International audienceIn this paper, we describe a statistical shape analysis founded on a robust elastic metric. The proposed metric is based on geodesics in the shape space. Using this distance, we formulate a variational setting to estimate intrinsic mean shape viewed as the perfect pattern to represent a set of given shapes. By applying a geodesic-based shape warping, we generate a principal component analysis (PCA) able to capture nonlinear shape variability. Indeed, the proposed approach better reflects the main modes of variability of the data. So, characterizing dominant modes of individual shape variations is conducted well through the reconstruction process. We demonstrate the efficiency of our approach with an application on a GE...
We describe a method of constructing parametric statistical models of shape variation which can gene...
We focus on the problem of shape variability modeling in statistical pattern recognition. We present...
We focus on the problem of shape variability modeling in statistical pattern recognition. We present...
International audienceIn this paper, we describe a statistical shape analysis founded on a robust el...
International audienceIn this paper, we describe a statistical shape analysis founded on a robust el...
International audienceIn this paper, we describe a statistical shape analysis founded on a robust el...
Abstract. To develop statistical models for shapes, we utilize an elas-tic string representation whe...
The essential goal for Statistical Shape Model (SSM) is to describe and extract the shape variations...
We describe two Riemannian frameworks for statistical shape analysis of parameterized surfaces. Thes...
Statistical shape analysis is a tool that allows to quantify the shape variability of a population o...
The essential goal for Statistical Shape Model (SSM) is to describe and extract the shape variations...
The essential goal for Statistical Shape Model (SSM) is to describe and extract the shape variations...
The essential goal for Statistical Shape Model (SSM) is to describe and extract the shape variations...
We describe a method for analyzing the shape variability of images, called geometric PCA. Our approa...
In this paper, a new statistical method is proposed to model patterns emerging in complex systems. I...
We describe a method of constructing parametric statistical models of shape variation which can gene...
We focus on the problem of shape variability modeling in statistical pattern recognition. We present...
We focus on the problem of shape variability modeling in statistical pattern recognition. We present...
International audienceIn this paper, we describe a statistical shape analysis founded on a robust el...
International audienceIn this paper, we describe a statistical shape analysis founded on a robust el...
International audienceIn this paper, we describe a statistical shape analysis founded on a robust el...
Abstract. To develop statistical models for shapes, we utilize an elas-tic string representation whe...
The essential goal for Statistical Shape Model (SSM) is to describe and extract the shape variations...
We describe two Riemannian frameworks for statistical shape analysis of parameterized surfaces. Thes...
Statistical shape analysis is a tool that allows to quantify the shape variability of a population o...
The essential goal for Statistical Shape Model (SSM) is to describe and extract the shape variations...
The essential goal for Statistical Shape Model (SSM) is to describe and extract the shape variations...
The essential goal for Statistical Shape Model (SSM) is to describe and extract the shape variations...
We describe a method for analyzing the shape variability of images, called geometric PCA. Our approa...
In this paper, a new statistical method is proposed to model patterns emerging in complex systems. I...
We describe a method of constructing parametric statistical models of shape variation which can gene...
We focus on the problem of shape variability modeling in statistical pattern recognition. We present...
We focus on the problem of shape variability modeling in statistical pattern recognition. We present...