A long-standing issue in non-rigid image registration is the choice of the level of regularisation. Regularisation is necessary to preserve the smoothness of the registration and penalise against unnecessary complexity. The vast majority of existing registration methods use a fixed level of regularisation, which is typically hand-tuned by a user to provide "nice" results. However, the optimal level of regularisation will depend on the data which is being processed; lower signal-to-noise ratios require higher regularisation to avoid registering image noise as well as features, and different pairs of images require registrations of varying complexity depending on their anatomical similarity. In this paper we present a probabilistic registrati...
Image registration is widely used in different areas, including medical image analysis and image pro...
International audienceMulti-subject non-rigid registration algorithms using dense transformations of...
In this paper we propose a novel approach for incorporating measures of spatial uncertainty, which a...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
Non-rigid image registration is an important tool for analysing morphometric differences in subjects...
Accurate inter-subject registration of magnetic resonance (MR) images of the human brain is required...
Accurate inter-subject registration of magnetic resonance (MR) images of the human brain is required...
Non-rigid image registration is an important tool for analysing mor-phometric differences in subject...
Deformable registration is prone to errors when it involves large and complex deformations, since th...
We propose a multimodal free-form registration algorithm that matches voxel class labels rather than...
This paper introduces a novel method for inferring spatially varying regularisation in non-linear re...
In this paper, we show how the concept of statistical deformation models (SDMs) can be used for the ...
The automated analysis of medical images plays an increasingly significant part in many clinical app...
The automated analysis of medical images plays an increasingly significant part in many clini-cal ap...
Image registration is widely used in different areas, including medical image analysis and image pro...
International audienceMulti-subject non-rigid registration algorithms using dense transformations of...
In this paper we propose a novel approach for incorporating measures of spatial uncertainty, which a...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
Non-rigid image registration is an important tool for analysing morphometric differences in subjects...
Accurate inter-subject registration of magnetic resonance (MR) images of the human brain is required...
Accurate inter-subject registration of magnetic resonance (MR) images of the human brain is required...
Non-rigid image registration is an important tool for analysing mor-phometric differences in subject...
Deformable registration is prone to errors when it involves large and complex deformations, since th...
We propose a multimodal free-form registration algorithm that matches voxel class labels rather than...
This paper introduces a novel method for inferring spatially varying regularisation in non-linear re...
In this paper, we show how the concept of statistical deformation models (SDMs) can be used for the ...
The automated analysis of medical images plays an increasingly significant part in many clinical app...
The automated analysis of medical images plays an increasingly significant part in many clini-cal ap...
Image registration is widely used in different areas, including medical image analysis and image pro...
International audienceMulti-subject non-rigid registration algorithms using dense transformations of...
In this paper we propose a novel approach for incorporating measures of spatial uncertainty, which a...