The ever-increasing amount of medical images stored in hospitals offers a great opportunity for big data analysis. In order to pave the way for huge image groups screening, we need to develop methods able to make images databases consistent by group registering those images. Currently, group registration methods generally use dense, voxel-based, representations for images and often pick a reference to register images. We propose a group registration framework, without reference image, by using only interest points (Surf3D), able to register hundreds of medical images. We formulate a global problem based on interest point matching. The inter-patient variability is high, and the outliers ratio can be large (70\%). We pay a particular attentio...
Abstract. In this paper a novel groupwise registration algorithm is pro-posed for the unbiased regis...
This thesis is devoted to dense deformable image registration/fusion using discrete methods. The mai...
This thesis focuses on new deep learning approaches to find the best displacement between two differ...
The ever-increasing amount of medical images stored in hospitals offers a great opportunity for big ...
The ever-increasing amount of medical images stored in hospitals offers a great opportunity for big ...
Les imageurs des hôpitaux produisent de plus en plus d'images 3D et il y a un nombre croissant d'étu...
International audienceWe present a novel deformable groupwise registration method, applied to large ...
Groupwise registration has recently been proposed for simultaneous and consistent registration of al...
We present a population registration framework that acts on large collections or populations of data...
Registration is a classical problem in computer vision which is essential in many tasks of medical i...
This thesis is concerned with the non rigid registration of medical images, either monomodality or m...
Abstract. Registration is a key component in multi-atlas approaches to medical image segmentation. C...
The primary goal of this dissertation is to develop point-based rigid and non-rigid image registrati...
In this paper we describe a new method of medical image registration. We formulate the registration ...
Registration is a key component in multi-atlas approaches to medical image segmentation. Current sta...
Abstract. In this paper a novel groupwise registration algorithm is pro-posed for the unbiased regis...
This thesis is devoted to dense deformable image registration/fusion using discrete methods. The mai...
This thesis focuses on new deep learning approaches to find the best displacement between two differ...
The ever-increasing amount of medical images stored in hospitals offers a great opportunity for big ...
The ever-increasing amount of medical images stored in hospitals offers a great opportunity for big ...
Les imageurs des hôpitaux produisent de plus en plus d'images 3D et il y a un nombre croissant d'étu...
International audienceWe present a novel deformable groupwise registration method, applied to large ...
Groupwise registration has recently been proposed for simultaneous and consistent registration of al...
We present a population registration framework that acts on large collections or populations of data...
Registration is a classical problem in computer vision which is essential in many tasks of medical i...
This thesis is concerned with the non rigid registration of medical images, either monomodality or m...
Abstract. Registration is a key component in multi-atlas approaches to medical image segmentation. C...
The primary goal of this dissertation is to develop point-based rigid and non-rigid image registrati...
In this paper we describe a new method of medical image registration. We formulate the registration ...
Registration is a key component in multi-atlas approaches to medical image segmentation. Current sta...
Abstract. In this paper a novel groupwise registration algorithm is pro-posed for the unbiased regis...
This thesis is devoted to dense deformable image registration/fusion using discrete methods. The mai...
This thesis focuses on new deep learning approaches to find the best displacement between two differ...