During recent decades, there has been a substantial development in optimal mass transport theory and methods. In this work, we consider multi-marginal problems wherein only partial information of each marginal is available, a common setup in many inverse problems in, e.g., remote sensing and imaging. By considering an entropy regularized approximation of the original transport problem, we propose an algorithm corresponding to a block-coordinate ascent of the dual problem, where Newton’s algorithm is used to solve the sub-problems. In order to make this computationally tractable for large-scale settings, we utilize the tensor structure that arises in practical problems, allowing for computing projections of the multi-marginal transport plan ...
After introducing the general setting of multimarginal optimal transport, we present some operators ...
Optimal transport aims to estimate a transportation plan that minimizes a displacement cost. This is...
International audienceThis paper is focused on spectral unmixing and presents an original technique ...
This work presents a method for information fusion in source localization applications. The method u...
This thesis deals with a class of multi-marginal optimal transport problems, which we call graph-str...
One of the main objective of data fusion is the integration of several acquisition of the same physi...
International audienceOne of the main objective of data fusion is the integration of several acquisi...
This paper presents a unified framework for smooth convex regularization of discrete optimal transpo...
We study the problem of maximizing a spectral risk measure of a given output function which depends ...
We present an efficient algorithm for recent generalizations of optimal mass transport theory to mat...
In this work, we propose new methods for information fusion and tracking in direction of arrival (DO...
Abstract. In this paper, we propose an improvement of an algorithm of Au-renhammer, Hoffmann and Aro...
International audienceOptimal transport (OT) has become a discipline by itself that offers solutions...
In this dissertation, we explore several themes in sensor management with an emphasis on their appli...
We present a particular formulation of optimal transport for matrix-valued density functions. Our ai...
After introducing the general setting of multimarginal optimal transport, we present some operators ...
Optimal transport aims to estimate a transportation plan that minimizes a displacement cost. This is...
International audienceThis paper is focused on spectral unmixing and presents an original technique ...
This work presents a method for information fusion in source localization applications. The method u...
This thesis deals with a class of multi-marginal optimal transport problems, which we call graph-str...
One of the main objective of data fusion is the integration of several acquisition of the same physi...
International audienceOne of the main objective of data fusion is the integration of several acquisi...
This paper presents a unified framework for smooth convex regularization of discrete optimal transpo...
We study the problem of maximizing a spectral risk measure of a given output function which depends ...
We present an efficient algorithm for recent generalizations of optimal mass transport theory to mat...
In this work, we propose new methods for information fusion and tracking in direction of arrival (DO...
Abstract. In this paper, we propose an improvement of an algorithm of Au-renhammer, Hoffmann and Aro...
International audienceOptimal transport (OT) has become a discipline by itself that offers solutions...
In this dissertation, we explore several themes in sensor management with an emphasis on their appli...
We present a particular formulation of optimal transport for matrix-valued density functions. Our ai...
After introducing the general setting of multimarginal optimal transport, we present some operators ...
Optimal transport aims to estimate a transportation plan that minimizes a displacement cost. This is...
International audienceThis paper is focused on spectral unmixing and presents an original technique ...