We propose a level set based variational approach that incorporates shape priors into edge-based and region-based models. The evolution of the active contour depends on local and global information. It has been implemented using an efficient narrow band technique. For each boundary pixel we calculate its dynamic according to its gray level, the neighborhood and geometric properties established by training shapes. We also propose a criterion for shape aligning based on affine transformation using an image normalization procedure. Finally, we illustrate the benefits of the our approach on the liver segmentation from CT images
Liver segmentation from medical images poses more challenges than analogous segmentations of other o...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
This paper presents an optimized level set evolution (LSE) without reinitialization (LSEWR) model an...
We propose a level set based variational approach that incorporates shape priors into edge-based and...
A novel level set method (LSM) with shape priors is proposed to implement a shape-driven image segme...
SUMMARY We proposed a new level set segmentation model with statistical shape prior using a variatio...
We proposed a new level set segmentation model with statistical shape prior using a variational appr...
We propose a new level set segmentation method with sta-tistical shape prior using a variational app...
International audienceA new image segmentation model based on level sets approach is presented herei...
A novel and robust 3-D segmentation approach is pro-posed using level sets based on shape constraint...
Abstract. This paper exposes a novel formulation of prior shape con-straint incorporation for the le...
International audienceThis work proposes an image segmentation model based on active contours. For a...
We develop a new data driven shape prior for use in image segmentation. This prior is designed to pe...
Many applications of computer vision requires segmenting out of an object of interest from a given i...
Abstract. We propose a variational framework for the integration multiple competing shape priors int...
Liver segmentation from medical images poses more challenges than analogous segmentations of other o...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
This paper presents an optimized level set evolution (LSE) without reinitialization (LSEWR) model an...
We propose a level set based variational approach that incorporates shape priors into edge-based and...
A novel level set method (LSM) with shape priors is proposed to implement a shape-driven image segme...
SUMMARY We proposed a new level set segmentation model with statistical shape prior using a variatio...
We proposed a new level set segmentation model with statistical shape prior using a variational appr...
We propose a new level set segmentation method with sta-tistical shape prior using a variational app...
International audienceA new image segmentation model based on level sets approach is presented herei...
A novel and robust 3-D segmentation approach is pro-posed using level sets based on shape constraint...
Abstract. This paper exposes a novel formulation of prior shape con-straint incorporation for the le...
International audienceThis work proposes an image segmentation model based on active contours. For a...
We develop a new data driven shape prior for use in image segmentation. This prior is designed to pe...
Many applications of computer vision requires segmenting out of an object of interest from a given i...
Abstract. We propose a variational framework for the integration multiple competing shape priors int...
Liver segmentation from medical images poses more challenges than analogous segmentations of other o...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
This paper presents an optimized level set evolution (LSE) without reinitialization (LSEWR) model an...