Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head in the space. The applications range from structural biology, computer vision, medical imaging to archeology. We focus on the to selection of an appropriate measurement of distance among observations with the aim of obtaining an unsupervised classification of shapes. Data from a shape are often realized as a set of representative points, called landmarks. For planar shapes, we assume that each landmark is modeled via a bivariate Gaussian, where the means capture uncertainties that arise in landmarks placement and the variances the natural variability across the population of shapes. At first we consider the Fisher-Rao metric as a Riemannian...
In this paper, a new statistical method to model patterns emerging in complex systems is proposed. A...
AbstractWe introduce a spectral notion of distance between objects and study its theoretical propert...
Many variants of the Wasserstein distance have been introduced to reduce its original computational ...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In this paper, the problem of clustering rotationally invariant shapes is studied and a solution usi...
Abstract — We show that the Fisher-Rao Riemannian metric is a natural, intrinsic tool for computing ...
In this paper, a new statistical method is proposed to model patterns emerging in complex systems. I...
This paper deals with the clustering of complex data. The input elements to be clustered are linear ...
In this work, learning schemes for measure-valued data are proposed, i.e. data that their structure ...
In this paper, a new statistical method to model patterns emerging in complex systems is proposed. A...
AbstractWe introduce a spectral notion of distance between objects and study its theoretical propert...
Many variants of the Wasserstein distance have been introduced to reduce its original computational ...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
Shape Analysis studies geometrical objects, as for example a flat fish in the plane or a human head ...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In the clustering of shapes, which is a longstanding challenge in the framework of geometric morphom...
In this paper, the problem of clustering rotationally invariant shapes is studied and a solution usi...
Abstract — We show that the Fisher-Rao Riemannian metric is a natural, intrinsic tool for computing ...
In this paper, a new statistical method is proposed to model patterns emerging in complex systems. I...
This paper deals with the clustering of complex data. The input elements to be clustered are linear ...
In this work, learning schemes for measure-valued data are proposed, i.e. data that their structure ...
In this paper, a new statistical method to model patterns emerging in complex systems is proposed. A...
AbstractWe introduce a spectral notion of distance between objects and study its theoretical propert...
Many variants of the Wasserstein distance have been introduced to reduce its original computational ...