Statistical Shape Models have been proven to be valuable tools for segmenting anatomical structures of arbitrary topology. Being based on the statistical description of representative shapes, an initial segmentation is required - preferably done by an expert. For this purpose, mostly manual segmentation methods followed by a mesh generation step are employed. A prerequisite for generating the training data based on these segmentations is the establishment of correspondences between all training meshes. While existing approaches decouple the expert segmentation from the correspondence establishment step, we propose in this work a segmentation approach that simultaneously establishes the landmark correspondences needed for the subsequent gene...
Statistical shape modelling is an efficient and robust method for medical image segmentation in comp...
Statistical Shape Models (SSMs) have been successfully applied to both segmentation and the descript...
The identification of corresponding landmarks across a set of training shapes is a prerequisite for ...
Statistical Shape Models have been proven to be valuable tools for segmenting anatomical structures ...
Statistical shape models play a very important role in most modern medical segmentation frameworks. ...
Statistical shape models play a very important role in most modern medical segmentation frameworks. ...
For segmenting complex structures like vertebrae, a priori knowledge by means of statistical shape m...
For segmenting complex structures like vertebrae, a priori knowledge by means of statistical shape m...
Automatic segmentation of organs from medical images is indispensable for the computer-assisted medi...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
A statistical shape model that accurately generalizes a family of 3D shapes requires establishing co...
This thesis enters on the development of a point-based statistical shape model relying on correspond...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
Statistical shape modelling is an efficient and robust method for medical image segmentation in comp...
Statistical Shape Models (SSMs) have been successfully applied to both segmentation and the descript...
The identification of corresponding landmarks across a set of training shapes is a prerequisite for ...
Statistical Shape Models have been proven to be valuable tools for segmenting anatomical structures ...
Statistical shape models play a very important role in most modern medical segmentation frameworks. ...
Statistical shape models play a very important role in most modern medical segmentation frameworks. ...
For segmenting complex structures like vertebrae, a priori knowledge by means of statistical shape m...
For segmenting complex structures like vertebrae, a priori knowledge by means of statistical shape m...
Automatic segmentation of organs from medical images is indispensable for the computer-assisted medi...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
A statistical shape model that accurately generalizes a family of 3D shapes requires establishing co...
This thesis enters on the development of a point-based statistical shape model relying on correspond...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
Statistical shape modelling is an efficient and robust method for medical image segmentation in comp...
Statistical Shape Models (SSMs) have been successfully applied to both segmentation and the descript...
The identification of corresponding landmarks across a set of training shapes is a prerequisite for ...