In this paper we examine an Information-Theoretic method for solving noisy linear inverse estimation problems which encompasses under a single framework a whole class of estimation methods. Under this framework, the prior information about the unknown parameters (when such information exists), and constraints on the parameters can be incorporated in the statement of the problem. The method builds on the basics of the maximum entropy principle and consists of transforming the original problem into an estimation of a probability density on an appropriate space naturally associated with the statement of the problem. This estimation method is generic in the sense that it provides a framework for analyzing non-normal models, it is easy to implem...
Ill-posed inverse problems are ubiquitous in applications. Understanding of algorithms for their sol...
The paper presents a new approach to restoration characteristics randomized models under small amoun...
International audienceThis chapter focuses on the notions of entropy and of maximum entropy distribu...
Abstract: In this paper we examine an Information-Theoretic method for solving noisy linear inverse ...
Abstract—Entropy-based methods are widely used for solving inverse problems, particularly when the s...
Given the objective of estimating the unknown parameters of a possibly nonlinear dynamic model using...
The main content of this review article is first to review the main inference tools using Bayes rule...
International audienceWe consider the linear inverse problem of reconstructing an unknown finite mea...
AbstractWe consider the linear inverse problem of reconstructing an unknown finite measure μ from a ...
In the present communication entropy optimization principles namely maximum entropy principle and mi...
A regularization method based on the non-extensive maximum entropy principle is devised. Special emp...
We examine the general non-linear inverse problem with a finite number of parameters. In order to pe...
Maximum entropy spectral density estimation is a technique for reconstructing an unknown density fun...
This thesis is concerned with the development of estimation techniques in four models involving stat...
The estimation of parameters in a linear model is considered under the hypothesis that the noise, wi...
Ill-posed inverse problems are ubiquitous in applications. Understanding of algorithms for their sol...
The paper presents a new approach to restoration characteristics randomized models under small amoun...
International audienceThis chapter focuses on the notions of entropy and of maximum entropy distribu...
Abstract: In this paper we examine an Information-Theoretic method for solving noisy linear inverse ...
Abstract—Entropy-based methods are widely used for solving inverse problems, particularly when the s...
Given the objective of estimating the unknown parameters of a possibly nonlinear dynamic model using...
The main content of this review article is first to review the main inference tools using Bayes rule...
International audienceWe consider the linear inverse problem of reconstructing an unknown finite mea...
AbstractWe consider the linear inverse problem of reconstructing an unknown finite measure μ from a ...
In the present communication entropy optimization principles namely maximum entropy principle and mi...
A regularization method based on the non-extensive maximum entropy principle is devised. Special emp...
We examine the general non-linear inverse problem with a finite number of parameters. In order to pe...
Maximum entropy spectral density estimation is a technique for reconstructing an unknown density fun...
This thesis is concerned with the development of estimation techniques in four models involving stat...
The estimation of parameters in a linear model is considered under the hypothesis that the noise, wi...
Ill-posed inverse problems are ubiquitous in applications. Understanding of algorithms for their sol...
The paper presents a new approach to restoration characteristics randomized models under small amoun...
International audienceThis chapter focuses on the notions of entropy and of maximum entropy distribu...