Bilevel learning of regularization models and their discretization for image deblurring and super-resolution

02/20/2023
by   Tatiana A. Bubba, et al.
0

Bilevel learning is a powerful optimization technique that has extensively been employed in recent years to bridge the world of model-driven variational approaches with data-driven methods. Upon suitable parametrization of the desired quantities of interest (e.g., regularization terms or discretization filters), such approach computes optimal parameter values by solving a nested optimization problem where the variational model acts as a constraint. In this work, we consider two different use cases of bilevel learning for the problem of image restoration. First, we focus on learning scalar weights and convolutional filters defining a Field of Experts regularizer to restore natural images degraded by blur and noise. For improving the practical performance, the lower-level problem is solved by means of a gradient descent scheme combined with a line-search strategy based on the Barzilai-Borwein rule. As a second application, the bilevel setup is employed for learning a discretization of the popular total variation regularizer for solving image restoration problems (in particular, deblurring and super-resolution). Numerical results show the effectiveness of the approach and their generalization to multiple tasks.

READ FULL TEXT

page 11

page 13

page 14

page 15

page 16

page 17

page 18

page 19

research
12/21/2021

Can We Use Neural Regularization to Solve Depth Super-Resolution?

Depth maps captured with commodity sensors often require super-resolutio...
research
08/02/2019

Space-adaptive anisotropic bivariate Laplacian regularization for image restoration

In this paper we present a new regularization term for variational image...
research
10/02/2017

Out-of-focus Blur: Image De-blurring

Image de-blurring is important in many cases of imaging a real scene or ...
research
07/10/2017

Scale-Regularized Filter Learning

We start out by demonstrating that an elementary learning task, correspo...
research
12/20/2016

Deeply Aggregated Alternating Minimization for Image Restoration

Regularization-based image restoration has remained an active research t...
research
04/02/2021

Residual whiteness principle for automatic parameter selection in ℓ_2-ℓ_2 image super-resolution problems

We propose an automatic parameter selection strategy for variational ima...
research
07/19/2019

An Optimal Control Approach to Early Stopping Variational Methods for Image Restoration

We investigate a well-known phenomenon of variational approaches in imag...

Please sign up or login with your details

Forgot password? Click here to reset