Statistical shape models are used widely as a basis for segmenting and interpreting images. A major drawback of the approach is the need, during training, to establish a dense correspondence across a training set of segmented shapes. We show that model construction can be treated as an optimisation problem, automating the process and guaranteeing the effectiveness of the resulting models. This is achieved by optimising an objective function with respect to the correspondence. We use an information theoretic objective function that directly promotes desirable features of the model. This is coupled with an effective method of manipulating correspondence, based on re-parameterising each training shape, to build optimal statistical shape models...
In deformable model segmentation, the geometric training process plays a crucial role in providing s...
Statistical shape models (SSMs) made using point sets are important tools to capture the variations ...
We propose a method based on a priori knowledge provided by anatomical atlases to build almost autom...
Deformable shape models have wide application in computer vision and biomedical image analysis. This...
This dissertation proposes an efficient optimization approach for obtaining shape correspondence acr...
We propose a new correspondence optimisation algorithm for building 3D statistical shape models (SSM...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
We propose a new correspondence optimisation algorithm for building 3D statistical shape models (SSM...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
In Statistical Shape Modeling, a dense correspondence between the shapes in the training set must be...
In Statistical Shape Modeling, a dense correspondence between the shapes in the training set must be...
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 ...
Shape models and the automatic building of such models have proven over the last decades to be power...
Statistical models of shape and appearance are powerful tools for interpreting medical images. We as...
In deformable model segmentation, the geometric training process plays a crucial role in providing s...
Statistical shape models (SSMs) made using point sets are important tools to capture the variations ...
We propose a method based on a priori knowledge provided by anatomical atlases to build almost autom...
Deformable shape models have wide application in computer vision and biomedical image analysis. This...
This dissertation proposes an efficient optimization approach for obtaining shape correspondence acr...
We propose a new correspondence optimisation algorithm for building 3D statistical shape models (SSM...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
We propose a new correspondence optimisation algorithm for building 3D statistical shape models (SSM...
Statistical shape models (SSMs) are a well-established tool in medical image analysis. The most chal...
In Statistical Shape Modeling, a dense correspondence between the shapes in the training set must be...
In Statistical Shape Modeling, a dense correspondence between the shapes in the training set must be...
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 ...
Shape models and the automatic building of such models have proven over the last decades to be power...
Statistical models of shape and appearance are powerful tools for interpreting medical images. We as...
In deformable model segmentation, the geometric training process plays a crucial role in providing s...
Statistical shape models (SSMs) made using point sets are important tools to capture the variations ...
We propose a method based on a priori knowledge provided by anatomical atlases to build almost autom...