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A relaxed proximal gradient descent algorithm for convergent plug-and-play with proximal denoiser

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This paper presents a new convergent Plug-and-Play (PnP) algorithm. PnP methods are efficient iterative algorithms for solving image inverse problems formulated as the minimization of the sum of a data-fidelity term and a regularization term. PnP methods perform regularization by plugging a pre-trained denoiser in a proximal algorithm, such as Proximal Gradient Descent (PGD). To ensure convergence of PnP schemes, many works study specific parametrizations of deep denoisers. However, existing results require either unverifiable or suboptimal hypotheses on the denoiser, or assume restrictive conditions on the parameters of the inverse problem. Observing that these limitations can be due to the proximal algorithm in use, we study a relaxed version of the PGD algorithm for minimizing the sum of a convex function and a weakly convex one. When plugged with a relaxed proximal denoiser, we show that the proposed PnP-$\alpha$PGD algorithm converges for a wider range of regularization parameters, thus allowing more accurate image restoration.

Samuel Hurault, Antonin Chambolle, Arthur Leclaire, Nicolas Papadakis• 2023

Related benchmarks

TaskDatasetResultRank
Multi-Coil MRI ReconstructionCalgary-Campinas Poisson-disc sampling R=5 acceleration
SSIM0.649
12
Multi-Coil MRI ReconstructionCalgary-Campinas R=10 acceleration Poisson-disc sampling
SSIM0.661
12
Cone-Beam Computed Tomography ReconstructionWalnut-CBCT 50 views
SSIM0.875
10
Cone-Beam Computed Tomography ReconstructionWalnut-CBCT 30 views
SSIM0.805
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Cone-Beam Computed Tomography ReconstructionWalnut-CBCT 100 views
SSIM0.889
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DeblurringDIV2K
PSNR31.23
6
Image DeblurringCelebA (test)--
5
DeblurringPlaces365 (test)
PSNR (Lip-DnCNN)31.58
4
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