For segmenting complex structures like vertebrae, a priori knowledge by means of statistical shape models (SSMs) is often incorporated. One of the main challenges using SSMs is the solution of the correspondence problem. In this work we present a generic automated approach for solving the correspondence problem for vertebrae. We determine two closed loops on a reference shape and propagate them consistently to the remaining shapes of the training set. Then every shape is cut along these loops and parameterized to a rectangle. There, we optimize a novel combined energy to establish the correspondences and to reduce the unavoidable area and angle distortion. Finally, we present an adaptive resampling method to achieve a good shape representat...
The identification of corresponding landmarks across a set of training shapes is a prerequisite for ...
International audienceStatistical Shape Models (SSMs) are efficient tools in several fields and espe...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
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...
Statistical Shape Models have been proven to be valuable tools for segmenting anatomical structures ...
Statistical Shape Models have been proven to be valuable tools for segmenting anatomical structures ...
Statistical shape models (SSMs) have been used widely as a basis for segmenting and interpreting com...
Abstract Background In the active shape model framework, principal component analysis (PCA) based st...
Statistical shape models play a very important role in most modern medical segmentation frameworks. ...
International audienceAutomated bone segmentation is one of the most challenging problems in medical...
Statistical shape models play a very important role in most modern medical segmentation frameworks. ...
We propose a new correspondence optimisation algorithm for building 3D statistical shape models (SSM...
We propose a new correspondence optimisation algorithm for building 3D statistical shape models (SSM...
The identification of corresponding landmarks across a set of training shapes is a prerequisite for ...
The identification of corresponding landmarks across a set of training shapes is a prerequisite for ...
International audienceStatistical Shape Models (SSMs) are efficient tools in several fields and espe...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
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...
Statistical Shape Models have been proven to be valuable tools for segmenting anatomical structures ...
Statistical Shape Models have been proven to be valuable tools for segmenting anatomical structures ...
Statistical shape models (SSMs) have been used widely as a basis for segmenting and interpreting com...
Abstract Background In the active shape model framework, principal component analysis (PCA) based st...
Statistical shape models play a very important role in most modern medical segmentation frameworks. ...
International audienceAutomated bone segmentation is one of the most challenging problems in medical...
Statistical shape models play a very important role in most modern medical segmentation frameworks. ...
We propose a new correspondence optimisation algorithm for building 3D statistical shape models (SSM...
We propose a new correspondence optimisation algorithm for building 3D statistical shape models (SSM...
The identification of corresponding landmarks across a set of training shapes is a prerequisite for ...
The identification of corresponding landmarks across a set of training shapes is a prerequisite for ...
International audienceStatistical Shape Models (SSMs) are efficient tools in several fields and espe...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...