AbstractCompressed sensing is a novel technique to acquire sparse signals with few measurements. Normally, compressed sensing uses random projections as measurements. Here we design deterministic measurements and an algorithm to accomplish signal recovery with computational efficiency. A measurement matrix is designed with chirp sequences forming the columns. Chirps are used since an efficient method using FFTs can recover the parameters of a small superposition. We show that this type of matrix is valid as compressed sensing measurements. This is done by bounding the eigenvalues of sub-matrices, as well as an empirical comparison with random projections. Further, by implementing our algorithm, simulations show successful recovery of signal...
This paper proposes a best basis extension of compressed sensing recovery. Instead of regularizing t...
Abstract Compressed sensing was introduced some ten years ago as an effective way of acquiring signa...
Abstract. We give the first computationally tractable and almost optimal solution to the problem of ...
AbstractCompressed sensing is a novel technique to acquire sparse signals with few measurements. Nor...
Compressed sensing is nothing but a signal processing technique which compresses the signal and reco...
Compressive sensing achieves effective dimensionality reduc-tion of signals, under a sparsity constr...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
We propose a new algorithm to recover a sparse signal from a system of linear measurements. By proje...
Compressive sensing is a technique that uses the sparseness of signals in some dimension, to process...
Abstract. Inspired by significant real-life applications, in particular, sparse phase retrieval and ...
Compressed Sensing (CS) is a new area of mathematics and signal processing. The conventional CS prob...
Compressed Sensing concerns a new class of linear data acquisition protocols that are more efficient...
Compressed sensing (CS) is a signal acquisition paradigm to simultaneously acquire and reduce dimen...
The recently introduced theory of Compressive Sensing (CS) enables a new method for signal recovery ...
We use deterministic and probabilistic methods to analyze the performance of compressed sensing matr...
This paper proposes a best basis extension of compressed sensing recovery. Instead of regularizing t...
Abstract Compressed sensing was introduced some ten years ago as an effective way of acquiring signa...
Abstract. We give the first computationally tractable and almost optimal solution to the problem of ...
AbstractCompressed sensing is a novel technique to acquire sparse signals with few measurements. Nor...
Compressed sensing is nothing but a signal processing technique which compresses the signal and reco...
Compressive sensing achieves effective dimensionality reduc-tion of signals, under a sparsity constr...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
We propose a new algorithm to recover a sparse signal from a system of linear measurements. By proje...
Compressive sensing is a technique that uses the sparseness of signals in some dimension, to process...
Abstract. Inspired by significant real-life applications, in particular, sparse phase retrieval and ...
Compressed Sensing (CS) is a new area of mathematics and signal processing. The conventional CS prob...
Compressed Sensing concerns a new class of linear data acquisition protocols that are more efficient...
Compressed sensing (CS) is a signal acquisition paradigm to simultaneously acquire and reduce dimen...
The recently introduced theory of Compressive Sensing (CS) enables a new method for signal recovery ...
We use deterministic and probabilistic methods to analyze the performance of compressed sensing matr...
This paper proposes a best basis extension of compressed sensing recovery. Instead of regularizing t...
Abstract Compressed sensing was introduced some ten years ago as an effective way of acquiring signa...
Abstract. We give the first computationally tractable and almost optimal solution to the problem of ...