Even though the prospect of fusing images issued by different medical imagery systems is highly contemplated, the practical instantiation of it is subject to a theoretical hurdle: the definition of a similarity between images. Efforts in this field have proved successful for select pairs of images; however defining a suitable similarity between images regardless of their origin is one of the biggest challenges in deformable registration. In this thesis, we chose to develop generic approaches that allow the comparison of any two given modality. The recent advances in Machine Learning permitted us to provide innovative solutions to this very challenging problem. To tackle the problem of comparing incommensurable data we chose to view it as a ...
Medical image registration is a widely used strategy for intrasubject and intersubject matching. Ove...
Image-guided interventions often rely on deformable multi-modal registration to align pre-treatment ...
During the past few years, the use of the theory of partial differential equations has provided a so...
Even though the prospect of fusing images issued by different medical imagery systems is highly cont...
Alors que la perspective de la fusion d images médicales capturées par des systèmes d imageries de t...
Registration is a classical problem in computer vision which is essential in many tasks of medical i...
D’Tech Thesis SummaryThe importance of medical imaging as a core component of several medical applic...
Multi-modal image registration is a challenging problem in medical imaging. The goal is to align ana...
Multi-modal image registration is a challenging prob-lem in medical imaging. The goal is to align an...
This thesis focuses on new deep learning approaches to find the best displacement between two differ...
International audienceVisual understanding is often based on measuring similarity between observatio...
We address the problem of non-parametric multi-modal image matching. We propose a generic framework ...
We address the alignment of a group of images with simultaneous registration. Therefore, we provide ...
Medical image registration is a widely used strategy for intrasubject and intersubject matching. Ove...
Image-guided interventions often rely on deformable multi-modal registration to align pre-treatment ...
During the past few years, the use of the theory of partial differential equations has provided a so...
Even though the prospect of fusing images issued by different medical imagery systems is highly cont...
Alors que la perspective de la fusion d images médicales capturées par des systèmes d imageries de t...
Registration is a classical problem in computer vision which is essential in many tasks of medical i...
D’Tech Thesis SummaryThe importance of medical imaging as a core component of several medical applic...
Multi-modal image registration is a challenging problem in medical imaging. The goal is to align ana...
Multi-modal image registration is a challenging prob-lem in medical imaging. The goal is to align an...
This thesis focuses on new deep learning approaches to find the best displacement between two differ...
International audienceVisual understanding is often based on measuring similarity between observatio...
We address the problem of non-parametric multi-modal image matching. We propose a generic framework ...
We address the alignment of a group of images with simultaneous registration. Therefore, we provide ...
Medical image registration is a widely used strategy for intrasubject and intersubject matching. Ove...
Image-guided interventions often rely on deformable multi-modal registration to align pre-treatment ...
During the past few years, the use of the theory of partial differential equations has provided a so...