This dissertation proposes an efficient optimization approach for obtaining shape correspondence across a group of objects for statistical shape modeling. With each shape represented in a B-spline based parametric form, the correspondence across the shape population is cast as an issue of seeking a reparametrization for each shape so that a quality measure of the resulting shape correspondence across the group is optimized. The quality measure is the description length of covariance matrix of the shape population, with landmarks sampled on each shape. The movement of landmarks on each B-spline shape is controlled by the reparameterization of the B-spline shape. The reparameterization itself is also represented with B-splines and B-spline co...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
In this paper novel theory to automate shape modelling is described. The main idea is to develop a t...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
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...
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...
Statistical shape models are used widely as a basis for segmenting and interpreting images. A major ...
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 ...
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...
Shape models and the automatic building of such models have proven over the last decades to be power...
This paper introduces a new benchmark study to evaluate the performance of landmark-based shape corr...
pre-printA crucial problem in statistical shape analysis is establishing the correspondence of shape...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
In this paper novel theory to automate shape modelling is described. The main idea is to develop a t...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
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...
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...
Statistical shape models are used widely as a basis for segmenting and interpreting images. A major ...
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 ...
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...
Shape models and the automatic building of such models have proven over the last decades to be power...
This paper introduces a new benchmark study to evaluate the performance of landmark-based shape corr...
pre-printA crucial problem in statistical shape analysis is establishing the correspondence of shape...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
In this paper novel theory to automate shape modelling is described. The main idea is to develop a t...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...