Existing convex relaxation-based approaches to reconstruction in compressed sensing assume that noise in the measurements is independent of the signal of interest. We consider the case of noise being linearly correlated with the signal and introduce a simple technique for improving compressed sensing reconstruction from such measurements. The technique is based on a linear model of the correlation of additive noise with the signal. The modification of the reconstruction algorithm based on this model is very simple and has negligible additional computational cost compared to standard reconstruction algorithms, but is not known in existing literature. The proposed technique reduces reconstruction error considerably in the case of linearly cor...
We study the notion of Compressed Sensing (CS) as put forward in [14] and related work [20, 3, 4]. T...
This report investigates methods for solving the problem of compressed sensing, in which the goal is...
In this paper, we compare and catalog the performance of various greedy quantized compressed sensing...
∗(Corresponding author, EURASIP member) Existing convex relaxation-based approaches to reconstructio...
Non-convex constraints have recently proven a valuable tool in many optimisation problems. In partic...
A fast compressed sensing reconstruction using least squares method with the signal correlation is p...
The recently introduced theory of compressed sensing enables the reconstruction of sparse or compre...
The theory of Compressed Sensing (CS) is based on reconstructing sparse signals from random linear m...
The theory of Compressed Sensing (CS) is based on reconstructing sparse signals from random linear m...
This paper studies the stability of some reconstruction algorithms for compressed sensing in terms o...
AbstractCompressed sensing is a technique to sample compressible signals below the Nyquist rate, whi...
This paper introduces a simple and very general theory of compressive sensing. In this theory, the s...
Recently, great strides in sparse approximation theory and its application have been made. Many of t...
Conference PaperCompressed sensing is a new framework for acquiring sparse signals based on the reve...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...
We study the notion of Compressed Sensing (CS) as put forward in [14] and related work [20, 3, 4]. T...
This report investigates methods for solving the problem of compressed sensing, in which the goal is...
In this paper, we compare and catalog the performance of various greedy quantized compressed sensing...
∗(Corresponding author, EURASIP member) Existing convex relaxation-based approaches to reconstructio...
Non-convex constraints have recently proven a valuable tool in many optimisation problems. In partic...
A fast compressed sensing reconstruction using least squares method with the signal correlation is p...
The recently introduced theory of compressed sensing enables the reconstruction of sparse or compre...
The theory of Compressed Sensing (CS) is based on reconstructing sparse signals from random linear m...
The theory of Compressed Sensing (CS) is based on reconstructing sparse signals from random linear m...
This paper studies the stability of some reconstruction algorithms for compressed sensing in terms o...
AbstractCompressed sensing is a technique to sample compressible signals below the Nyquist rate, whi...
This paper introduces a simple and very general theory of compressive sensing. In this theory, the s...
Recently, great strides in sparse approximation theory and its application have been made. Many of t...
Conference PaperCompressed sensing is a new framework for acquiring sparse signals based on the reve...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...
We study the notion of Compressed Sensing (CS) as put forward in [14] and related work [20, 3, 4]. T...
This report investigates methods for solving the problem of compressed sensing, in which the goal is...
In this paper, we compare and catalog the performance of various greedy quantized compressed sensing...