu Kwon
+ A new method for parameter estimation of edge-preserving regularization in image restoration 2008 Xiaojuan Gu
Li Gao
+ Iterative Image Restoration using a Non-Local Regularization Function and a Local Regularization Operator 2006 Xue Feng
Quansheng Liu
Weihong Fan
+ An Iterative $L_{1}$-Based Image Restoration Algorithm With an Adaptive Parameter Estimation 2011 Laura Montefusco
Damiana Lazzaro
+ PDF Chat Automated Parameter Selection for Total Variation Minimization in Image Restoration 2016 Andreas Langer
+ A Fast Adaptive Parameter Estimation for Total Variation Image Restoration 2014 Chuan He
Changhua Hu
Wei Zhang
Biao Shi