This thesis is devoted to dense deformable image registration/fusion using discrete methods. The main contribution of the thesis is a principled registration framework coupling iconic/geometric information through graph-based techniques. Such a formulation is derived from a pair-wise MRF view-point and solves both problems simultaneously while imposing consistency on their respective solutions. The proposed framework was used to cope with pair-wise image fusion (symmetric and asymmetric variants are proposed) as well as group-wise registration for population modeling. The main qualities of our framework lie in its computational efficiency and versatility. The discrete nature of the formulation renders the framework modular in terms of iconi...
International audienceIn this paper, we introduce a novel and efficient approach to dense image regi...
Medical image registration is a widely used strategy for intrasubject and intersubject matching. Ove...
In this report, we present a novel framework to deform mutually a population of n-examples based on ...
This thesis is devoted to dense deformable image registration/fusion using discrete methods. The mai...
La présente thèse est consacrée au recalage et à la fusion d images de façon dense et déformable via...
The main objective of this thesis is the exploration of higher order Markov Random Fields for image ...
International audienceIn this paper, we present a new approach to tackle simultaneously linear and d...
L’estimation dense de correspondances entre deux images est un sujet essentiel de la vision par ordi...
L’objectif principal de cette thèse est l’exploration du recalage d’images à l’aide de champs aléato...
International audienceThis review introduces a novel deformable image registration paradigm that exp...
Deformable image registration is a fundamental task in medical image processing. Among its most impo...
Registration is a classical problem in computer vision which is essential in many tasks of medical i...
Deformable image registration plays a fundamental role in many clinical applications. In this paper ...
In this paper we introduce a novel, fast, efficient and gradient free approach to dense image regist...
International audienceIn this paper, we introduce a novel and efficient approach to dense image regi...
Medical image registration is a widely used strategy for intrasubject and intersubject matching. Ove...
In this report, we present a novel framework to deform mutually a population of n-examples based on ...
This thesis is devoted to dense deformable image registration/fusion using discrete methods. The mai...
La présente thèse est consacrée au recalage et à la fusion d images de façon dense et déformable via...
The main objective of this thesis is the exploration of higher order Markov Random Fields for image ...
International audienceIn this paper, we present a new approach to tackle simultaneously linear and d...
L’estimation dense de correspondances entre deux images est un sujet essentiel de la vision par ordi...
L’objectif principal de cette thèse est l’exploration du recalage d’images à l’aide de champs aléato...
International audienceThis review introduces a novel deformable image registration paradigm that exp...
Deformable image registration is a fundamental task in medical image processing. Among its most impo...
Registration is a classical problem in computer vision which is essential in many tasks of medical i...
Deformable image registration plays a fundamental role in many clinical applications. In this paper ...
In this paper we introduce a novel, fast, efficient and gradient free approach to dense image regist...
International audienceIn this paper, we introduce a novel and efficient approach to dense image regi...
Medical image registration is a widely used strategy for intrasubject and intersubject matching. Ove...
In this report, we present a novel framework to deform mutually a population of n-examples based on ...