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Learnable Descent Algorithm for Nonsmooth Nonconvex Image Reconstruction

About

We propose a general learning based framework for solving nonsmooth and nonconvex image reconstruction problems. We model the regularization function as the composition of the $l_{2,1}$ norm and a smooth but nonconvex feature mapping parametrized as a deep convolutional neural network. We develop a provably convergent descent-type algorithm to solve the nonsmooth nonconvex minimization problem by leveraging the Nesterov's smoothing technique and the idea of residual learning, and learn the network parameters such that the outputs of the algorithm match the references in training data. Our method is versatile as one can employ various modern network structures into the regularization, and the resulting network inherits the guaranteed convergence of the algorithm. We also show that the proposed network is parameter-efficient and its performance compares favorably to the state-of-the-art methods in a variety of image reconstruction problems in practice.

Yunmei Chen, Hongcheng Liu, Xiaojing Ye, Qingchao Zhang• 2020

Related benchmarks

TaskDatasetResultRank
Sparse-View CT ReconstructionNIH-AAPM-Mayo Clinic Low-Dose CT Grand Challenge 2016 (test)
PSNR43
75
Image ReconstructionImageNet
PSNR35.37
56
Image ReconstructionCIFAR-10--
25
Sparse-View CT ReconstructionNational Biomedical Imaging Archive (NBIA) (test)
PSNR40.26
12
MRI ReconstructionMRI 30% sampling ratio
PSNR (dB)40.67
7
Image ReconstructionStanford2D
PSNR (dB)37.85
7
MRI ReconstructionfastMRI
PSNR (dB)33.42
7
MRI ReconstructionBrain anatomy MRI
PSNR (dB)37.38
7
MRI ReconstructionProstate anatomy MRI
PSNR (dB)32.92
7
MRI ReconstructionMRI 10% sampling ratio
PSNR (dB)31.27
7
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