Variational methods and Partial Differential Equations (PDEs) have been extensively employed for the mathematical formulation of a myriad of problems describing physical phenomena such as heat propagation, thermodynamic transformations and many more. In imaging, PDEs following variational principles are often considered. In their general form these models combine a regularisation and a data fitting term, balancing one against the other appropriately. Total variation (TV) regularisation is often used due to its edgepreserving and smoothing properties. In this thesis, we focus on the design of TV-based models for several different applications. We start considering PDE models encoding higher-order derivatives to overcome wellknown TV reconstr...
Variable splitting schemes for the function space version of the image reconstruction problem with t...
In many applications computers analyse images or image sequences which are often contaminated by noi...
High-order variational models are powerful methods for image processing and analysis, but they can l...
In this article, we intend to give a broad picture of mathematical image processing through one of t...
In this poster, I will present my current PhD work in computing numerical solutions of higher-order ...
Abstract. We propose a PDE-constrained optimization approach for the determination of noise distribu...
In this thesis, we study modern variational and partial differential equation (PDE)-based methods fo...
Variational methods in imaging are nowadays developing towards a quite universal and exible tool,...
In this thesis, we study modern variational and partial differential equation (PDE)-based methods fo...
This paper arose from a minisymposium held in 2018 at the 9th International Conference on Curves and...
This dissertation addresses general optimization in the field of computer vision. In this manuscript...
This paper arose from a minisymposium held in 2018 at the 9th International Conference on Curves and...
In this thesis we study new anisotropic variational regularisers and partial differential equations ...
Image denoising is one of the most major steps in current image processing. It is a pre-processing s...
In this thesis we study novel higher order total variation-based variational methods for digital ima...
Variable splitting schemes for the function space version of the image reconstruction problem with t...
In many applications computers analyse images or image sequences which are often contaminated by noi...
High-order variational models are powerful methods for image processing and analysis, but they can l...
In this article, we intend to give a broad picture of mathematical image processing through one of t...
In this poster, I will present my current PhD work in computing numerical solutions of higher-order ...
Abstract. We propose a PDE-constrained optimization approach for the determination of noise distribu...
In this thesis, we study modern variational and partial differential equation (PDE)-based methods fo...
Variational methods in imaging are nowadays developing towards a quite universal and exible tool,...
In this thesis, we study modern variational and partial differential equation (PDE)-based methods fo...
This paper arose from a minisymposium held in 2018 at the 9th International Conference on Curves and...
This dissertation addresses general optimization in the field of computer vision. In this manuscript...
This paper arose from a minisymposium held in 2018 at the 9th International Conference on Curves and...
In this thesis we study new anisotropic variational regularisers and partial differential equations ...
Image denoising is one of the most major steps in current image processing. It is a pre-processing s...
In this thesis we study novel higher order total variation-based variational methods for digital ima...
Variable splitting schemes for the function space version of the image reconstruction problem with t...
In many applications computers analyse images or image sequences which are often contaminated by noi...
High-order variational models are powerful methods for image processing and analysis, but they can l...