The purpose of the present chapter is to bind together and extend some recent developments regarding data-driven non-smooth regularization techniques in image processing through the means of a bilevel minimization scheme. The scheme, considered in function space, takes advantage of a dualization framework and it is designed to produce spatially varying regularization parameters adapted to the data for well-known regularizers, e.g. Total Variation and Total Generalized variation, leading to automated (monolithic), image reconstruction workflows. An inclusion of the theory of bilevel optimization and the theoretical background of the dualization framework, as well as a brief review of the aforementioned regularizers and their parameterization...
Choices of regularization parameters are central to variational methods for image restoration. In th...
In this work, we introduce a function space setting for a wide class of structural/weighted total va...
In this work, we introduce a function space setting for a wide class of structural/weighted total va...
The purpose of the present chapter is to bind together and extend some recent developments regarding...
The purpose of the present chapter is to bind together and extend some recent developments regarding...
Total Generalized Variation (TGV) regularization in image reconstruction relies on an infimal convol...
A generalized total variation model with a spatially varying regularization weight is considered. Ex...
The main contribution of this thesis is the proposal of novel space-variant regularization or penalt...
We present a method for supervised learning of sparsity-promoting regularizers for denoising signals...
In the context of image processing, given a $k$-th order, homogeneous and linear differential operat...
Variational regularization is commonly used to solve linear inverse problems, and involves augmentin...
We consider a bilevel optimisation approach for parameter learning in higher-order total variation i...
We study the qualitative properties of optimal regularisation parameters in variational models for i...
AbstractWe study the qualitative properties of optimal regularisation parameters in variational mode...
Abstract. In this work we consider the regularization of vectorial data such as color images. Based ...
Choices of regularization parameters are central to variational methods for image restoration. In th...
In this work, we introduce a function space setting for a wide class of structural/weighted total va...
In this work, we introduce a function space setting for a wide class of structural/weighted total va...
The purpose of the present chapter is to bind together and extend some recent developments regarding...
The purpose of the present chapter is to bind together and extend some recent developments regarding...
Total Generalized Variation (TGV) regularization in image reconstruction relies on an infimal convol...
A generalized total variation model with a spatially varying regularization weight is considered. Ex...
The main contribution of this thesis is the proposal of novel space-variant regularization or penalt...
We present a method for supervised learning of sparsity-promoting regularizers for denoising signals...
In the context of image processing, given a $k$-th order, homogeneous and linear differential operat...
Variational regularization is commonly used to solve linear inverse problems, and involves augmentin...
We consider a bilevel optimisation approach for parameter learning in higher-order total variation i...
We study the qualitative properties of optimal regularisation parameters in variational models for i...
AbstractWe study the qualitative properties of optimal regularisation parameters in variational mode...
Abstract. In this work we consider the regularization of vectorial data such as color images. Based ...
Choices of regularization parameters are central to variational methods for image restoration. In th...
In this work, we introduce a function space setting for a wide class of structural/weighted total va...
In this work, we introduce a function space setting for a wide class of structural/weighted total va...