International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-measurement, a number of operational contexts presuppose the a priori knowledge of the L B-dimensional "interfering" subspace B and the goal is to estimate the L A amplitudes corresponding to subspace A. Taking into account the knowledge of the orthogonal "interfering" subspace B ⊥, the Bayesian estimation lower bound is derived for the L A-sparse vector in the doubly asymptotic scenario, i.e. N, L A , L B → ∞ with a finite asymptotic ratio. By jointly exploiting the Compressed Sensing (CS) and the Random Matrix Theory (RMT) frameworks, closed-form expressions for the lower bound on the estimation of the non-zero entries of a sparse vector of i...
This paper considers constrained lscr1 minimization methods in a unified framework for the recovery ...
International audienceIn typical Compressed Sensing operational contexts, the measurement vector y i...
ℓ_1 minimization is often used for finding the sparse solutions of an under-determined linear system...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...
AbstractThe estimation of a sparse vector in the linear model is a fundamental problem in signal pro...
The problem of estimating a high-dimensional sparse vector $\theta \in \mathbb{R}^n$ from an observa...
The aim of this paper is to develop strategies to estimate the sparsity degree of a signal from comp...
International audienceCompressed sensing (CS) enables measurement reconstruction by using sampling r...
International audienceCompressed Sensing (CS) is now a well-established research area and a plethora...
In this paper, we propose a method for estimating the sparsity of a signal from its noisy linear pro...
This paper gives a precise characterization of the fundamental limits of adaptive sensing for divers...
It is well known that compressed sensing problems reduce to solving large under-determined systems o...
International audienceA well-known result [1, Lemma 3.4] states that, without noise, it is better to...
Let A be an M by N matrix (M 1 - 1/d, and d = Ω(log(1/ε)/ε^3). The rlaxation given in (*) can be s...
In sparse Bayesian learning (SBL) approximate Bayesian inference is applied to find sparse estimates...
This paper considers constrained lscr1 minimization methods in a unified framework for the recovery ...
International audienceIn typical Compressed Sensing operational contexts, the measurement vector y i...
ℓ_1 minimization is often used for finding the sparse solutions of an under-determined linear system...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...
AbstractThe estimation of a sparse vector in the linear model is a fundamental problem in signal pro...
The problem of estimating a high-dimensional sparse vector $\theta \in \mathbb{R}^n$ from an observa...
The aim of this paper is to develop strategies to estimate the sparsity degree of a signal from comp...
International audienceCompressed sensing (CS) enables measurement reconstruction by using sampling r...
International audienceCompressed Sensing (CS) is now a well-established research area and a plethora...
In this paper, we propose a method for estimating the sparsity of a signal from its noisy linear pro...
This paper gives a precise characterization of the fundamental limits of adaptive sensing for divers...
It is well known that compressed sensing problems reduce to solving large under-determined systems o...
International audienceA well-known result [1, Lemma 3.4] states that, without noise, it is better to...
Let A be an M by N matrix (M 1 - 1/d, and d = Ω(log(1/ε)/ε^3). The rlaxation given in (*) can be s...
In sparse Bayesian learning (SBL) approximate Bayesian inference is applied to find sparse estimates...
This paper considers constrained lscr1 minimization methods in a unified framework for the recovery ...
International audienceIn typical Compressed Sensing operational contexts, the measurement vector y i...
ℓ_1 minimization is often used for finding the sparse solutions of an under-determined linear system...