In this paper, we study the problem of projection kernel design for the reconstruction of high-dimensional signals from low-dimensional measurements in the presence of side information, assuming that the signal of interest and the side information signal are described by a joint Gaussian mixture model (GMM). In particular, we consider the case where the projection kernel for the signal of interest is random, whereas the projection kernel associated to the side information is designed. We then derive sufficient conditions on the number of measurements needed to guarantee that the minimum meansquared error (MMSE) tends to zero in the low-noise regime. Our results demonstrate that the use of a designed kernel to capture side information can le...
A new framework of compressive sensing (CS), namely statistical compres-sive sensing (SCS), that aim...
This paper is concerned with compressive sensing of signals drawn from a Gaus-sian mixture model (GM...
This dissertation introduces the theory of compressive sensing with prior information about a signal...
This paper investigates the impact of projection design on the reconstruction of high-dimensional si...
Compressive sensing is a breakthrough technology in view of the fact that it enables the acquisition...
We consider the recovery of an underlying signal x ∈ ℂm based on projection measurements of the form...
Abstract—This paper determines to within a single mea-surement the minimum number of measurements re...
This book discusses compressive sensing in the presence of side information. Compressive sensing is ...
Abstract—Compressive sensing of signals drawn from a Gaus-sian mixture model (GMM) admits closed-for...
Reconstruction of continuous signals from a number of their discrete samples is central to digital s...
One of the approaches to exploit temporal redundancy in compressive sensing reconstruction of spatio...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...
Suppose we are given a vector f in a class F ⊂ ℝN, e.g., a class of digital signals or digital imag...
This paper proposes a projection matrix design algorithm using prior information on sparse signal to...
This paper presents and studies analytically a new compressive sensing (CS) approach with the aim of...
A new framework of compressive sensing (CS), namely statistical compres-sive sensing (SCS), that aim...
This paper is concerned with compressive sensing of signals drawn from a Gaus-sian mixture model (GM...
This dissertation introduces the theory of compressive sensing with prior information about a signal...
This paper investigates the impact of projection design on the reconstruction of high-dimensional si...
Compressive sensing is a breakthrough technology in view of the fact that it enables the acquisition...
We consider the recovery of an underlying signal x ∈ ℂm based on projection measurements of the form...
Abstract—This paper determines to within a single mea-surement the minimum number of measurements re...
This book discusses compressive sensing in the presence of side information. Compressive sensing is ...
Abstract—Compressive sensing of signals drawn from a Gaus-sian mixture model (GMM) admits closed-for...
Reconstruction of continuous signals from a number of their discrete samples is central to digital s...
One of the approaches to exploit temporal redundancy in compressive sensing reconstruction of spatio...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...
Suppose we are given a vector f in a class F ⊂ ℝN, e.g., a class of digital signals or digital imag...
This paper proposes a projection matrix design algorithm using prior information on sparse signal to...
This paper presents and studies analytically a new compressive sensing (CS) approach with the aim of...
A new framework of compressive sensing (CS), namely statistical compres-sive sensing (SCS), that aim...
This paper is concerned with compressive sensing of signals drawn from a Gaus-sian mixture model (GM...
This dissertation introduces the theory of compressive sensing with prior information about a signal...