This paper presents a family of techniques that we call congealing for modeling image classes from data. The idea is to start with a set of images and make them appear as similar as possible by removing variability along the known axes of variation. This technique can be used to eliminate nuisance” variables such as affine deformations from handwritten digits or unwanted bias fields from magnetic resonance images. In addition to separating and modeling the latent images—i.e., the images without the nuisance variables—we can model the nuisance variables themselves, leading to factorized generative image models. When nuisance variable distributions are shared between classes, one can share the knowledge learned in one task with another task,...
We propose a novel image registration framework which uses classifiers trained from examples of alig...
The automated analysis of medical images plays an increasingly significant part in many clinical app...
This paper explores the use of self-supervised deep learning in medical imaging in cases where two s...
Human beings exhibit rapid learning when presented with a small number of images of a new object. A ...
Image Congealing (IC) is a non-parametric method for the joint alignment of a collection of images a...
Congealing for an image ensemble is a joint alignment process to rectify images in the spatial domai...
The correction of bias in magnetic resonance images is an important problem in medical image process...
Image registration is a fundamental task in medical imaging analysis, which is commonly used during ...
Accurate registration of images is an important and often crucial step in many areas of image proces...
This electronic version was submitted by the student author. The certified thesis is available in th...
This paper describes a coarse-to-fine learning based im-age registration algorithm which has particu...
International audienceDeep learning-based medical image registration and segmentation joint models u...
Congealing is a flexible nonparametric data-driven framework for the joint alignment of data. It has...
Image augmentation and segmentation are crucial tasks in biomedical imaging applications. Deep learn...
Neuroimage registration has been a crucial area of research in medical image analysis for many years...
We propose a novel image registration framework which uses classifiers trained from examples of alig...
The automated analysis of medical images plays an increasingly significant part in many clinical app...
This paper explores the use of self-supervised deep learning in medical imaging in cases where two s...
Human beings exhibit rapid learning when presented with a small number of images of a new object. A ...
Image Congealing (IC) is a non-parametric method for the joint alignment of a collection of images a...
Congealing for an image ensemble is a joint alignment process to rectify images in the spatial domai...
The correction of bias in magnetic resonance images is an important problem in medical image process...
Image registration is a fundamental task in medical imaging analysis, which is commonly used during ...
Accurate registration of images is an important and often crucial step in many areas of image proces...
This electronic version was submitted by the student author. The certified thesis is available in th...
This paper describes a coarse-to-fine learning based im-age registration algorithm which has particu...
International audienceDeep learning-based medical image registration and segmentation joint models u...
Congealing is a flexible nonparametric data-driven framework for the joint alignment of data. It has...
Image augmentation and segmentation are crucial tasks in biomedical imaging applications. Deep learn...
Neuroimage registration has been a crucial area of research in medical image analysis for many years...
We propose a novel image registration framework which uses classifiers trained from examples of alig...
The automated analysis of medical images plays an increasingly significant part in many clinical app...
This paper explores the use of self-supervised deep learning in medical imaging in cases where two s...