Reconstructing anatomical shapes from sparse or partial measurements relies on prior knowledge of shape variations that occur within a given population. Such shape priors are learned from example shapes, obtained by segmenting volumetric medical images. For existing models, the resolution of a learned shape prior is limited to the resolution of the training data. However, in clinical practice, volumetric images are often acquired with highly anisotropic voxel sizes, e.g. to reduce image acquisition time in MRI or radiation exposure in CT imaging. The missing shape information between the slices prohibits existing methods to learn a high-resolution shape prior. We introduce a method for high-resolution shape reconstruction from sparse measur...
Statistical shape models learn to capture the most characteristic geometric variations of anatomical...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
The goal of this study is to determine the effectiveness of different 3D shape representations in le...
Organ shape plays an important role in many clinical practices, including diagnosis, surgical planni...
We present ANISE, a method that reconstructs a 3D shape from partial observations (images or sparse ...
This paper introduces a new shape-based image reconstruction technique appli-cable to a large class ...
Statistical methods are well suited to the large amounts of data typically involved in digital shap...
Real-world settings often do not allow acquisition of high-resolution volumetric images for accurate...
Statistical shape modeling aims at capturing shape variations of an anatomical structure that occur ...
Learning probability distributions of the shape of anatomic structures requires fitting shape repres...
“Shape ” and “appearance”, the two pillars of a deformable model, complement each other in object se...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
International audienceImplicit Neural Representations are powerful tools for representing 3D shapes....
We tackle the problem of monocular 3D reconstruction of articulated objects like humans and animals....
Implicit template deformation is a model-based segmentation framework that was successfully applied ...
Statistical shape models learn to capture the most characteristic geometric variations of anatomical...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
The goal of this study is to determine the effectiveness of different 3D shape representations in le...
Organ shape plays an important role in many clinical practices, including diagnosis, surgical planni...
We present ANISE, a method that reconstructs a 3D shape from partial observations (images or sparse ...
This paper introduces a new shape-based image reconstruction technique appli-cable to a large class ...
Statistical methods are well suited to the large amounts of data typically involved in digital shap...
Real-world settings often do not allow acquisition of high-resolution volumetric images for accurate...
Statistical shape modeling aims at capturing shape variations of an anatomical structure that occur ...
Learning probability distributions of the shape of anatomic structures requires fitting shape repres...
“Shape ” and “appearance”, the two pillars of a deformable model, complement each other in object se...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
International audienceImplicit Neural Representations are powerful tools for representing 3D shapes....
We tackle the problem of monocular 3D reconstruction of articulated objects like humans and animals....
Implicit template deformation is a model-based segmentation framework that was successfully applied ...
Statistical shape models learn to capture the most characteristic geometric variations of anatomical...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
The goal of this study is to determine the effectiveness of different 3D shape representations in le...