Unfolded proximal neural networks for robust image Gaussian denoising.
Journal
IEEE transactions on image processing : a publication of the IEEE Signal Processing Society
ISSN: 1941-0042
Titre abrégé: IEEE Trans Image Process
Pays: United States
ID NLM: 9886191
Informations de publication
Date de publication:
07 Aug 2024
07 Aug 2024
Historique:
medline:
7
8
2024
pubmed:
7
8
2024
entrez:
7
8
2024
Statut:
aheadofprint
Résumé
A common approach to solve inverse imaging problems relies on finding a maximum a posteriori (MAP) estimate of the original unknown image, by solving a minimization problem. In this context, iterative proximal algorithms are widely used, enabling to handle non-smooth functions and linear operators. Recently, these algorithms have been paired with deep learning strategies, to further improve the estimate quality. In particular, proximal neural networks (PNNs) have been introduced, obtained by unrolling a proximal algorithm as for finding a MAP estimate, but over a fixed number of iterations, with learned linear operators and parameters. As PNNs are based on optimization theory, they are very flexible, and can be adapted to any image restoration task, as soon as a proximal algorithm can solve it. They further have much lighter architectures than traditional networks. In this article we propose a unified framework to build PNNs for the Gaussian denoising task, based on both the dual-FB and the primal-dual Chambolle-Pock algorithms. We further show that accelerated inertial versions of these algorithms enable skip connections in the associated NN layers. We propose different learning strategies for our PNN framework, and investigate their robustness (Lipschitz property) and denoising efficiency. Finally, we assess the robustness of our PNNs when plugged in a forward-backward algorithm for an image deblurring problem.
Identifiants
pubmed: 39110565
doi: 10.1109/TIP.2024.3437219
doi:
Types de publication
Journal Article
Langues
eng
Sous-ensembles de citation
IM