International audienceIn this paper, we propose two solutions to integrate shape prior in a segmentation process based on region growing. Our special region growing algorithm relies upon a variational framework which allows to easily take into account shape prior in the segmentation process. Region growing is described as an optimization process that aims to minimize some special energy combining intensity function and shape information. Two kinds of energy are proposed depending on the existence of a reference model or the possibility to assess some shape features at voxel level. We applied positively these two approaches in the context of life imaging in order to segment mice kidneys from small animal CT-images and lacuno-canicular networ...
Diagnosis by medical images implies the expert ability of recognizing patterns of interest in terms ...
We proposed a new level set segmentation model with statistical shape prior using a variational appr...
Segmenting images with occluded and missing intensity information is still a difficult task. Intensi...
International audienceIn this paper, we propose two solutions to integrate shape prior in a segmenta...
International audienceRegion growing is one of the most intuitive techniques for image segmentation....
International audienceRegion growing is one of the most popular image segmentationmethods. The algor...
International audience<p>This paper presents a novel shape-guided multi-region variational region gr...
This book proposes a new approach to handle the problem of limited training data. Common approaches ...
International audienceThis work proposes an image segmentation model based on active contours. For a...
Abstract. This paper introduces shape priors that benefit 2-dimensional, interactive contouring, whi...
SUMMARY We proposed a new level set segmentation model with statistical shape prior using a variatio...
Abstract—In current level set image segmentation methods, the number of regions is assumed to known ...
Image segmentation plays an essential role in many medical applications. Low SNR conditions and vari...
©2010 SPIE - Society of Photo Optical Instrumentation Engineers. One print or electronic copy may b...
This paper presents a novel approach for image segmentation by introducing competition between neigh...
Diagnosis by medical images implies the expert ability of recognizing patterns of interest in terms ...
We proposed a new level set segmentation model with statistical shape prior using a variational appr...
Segmenting images with occluded and missing intensity information is still a difficult task. Intensi...
International audienceIn this paper, we propose two solutions to integrate shape prior in a segmenta...
International audienceRegion growing is one of the most intuitive techniques for image segmentation....
International audienceRegion growing is one of the most popular image segmentationmethods. The algor...
International audience<p>This paper presents a novel shape-guided multi-region variational region gr...
This book proposes a new approach to handle the problem of limited training data. Common approaches ...
International audienceThis work proposes an image segmentation model based on active contours. For a...
Abstract. This paper introduces shape priors that benefit 2-dimensional, interactive contouring, whi...
SUMMARY We proposed a new level set segmentation model with statistical shape prior using a variatio...
Abstract—In current level set image segmentation methods, the number of regions is assumed to known ...
Image segmentation plays an essential role in many medical applications. Low SNR conditions and vari...
©2010 SPIE - Society of Photo Optical Instrumentation Engineers. One print or electronic copy may b...
This paper presents a novel approach for image segmentation by introducing competition between neigh...
Diagnosis by medical images implies the expert ability of recognizing patterns of interest in terms ...
We proposed a new level set segmentation model with statistical shape prior using a variational appr...
Segmenting images with occluded and missing intensity information is still a difficult task. Intensi...