We study sparse recovery with structured random measurement matrices having independent, identically distributed, and uniformly bounded rows and with a nontrivial covariance structure. This class of matrices arises from random sampling of bounded Riesz systems and generalizes random partial Fourier matrices. Our main result improves the currently available results for the null space and restricted isometry properties of such random matrices. The main novelty of our analysis is a new upper bound for the expectation of the supremum of a Bernoulli process associated with a restricted isometry constant. We apply our result to prove new performance guarantees for the CORSING method, a recently introduced numerical approximation technique for par...
AbstractA major enterprise in compressed sensing and sparse approximation is the design and analysis...
These notes give a mathematical introduction to compressive sensing focusing on recovery using `1-mi...
This article provides a new toolbox to derive sparse recovery guarantees – that is referred to as “s...
We study sparse recovery with structured random measurement matrices having independent, identically...
Abstract—Many sparse approximation algorithms accurately recover the sparsest solution to an underde...
For an m × N underdetermined system of linear equations with independent pre-Gaussian random coeffic...
We consider two theorems from the theory of compressive sensing. Mainly a theorem concerning uniform...
Recovery of the initial state of a high-dimensional system can require a large number of mea-suremen...
In Compressive Sensing, the Restricted Isometry Property (RIP) ensures that robust recovery of spars...
Abstract. Inspired by significant real-life applications, in particular, sparse phase retrieval and ...
AbstractIn the theory of compressed sensing, restricted isometry analysis has become a standard tool...
Abstract. Inspired by significant real-life applications, in particular, sparse phase retrieval and ...
This paper introduces a simple and very general theory of compressive sensing. In this theory, the s...
• We consider the structured sampling of structured signals, more specifically, using block diagonal...
In the theory of compressed sensing, restricted isometry analysis has become a standard tool for stu...
AbstractA major enterprise in compressed sensing and sparse approximation is the design and analysis...
These notes give a mathematical introduction to compressive sensing focusing on recovery using `1-mi...
This article provides a new toolbox to derive sparse recovery guarantees – that is referred to as “s...
We study sparse recovery with structured random measurement matrices having independent, identically...
Abstract—Many sparse approximation algorithms accurately recover the sparsest solution to an underde...
For an m × N underdetermined system of linear equations with independent pre-Gaussian random coeffic...
We consider two theorems from the theory of compressive sensing. Mainly a theorem concerning uniform...
Recovery of the initial state of a high-dimensional system can require a large number of mea-suremen...
In Compressive Sensing, the Restricted Isometry Property (RIP) ensures that robust recovery of spars...
Abstract. Inspired by significant real-life applications, in particular, sparse phase retrieval and ...
AbstractIn the theory of compressed sensing, restricted isometry analysis has become a standard tool...
Abstract. Inspired by significant real-life applications, in particular, sparse phase retrieval and ...
This paper introduces a simple and very general theory of compressive sensing. In this theory, the s...
• We consider the structured sampling of structured signals, more specifically, using block diagonal...
In the theory of compressed sensing, restricted isometry analysis has become a standard tool for stu...
AbstractA major enterprise in compressed sensing and sparse approximation is the design and analysis...
These notes give a mathematical introduction to compressive sensing focusing on recovery using `1-mi...
This article provides a new toolbox to derive sparse recovery guarantees – that is referred to as “s...