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On the Convergence of Primal–Dual Hybrid Gradient Algorithms for Total Variation Image Restoration

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Abstract

In this paper we establish the convergence of a general primal–dual method for nonsmooth convex optimization problems whose structure is typical in the imaging framework, as, for example, in the Total Variation image restoration problems. When the steplength parameters are a priori selected sequences, the convergence of the scheme is proved by showing that it can be considered as an ε-subgradient method on the primal formulation of the variational problem. Our scheme includes as special case the method recently proposed by Zhu and Chan for Total Variation image restoration from data degraded by Gaussian noise. Furthermore, the convergence hypotheses enable us to apply the same scheme also to other restoration problems, as the denoising and deblurring of images corrupted by Poisson noise, where the data fidelity function is defined as the generalized Kullback–Leibler divergence or the edge preserving removal of impulse noise. The numerical experience shows that the proposed scheme with a suitable choice of the steplength sequences performs well with respect to state-of-the-art methods, especially for Poisson denoising problems, and it exhibits fast initial and asymptotic convergence.

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Acknowledgements

We are grateful to the anonymous referees for their comments, which stimulated us to greatly improve the paper.

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Correspondence to Silvia Bonettini.

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This work is supported by the PRIN2008 Project of the Italian Ministry of University and Research, grant 2008T5KA4L, Optimization Methods and Software for Inverse Problems, http://www.unife.it/prisma.

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Bonettini, S., Ruggiero, V. On the Convergence of Primal–Dual Hybrid Gradient Algorithms for Total Variation Image Restoration. J Math Imaging Vis 44, 236–253 (2012). https://doi.org/10.1007/s10851-011-0324-9

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