International audience— In image segmentation, the shape knowledge of the object may be used to guide the segmentation process. From a training set of representative shapes, a statistical model can be constructed and used to constrain the segmentation results. The shape space is usually constructed with tools such such as principal component analysis (PCA). However the main assumption of PCA that shapes lie a linear space might not hold for real world shape sets. Thus manifold learning techniques have been developed, such as Laplacian Eigenmaps and Diffusion Maps. Recently a framework for image segmentation based on non linear shape modeling has been proposed; still some challenges remain, such as the so-called out-of-sample extension and t...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
International audienceIn the context of shape and image modeling by manifold learning, we focus on t...
Image segmentation is one of the key problems in medical image analysis. This paper presents a new s...
La segmentation d image avec a priori de forme a fait l objet d une attention particulière ces derni...
Organ shape plays an important role in clinical diagnosis, surgical planning and treatment evaluatio...
Accurate image segmentation is important for many medical imaging applications, whereas it remains c...
Accurate image segmentation is important for many medical imaging applications, whereas it remains c...
Accurate image segmentation is important for many medical imaging applications, whereas it remains c...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
Segmentation involves separating an object from the background. In this work, we propose a novel seg...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
Abstract. Accurate automated segmentation of the right ventricle is difficult due in part to the lar...
Image segmentation with shape priors has received a lot of attention over the past few years. Most e...
Image segmentation with shape priors has received a lot of attention over the past few years. Most e...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
International audienceIn the context of shape and image modeling by manifold learning, we focus on t...
Image segmentation is one of the key problems in medical image analysis. This paper presents a new s...
La segmentation d image avec a priori de forme a fait l objet d une attention particulière ces derni...
Organ shape plays an important role in clinical diagnosis, surgical planning and treatment evaluatio...
Accurate image segmentation is important for many medical imaging applications, whereas it remains c...
Accurate image segmentation is important for many medical imaging applications, whereas it remains c...
Accurate image segmentation is important for many medical imaging applications, whereas it remains c...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
Segmentation involves separating an object from the background. In this work, we propose a novel seg...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
Abstract. Accurate automated segmentation of the right ventricle is difficult due in part to the lar...
Image segmentation with shape priors has received a lot of attention over the past few years. Most e...
Image segmentation with shape priors has received a lot of attention over the past few years. Most e...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
A massive amount of medical image data, e.g. from Computed Tomography (CT) and Magnetic Resonance Im...
International audienceIn the context of shape and image modeling by manifold learning, we focus on t...