International audienceGeometric statistics aim at shifting the classical paradigm for inference from points in a Euclidean space to objects living in a non-linear space, in a consistent way with the underlying geometric structure considered. In this chapter, we illustrate some recent advances of geometric statistics for dimension reduction in manifolds. Beyond the mean value (the best 0-dimensional summary statistics of our data), we want to estimate higher dimensional approximation spaces fitting our data. We first define a family of natural parametric geometric subspaces in manifolds that generalize the now classical geodesic subspaces: barycentric subspaces are implicitly defined as the locus of weighted means of k + 1 reference points w...
International audienceThis paper addresses the generalization of Principal Component Analysis (PCA) ...
The dissertation consists of two research topics regarding modern non-standard data analytic situati...
We propose a novel method for linear dimensionality reduction of manifold modeled data. First, we sh...
International audienceThis paper investigates the generalization of Principal Component Analysis (PC...
This thesis concerns the problem of dimensionality reduction through information geometric methods o...
In this dissertation we present a generalization of Principal Component Analysis (PCA) to Riemannian...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
A systematic introduction to a general nonparametric theory of statistics on manifolds, with emphasi...
International audienceGeneralizing Principal Component Analysis (PCA) to man-ifolds is pivotal for m...
In this paper, we examine image and video based recognition applications where the underlying models...
We present some applications from biology and medical imaging which lead to data on manifolds and st...
This thesis introduces geometric representations relevant to the analysis of datasets of random vect...
We consider the problem of analyzing data for which no straight forward and meaningful Euclidean rep...
<p>Subspaces and manifolds are two powerful models for high dimensional signals. Subspaces model lin...
International audienceWith the possibility of interpreting data using increasingly complex models, w...
International audienceThis paper addresses the generalization of Principal Component Analysis (PCA) ...
The dissertation consists of two research topics regarding modern non-standard data analytic situati...
We propose a novel method for linear dimensionality reduction of manifold modeled data. First, we sh...
International audienceThis paper investigates the generalization of Principal Component Analysis (PC...
This thesis concerns the problem of dimensionality reduction through information geometric methods o...
In this dissertation we present a generalization of Principal Component Analysis (PCA) to Riemannian...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
A systematic introduction to a general nonparametric theory of statistics on manifolds, with emphasi...
International audienceGeneralizing Principal Component Analysis (PCA) to man-ifolds is pivotal for m...
In this paper, we examine image and video based recognition applications where the underlying models...
We present some applications from biology and medical imaging which lead to data on manifolds and st...
This thesis introduces geometric representations relevant to the analysis of datasets of random vect...
We consider the problem of analyzing data for which no straight forward and meaningful Euclidean rep...
<p>Subspaces and manifolds are two powerful models for high dimensional signals. Subspaces model lin...
International audienceWith the possibility of interpreting data using increasingly complex models, w...
International audienceThis paper addresses the generalization of Principal Component Analysis (PCA) ...
The dissertation consists of two research topics regarding modern non-standard data analytic situati...
We propose a novel method for linear dimensionality reduction of manifold modeled data. First, we sh...