In the Cognitive Compressive Sensing (CCS) problem, a Cognitive Receiver (CR) seeks to optimize the reward obtained by sensing an underlying $N$ dimensional random vector, by collecting at most $K$ arbitrary projections of it. The $N$ components of the latent vector represent sub-channels states, that change dynamically from "busy" to "idle" and vice versa, as a Markov chain that is biased towards producing sparse vectors. To identify the optimal strategy we formulate the Multi-Armed Bandit Compressive Sensing (MAB-CS) problem, generalizing the popular Cognitive Spectrum Sensing model, in which the CR can sense $K$ out of the $N$ sub-channels, as well as the typical static setti...
Compressive Sensing (CS) ensures the reconstruction of a sparse signal from a set of linear measure...
The data of interest are assumed to be represented as N-dimensional real vectors, and these vectors ...
In this paper the problem of Compressive Sensing (CS) is addressed. The focus is on estimating a pro...
In the Cognitive Compressive Sensing (CCS) problem, a Cognitive Receiver (CR) seeks to opti...
Abstract—In the Cognitive Compressive Sensing (CCS) prob-lem, a Cognitive Receiver (CR) seeks to opt...
Description: The modern field of Compressed Sensing has revealed that it is possible to re-construct...
•Compressive sensing (CS) is a sampling strategy for signals that are sparse in an arbitrary orthono...
In this work we investigate the sample complexity of support recovery in sparse signal processing mo...
Compressive sampling (CS), also called compressed sensing, entails making observations of an unknown...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
The novel paradigm of compressive sampling/sensing (CS), which aims to achieve simultaneous acquisit...
Compressed sensing (CS) is an emerging field that has attracted considerable research interest over ...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
Compressive sampling (CS), or compressive sensing, has the ability for reconstructing a sparse signa...
An effective complex multitask Bayesian compressive sens-ing (CMT-BCS) algorithm is proposed to reco...
Compressive Sensing (CS) ensures the reconstruction of a sparse signal from a set of linear measure...
The data of interest are assumed to be represented as N-dimensional real vectors, and these vectors ...
In this paper the problem of Compressive Sensing (CS) is addressed. The focus is on estimating a pro...
In the Cognitive Compressive Sensing (CCS) problem, a Cognitive Receiver (CR) seeks to opti...
Abstract—In the Cognitive Compressive Sensing (CCS) prob-lem, a Cognitive Receiver (CR) seeks to opt...
Description: The modern field of Compressed Sensing has revealed that it is possible to re-construct...
•Compressive sensing (CS) is a sampling strategy for signals that are sparse in an arbitrary orthono...
In this work we investigate the sample complexity of support recovery in sparse signal processing mo...
Compressive sampling (CS), also called compressed sensing, entails making observations of an unknown...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
The novel paradigm of compressive sampling/sensing (CS), which aims to achieve simultaneous acquisit...
Compressed sensing (CS) is an emerging field that has attracted considerable research interest over ...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
Compressive sampling (CS), or compressive sensing, has the ability for reconstructing a sparse signa...
An effective complex multitask Bayesian compressive sens-ing (CMT-BCS) algorithm is proposed to reco...
Compressive Sensing (CS) ensures the reconstruction of a sparse signal from a set of linear measure...
The data of interest are assumed to be represented as N-dimensional real vectors, and these vectors ...
In this paper the problem of Compressive Sensing (CS) is addressed. The focus is on estimating a pro...