Author:
Tojo Laya,Gurushankar K,Maik Vivek,Devi Manju
Abstract
Abstract
The paper focuses on the Enhanced Augmented Lagrangian method with sparse regularization for image deblurring. The method suggested by ALTERNATING LOW RANK AUGMENTED LAGRANGIAN WITH ITERATIVE A PRIOR is novel in the following ways. (i) Faster convergence leading to speeder execution through rank regulations (ii) using derivatives and low rank together as regularization priors (iii) penalty and regularization weights ensure that each iteration hits a global minimum with a steep descent. The proposed method begins with the lowest rank matrix, which is the sparsest matrix available. The final deblurred result is very successful in achieving good dB improvements through rank regulation.
Subject
General Physics and Astronomy
Reference15 articles.
1. A survey on different image deblurring techniques;Vankawala;International Journal of Computer Applications (0975-8887),2015
2. Image Restoration Based on Gradual Reweighted Regularization and Low Rank prior;Wang
3. A partial splitting augmented Lagrangian method for low patch-rank image decomposition;Han;Journal of Mathematical Imaging and Vision,2015
4. Augmented Lagrangian Based Sparse Representation Method with dictionary Updating for image deblurring;Liu;SIAM J Imaging Sciences