peer reviewedWe propose a new method for automatic 3D multimodal registration based on anatomical landmark detection. Landmark detectors are learned independantly in the two imaging modalities using Extremely Randomized Trees and multi-resolution voxel windows. A least-squares fitting algorithm is then used for rigid registration based on the landmark positions as predicted by these detectors in the two imaging modalities. Experiments are carried out with this method on a dataset of pelvis CT and CBCT scans related to 45 patients. On this dataset, our fully automatic approach yields results very competitive with respect to a manually assisted state-of-the-art rigid registration algorithm
3D deformable registration, Two-level method, Statistical atlas Abstract: We propose a two-level met...
Image registration is the process of aligning images of the same object taken at different time poin...
In this thesis, we propose a multi-modal image registration method based on the a priori knowledge o...
This paper describes two methods for automating registration of 3D medical images acquired from diff...
Registration is a fundamental task in image processing. Its purpose is to find a geometrical transfo...
Abstract.We propose an information theoretic approach to the rigid body registration of 3D multi-mod...
International audienceWe propose a system for automatic positioning of identified landmarks on anato...
Abstract — Maximization of a voxel based similarity metric like mutual information is the state of t...
For the retrospective, rigid body registration of two 3D datasets from different modalities (MR, CT ...
Multi-modal image registration is a challenging problem in medical imaging. The goal is to align ana...
International audienceWe propose and evaluate a new block-matching strategy for rigid-body registrat...
Multi-modal image registration is a challenging prob-lem in medical imaging. The goal is to align an...
One of the fundamental challenges in supervised learning for multimodal image registration is the la...
We propose volume registration procedures based on spherical artificial markers presented in medical...
We propose volume registration procedures based on spherical artificial markers presented in medical...
3D deformable registration, Two-level method, Statistical atlas Abstract: We propose a two-level met...
Image registration is the process of aligning images of the same object taken at different time poin...
In this thesis, we propose a multi-modal image registration method based on the a priori knowledge o...
This paper describes two methods for automating registration of 3D medical images acquired from diff...
Registration is a fundamental task in image processing. Its purpose is to find a geometrical transfo...
Abstract.We propose an information theoretic approach to the rigid body registration of 3D multi-mod...
International audienceWe propose a system for automatic positioning of identified landmarks on anato...
Abstract — Maximization of a voxel based similarity metric like mutual information is the state of t...
For the retrospective, rigid body registration of two 3D datasets from different modalities (MR, CT ...
Multi-modal image registration is a challenging problem in medical imaging. The goal is to align ana...
International audienceWe propose and evaluate a new block-matching strategy for rigid-body registrat...
Multi-modal image registration is a challenging prob-lem in medical imaging. The goal is to align an...
One of the fundamental challenges in supervised learning for multimodal image registration is the la...
We propose volume registration procedures based on spherical artificial markers presented in medical...
We propose volume registration procedures based on spherical artificial markers presented in medical...
3D deformable registration, Two-level method, Statistical atlas Abstract: We propose a two-level met...
Image registration is the process of aligning images of the same object taken at different time poin...
In this thesis, we propose a multi-modal image registration method based on the a priori knowledge o...