Nonlinear registration of 2D histological sections with corresponding slices of MRI data is a critical step of 3D histology reconstruction algorithms. This registration is difficult due to the large differences in image contrast and resolution, as well as the complex nonrigid deformations and artefacts produced when sectioning the sample and mounting it on the glass slide. It has been shown in brain MRI registration that better spatial alignment across modalities can be obtained by synthesising one modality from the other and then using intra-modality registration metrics, rather than by using information theory based metrics to solve the problem directly. However, such an approach typically requires a database of aligned images from the tw...
Non-rigid image registration is an important tool for analysing morphometric differences in subjects...
This paper presents a 3D non-rigid registration algorithm between histological and MR images of the ...
In this paper, we present a Bayesian framework for both generating inter-subject large deformation t...
International audienceJoint registration of a stack of 2D histological sections to recover 3D struct...
For the retrospective, rigid body registration of two 3D datasets from different modalities (MR, CT ...
Nonlinear inter-modality registration is often challenging due to the lack of objective functions th...
Nonlinear inter-modality registration is often challenging due to the lack of objective functions th...
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...
This paper presents a method for correcting erratic pairwise registrations when reconstructing a vol...
Accurate and reliable registration of shapes and multi-dimensional point sets describing the morphol...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
We propose two information theoretic similarity measures that allow to incorporate tissue class info...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
We present a statistical framework that combines the registration of an atlas with the segmentation ...
Non-rigid image registration is an important tool for analysing morphometric differences in subjects...
This paper presents a 3D non-rigid registration algorithm between histological and MR images of the ...
In this paper, we present a Bayesian framework for both generating inter-subject large deformation t...
International audienceJoint registration of a stack of 2D histological sections to recover 3D struct...
For the retrospective, rigid body registration of two 3D datasets from different modalities (MR, CT ...
Nonlinear inter-modality registration is often challenging due to the lack of objective functions th...
Nonlinear inter-modality registration is often challenging due to the lack of objective functions th...
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...
This paper presents a method for correcting erratic pairwise registrations when reconstructing a vol...
Accurate and reliable registration of shapes and multi-dimensional point sets describing the morphol...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
We propose two information theoretic similarity measures that allow to incorporate tissue class info...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
We present a statistical framework that combines the registration of an atlas with the segmentation ...
Non-rigid image registration is an important tool for analysing morphometric differences in subjects...
This paper presents a 3D non-rigid registration algorithm between histological and MR images of the ...
In this paper, we present a Bayesian framework for both generating inter-subject large deformation t...