Image segmentation of 3D medical images is a challenging problem with several still not totally solved practical issues, such as noise interference, variable object structures and image artifacts. This paper describes a hybrid 3D image segmentation method which combines region growing and deformable models to obtain accurate and topologically preserving surface structures of anatomical objects of interest. The proposed strategy starts by determining a rough but robust approximation of the objects using a region-growing algorithm. Then, the closed surface mesh that encloses the region is constructed and used as the initial geometry of a deformable model for the final refinement. This integrated strategy provides an alternative solution to on...
We propose new hybrid methods for automated segmentation of radiological patient data and the Visibl...
Processing medical data has always been an interesting field that has shown the need for effective i...
International audienceAmong the numerous 3D medical image segmentation methods proposed in the liter...
This paper introduces an automated medical image segmentation algorithm which can be used to locate ...
This paper introduces an automated medical image segmentation algorithm which can be used to locate ...
We have developed a knowledge-based deformable surface for segmentation of medical images. This work...
Medical images are challenging for segmentation. Deformable models proved to be one of the most effe...
This thesis addresses a specific problem of model-based segmentation; namely, the automatic identifi...
The accurate segmentation of the brain from three-dimensional medical imagery is important as the ba...
Medical image segmentation is the process that defines the region of interest in the image volume. I...
Medical image segmentation is the process that defines the region of interest in the image volume. I...
This thesis presents research work on deformable surface model for 3D object segmentation. Over the ...
Processing medical data has always been an interesting field that has shown the need for effective i...
Segmenting structures of interest in medical images is an important step in different tasks such as ...
International audienceMedical image segmentation is often a difficult task due to the low contrast, ...
We propose new hybrid methods for automated segmentation of radiological patient data and the Visibl...
Processing medical data has always been an interesting field that has shown the need for effective i...
International audienceAmong the numerous 3D medical image segmentation methods proposed in the liter...
This paper introduces an automated medical image segmentation algorithm which can be used to locate ...
This paper introduces an automated medical image segmentation algorithm which can be used to locate ...
We have developed a knowledge-based deformable surface for segmentation of medical images. This work...
Medical images are challenging for segmentation. Deformable models proved to be one of the most effe...
This thesis addresses a specific problem of model-based segmentation; namely, the automatic identifi...
The accurate segmentation of the brain from three-dimensional medical imagery is important as the ba...
Medical image segmentation is the process that defines the region of interest in the image volume. I...
Medical image segmentation is the process that defines the region of interest in the image volume. I...
This thesis presents research work on deformable surface model for 3D object segmentation. Over the ...
Processing medical data has always been an interesting field that has shown the need for effective i...
Segmenting structures of interest in medical images is an important step in different tasks such as ...
International audienceMedical image segmentation is often a difficult task due to the low contrast, ...
We propose new hybrid methods for automated segmentation of radiological patient data and the Visibl...
Processing medical data has always been an interesting field that has shown the need for effective i...
International audienceAmong the numerous 3D medical image segmentation methods proposed in the liter...