International audienceIn this paper, we propose a level set method for shape-driven object extraction. We introduce a voxel-wise probabilistic level set formulation to account for prior knowledge. To this end, objects are represented in an implicit form. Constraints on the segmentation process are imposed by seeking a projection to the image plane of the prior model modulo a similarity transformation. The optimization of a statistical metric between the evolving contour and the model leads to motion equations that evolve the contour toward the desired image properties while recovering the pose of the object in the new image. Upon convergence, a solution that is similarity invariant with respect to the model and the corresponding transformat...
In this paper we introduce user-defined segmentation constraints within the level set methods. Snak...
This paper presents a hybrid level set method for object segmentation. The method deconstructs segme...
This paper presents an optimized level set evolution (LSE) without reinitialization (LSEWR) model an...
International audienceIn this paper, we propose a level set method for shape-driven object extractio...
We proposed a new level set segmentation model with statistical shape prior using a variational appr...
Abstract. This paper exposes a novel formulation of prior shape con-straint incorporation for the le...
This paper presents the integration of 3D shape knowledge into a variational model for level set ba...
A novel and robust 3-D segmentation approach is pro-posed using level sets based on shape constraint...
In this dissertation, we investigate structural similarity, belief propagation, and radial basis fu...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
International audienceImage segmentation and object extraction are among the most well addressed top...
International audienceA new image segmentation model based on level sets approach is presented herei...
A novel level set method (LSM) with shape priors is proposed to implement a shape-driven image segme...
We develop a new data driven shape prior for use in image segmentation. This prior is designed to pe...
We propose a new level set segmentation method with sta-tistical shape prior using a variational app...
In this paper we introduce user-defined segmentation constraints within the level set methods. Snak...
This paper presents a hybrid level set method for object segmentation. The method deconstructs segme...
This paper presents an optimized level set evolution (LSE) without reinitialization (LSEWR) model an...
International audienceIn this paper, we propose a level set method for shape-driven object extractio...
We proposed a new level set segmentation model with statistical shape prior using a variational appr...
Abstract. This paper exposes a novel formulation of prior shape con-straint incorporation for the le...
This paper presents the integration of 3D shape knowledge into a variational model for level set ba...
A novel and robust 3-D segmentation approach is pro-posed using level sets based on shape constraint...
In this dissertation, we investigate structural similarity, belief propagation, and radial basis fu...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
International audienceImage segmentation and object extraction are among the most well addressed top...
International audienceA new image segmentation model based on level sets approach is presented herei...
A novel level set method (LSM) with shape priors is proposed to implement a shape-driven image segme...
We develop a new data driven shape prior for use in image segmentation. This prior is designed to pe...
We propose a new level set segmentation method with sta-tistical shape prior using a variational app...
In this paper we introduce user-defined segmentation constraints within the level set methods. Snak...
This paper presents a hybrid level set method for object segmentation. The method deconstructs segme...
This paper presents an optimized level set evolution (LSE) without reinitialization (LSEWR) model an...