International audienceThis review introduces a novel deformable image registration paradigm that exploits Markov random field formulation and powerful discrete optimization algorithms. We express deformable registration as a minimal cost graph problem, where nodes correspond to the deformation grid, a node's connectivity corresponds to regularization constraints, and labels correspond to 3D deformations. To cope with both iconic and geometric (landmark-based) registration, we introduce two graphical models, one for each subproblem. The two graphs share interconnected variables, leading to a modular, powerful, and flexible formulation that can account for arbitrary image-matching criteria, various local deformation models, and regularization...
International audiencePurpose: This paper introduces a novel decomposed graphical model to deal with...
In this report, we present a novel framework to deform mutually a population of n-examples based on ...
International audienceIn this paper, we introduce a novel and efficient approach to dense image regi...
International audienceThis review introduces a novel deformable image registration paradigm that exp...
Deformable registration, the task of bringing two images into spatial correspondence, is a prerequis...
Deformable (2D or 3D) medical image registration is a challenging problem. Existing ap-proaches assu...
International audienceIn this paper, we present a new approach to tackle simultaneously linear and d...
Non-rigid image registration is an essential tool required for overcoming the inherent local anatomi...
Deformable image registration aims to deliver a plausible spatial transformation between two or more...
International audienceDeformable image registration is a fundamental problem in computer vision and ...
International audienceRigid slice-to-volume registration is a challenging task, which finds applicat...
In this paper we introduce a novel, fast, efficient and gradient free approach to dense image regist...
© 2018 IEEE. We present a fast learning-based algorithm for deformable, pairwise 3D medical image re...
As a fundamental task in medical image analysis, deformable image registration (DIR) is the process ...
International audienceImage registration is in principle a symmetric problem. Nonetheless, most inte...
International audiencePurpose: This paper introduces a novel decomposed graphical model to deal with...
In this report, we present a novel framework to deform mutually a population of n-examples based on ...
International audienceIn this paper, we introduce a novel and efficient approach to dense image regi...
International audienceThis review introduces a novel deformable image registration paradigm that exp...
Deformable registration, the task of bringing two images into spatial correspondence, is a prerequis...
Deformable (2D or 3D) medical image registration is a challenging problem. Existing ap-proaches assu...
International audienceIn this paper, we present a new approach to tackle simultaneously linear and d...
Non-rigid image registration is an essential tool required for overcoming the inherent local anatomi...
Deformable image registration aims to deliver a plausible spatial transformation between two or more...
International audienceDeformable image registration is a fundamental problem in computer vision and ...
International audienceRigid slice-to-volume registration is a challenging task, which finds applicat...
In this paper we introduce a novel, fast, efficient and gradient free approach to dense image regist...
© 2018 IEEE. We present a fast learning-based algorithm for deformable, pairwise 3D medical image re...
As a fundamental task in medical image analysis, deformable image registration (DIR) is the process ...
International audienceImage registration is in principle a symmetric problem. Nonetheless, most inte...
International audiencePurpose: This paper introduces a novel decomposed graphical model to deal with...
In this report, we present a novel framework to deform mutually a population of n-examples based on ...
International audienceIn this paper, we introduce a novel and efficient approach to dense image regi...