This paper proposes a novel framework for multigroup shape analysis relying on a hierarchical graphical statistical model on shapes within a population. The framework represents individual shapes as pointsets modulo translation, rotation, and scale, following the notion in Kendall’s shape space. While individual shapes are derived from their group shape model, each group shape model is derived from a single population shape model. The hierarchical model follows the natural organization of population data and the top level in the hierarchy provides a common frame of reference for multigroup shape analysis, e.g. classification and hypothesis testing. Unlike typical shape-modeling approaches, the proposed model is a generative model that defin...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
This dissertation proposes an efficient optimization approach for obtaining shape correspondence acr...
One of the key challenges in deformable shape modeling is the problem of estimating a meaningful ave...
Using a differential-geometric treatment of planar shapes, we present tools for: (i) hierar-chical c...
Group structures arise naturally in a variety of modern data applications and statistical problems i...
In this paper, we address the issue of extracting contour of the object with a specific shape. A hie...
The ability to generate good model hypotheses is instrumental to accurate and robust geometric model...
AbstractThe general class of complex elliptical shape distributions on a complex sphere provides a n...
Models for distributions of shapes contained within images can be widely used in biomedical applicat...
Objects are distinguished from each other amongst other things by their shapes. The thesis is concer...
International audienceWe present a Bayesian framework for atlas construction of multi-object shape c...
In this paper, we present an algorithm for parsing natural images into middle level vision represent...
Statistical shape models are used widely as a basis for segmenting and interpreting images. A major ...
Inference in shape analysis is related to problems where the invariance of rotations and translation...
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 ...
This dissertation proposes an efficient optimization approach for obtaining shape correspondence acr...
One of the key challenges in deformable shape modeling is the problem of estimating a meaningful ave...
Using a differential-geometric treatment of planar shapes, we present tools for: (i) hierar-chical c...
Group structures arise naturally in a variety of modern data applications and statistical problems i...
In this paper, we address the issue of extracting contour of the object with a specific shape. A hie...
The ability to generate good model hypotheses is instrumental to accurate and robust geometric model...
AbstractThe general class of complex elliptical shape distributions on a complex sphere provides a n...
Models for distributions of shapes contained within images can be widely used in biomedical applicat...
Objects are distinguished from each other amongst other things by their shapes. The thesis is concer...
International audienceWe present a Bayesian framework for atlas construction of multi-object shape c...
In this paper, we present an algorithm for parsing natural images into middle level vision represent...
Statistical shape models are used widely as a basis for segmenting and interpreting images. A major ...
Inference in shape analysis is related to problems where the invariance of rotations and translation...
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 ...
This dissertation proposes an efficient optimization approach for obtaining shape correspondence acr...
One of the key challenges in deformable shape modeling is the problem of estimating a meaningful ave...