An Iterative Regularization Method for Total Variation-Based Image Restoration

Stanley Osher, Martin Burger(Johannes Kepler University of Linz), Donald Goldfarb, Jinjun Xu(Columbia University), Wotao Yin(Columbia University)
Multiscale Modeling and Simulation
January 1, 2005
Cited by 1,818

Abstract

Abstract. We introduce a new iterative regularization procedure for inverse problems based on the use of Bregman distances, with particular focus on problems arising in image processing. We are motivated by the problem of restoring noisy and blurry images via variational methods by using total variation regularization. We obtain rigorous convergence results and effective stopping criteria for the general procedure. The numerical results for denoising appear to give significant improvement over standard models, and preliminary results for deblurring/denoising are very encouraging.


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