Conventional sensing techniques often acquire the signals entirely using a lot of resources and then just toss away a large portion of the obtained data during compression. This motivates an emerging research area called as Compressive Sensing (CS) that allows efficient signal acquisition under the sub-Nyquist rate while still able to promise reliable data recovery. Despite the benefits of compressive sensing, one critical issue in the practical applications of compressive sensing is how to reliably recover the original signals from only a few measurements in an efficient way. The Orthogonal Matching Pursuit (OMP) algorithm has shown a good capability for reliable recovery of compressed signals. Due to the simple geometric interpolation and...
Compressed Sensing (CS) has applications in many areas of signal processing such as data compress...
Reconstruction of sparse signals acquired in reduced dimensions re-quires the solution with minimum ...
Reconstruction of sparse signals acquired in reduced dimensions requires the solution with minimum ℓ...
Conventional sensing techniques often acquire the signals entirely using a lot of resources and then...
This paper reports a field-programmable gate array (FPGA) design of compressed sensing (CS) using th...
Today, a number of applications need to process large bandwidth signals. These applications frequent...
Compressive Sensing (CS) is a novel scheme, in which a signal that is sparse in a known transform do...
In this paper, we present a novel architecture based on field-programmable gate arrays (FPGAs) for t...
Compressive Sensing (CS) is a technique which allows a signal to be compressed at the same time as i...
Compressive sensing has opened up a new path to reconstruct images from a number of samples which is...
The conventional Shannon-Nyquist sampling theory sets the goal for a signal to be sampled at a rate ...
Compressive sensing(CS) is an emerging research field that has applications in signal processing, er...
Abstract Compressed sensing‐based radio frequency signal acquisition systems call for higher reconst...
The theory and applications on Compressed Sensing is a promising, quickly developing area which garn...
Orthogonal Matching Pursuit (OMP) and Basis Pursuit (BP) are two well-known recovery algorithms in c...
Compressed Sensing (CS) has applications in many areas of signal processing such as data compress...
Reconstruction of sparse signals acquired in reduced dimensions re-quires the solution with minimum ...
Reconstruction of sparse signals acquired in reduced dimensions requires the solution with minimum ℓ...
Conventional sensing techniques often acquire the signals entirely using a lot of resources and then...
This paper reports a field-programmable gate array (FPGA) design of compressed sensing (CS) using th...
Today, a number of applications need to process large bandwidth signals. These applications frequent...
Compressive Sensing (CS) is a novel scheme, in which a signal that is sparse in a known transform do...
In this paper, we present a novel architecture based on field-programmable gate arrays (FPGAs) for t...
Compressive Sensing (CS) is a technique which allows a signal to be compressed at the same time as i...
Compressive sensing has opened up a new path to reconstruct images from a number of samples which is...
The conventional Shannon-Nyquist sampling theory sets the goal for a signal to be sampled at a rate ...
Compressive sensing(CS) is an emerging research field that has applications in signal processing, er...
Abstract Compressed sensing‐based radio frequency signal acquisition systems call for higher reconst...
The theory and applications on Compressed Sensing is a promising, quickly developing area which garn...
Orthogonal Matching Pursuit (OMP) and Basis Pursuit (BP) are two well-known recovery algorithms in c...
Compressed Sensing (CS) has applications in many areas of signal processing such as data compress...
Reconstruction of sparse signals acquired in reduced dimensions re-quires the solution with minimum ...
Reconstruction of sparse signals acquired in reduced dimensions requires the solution with minimum ℓ...