33 pages, 1 figureInternational audienceThis article provides a new toolbox to derive sparse recovery guarantees - that is referred to as ‘‘stable and robust sparse regression'' (SRSR) ' from deviations on extreme singular values or extreme eigenvalues obtained in Random Matrix Theory. This work is based on Restricted Isometry Constants (RICs) which are a pivotal notion in Compressed Sensing and High-Dimensional Statistics as these constants finely assess how a linear operator is conditioned on the set of sparse vectors and hence how it performs in SRSR. While it is an open problem to construct deterministic matrices with apposite RICs, one can prove that such matrices exist using random matrices models. In this paper, we show upper bounds ...
We investigate conditions under which the solution of an underdetermined linear system with minimal ...
A K*-sparse vector x* ∈ RN produces measurements via linear dimensionality reduction as u = Φx* +n, ...
International audienceThis paper investigates conditions under which the solution of an underdetermi...
33 pages, 1 figureInternational audienceThis article provides a new toolbox to derive sparse recover...
This article provides a new toolbox to derive sparse recovery guarantees – that is referred to as “s...
One of the key issues in the acquisition of sparse data by means of compressed sensing (CS) is the d...
One of the key issues in the acquisition of sparse data by means of compressed sensing (CS) is the d...
open3noThis work was supported in part by the European Commission through the EuroCPS Project and th...
Restricted isometry constants (RICs) provide a measure of how far from an isometry a matrix can be w...
Compressed Sensing (CS) is a framework where we measure data through a non-adaptive linear mapping ...
International audienceThis paper considers conditions based on the restricted isometry constant (RIC...
The Restricted Isometry Property (RIP) is a fundamental property of a matrix enabling sparse recover...
The Restricted Isometry Property (RIP) is a fundamental property of a matrix which enables sparse re...
Abstract—Many sparse approximation algorithms accurately recover the sparsest solution to an underde...
International audienceWe extend recent results regarding the restricted isometry constants (RIC) and...
We investigate conditions under which the solution of an underdetermined linear system with minimal ...
A K*-sparse vector x* ∈ RN produces measurements via linear dimensionality reduction as u = Φx* +n, ...
International audienceThis paper investigates conditions under which the solution of an underdetermi...
33 pages, 1 figureInternational audienceThis article provides a new toolbox to derive sparse recover...
This article provides a new toolbox to derive sparse recovery guarantees – that is referred to as “s...
One of the key issues in the acquisition of sparse data by means of compressed sensing (CS) is the d...
One of the key issues in the acquisition of sparse data by means of compressed sensing (CS) is the d...
open3noThis work was supported in part by the European Commission through the EuroCPS Project and th...
Restricted isometry constants (RICs) provide a measure of how far from an isometry a matrix can be w...
Compressed Sensing (CS) is a framework where we measure data through a non-adaptive linear mapping ...
International audienceThis paper considers conditions based on the restricted isometry constant (RIC...
The Restricted Isometry Property (RIP) is a fundamental property of a matrix enabling sparse recover...
The Restricted Isometry Property (RIP) is a fundamental property of a matrix which enables sparse re...
Abstract—Many sparse approximation algorithms accurately recover the sparsest solution to an underde...
International audienceWe extend recent results regarding the restricted isometry constants (RIC) and...
We investigate conditions under which the solution of an underdetermined linear system with minimal ...
A K*-sparse vector x* ∈ RN produces measurements via linear dimensionality reduction as u = Φx* +n, ...
International audienceThis paper investigates conditions under which the solution of an underdetermi...