AbstractThe compressed sensing problem for redundant dictionaries aims to use a small number of linear measurements to represent signals that are sparse with respect to a general dictionary. Under an appropriate restricted isometry property for a dictionary, reconstruction methods based on ℓq minimization are known to provide an effective signal recovery tool in this setting. This note explores conditions under which ℓq minimization is robust to measurement noise, and stable with respect to perturbations of the sensing matrix A and the dictionary D. We propose a new condition, the D null space property, which guarantees that ℓq minimization produces solutions that are robust and stable against perturbations of A and D. We also show that ℓq ...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...
Abstract. Compressed Sensing (CS) seeks to recover an unknown vector with N entries by making far fe...
In this paper, we investigate dictionary learning (DL) from sparsely corrupted or compressed signals...
AbstractThe compressed sensing problem for redundant dictionaries aims to use a small number of line...
AbstractThis article presents novel results concerning the recovery of signals from undersampled dat...
This article presents novel results concerning the recovery of signals from undersampled data in the...
This article presents novel results concerning the recovery of signals from undersampled data in the...
Compressed Sensing concerns a new class of linear data acquisition protocols that are more efficient...
Compressed sensing takes advantage that most of the natural signals can be sparsely represented via ...
Consider the problem of recovering an unknown signal from undersampled measurements, given the knowl...
Compressive sensing (CS) has recently emerged as a powerful framework for acquiring sparse signals. ...
Abstract—This paper addresses the problem of simultaneous signal recovery and dictionary learning ba...
Compressed sensing is the ability to retrieve a sparse vector from a set of linear measurements. The...
The sparse signal recovery in standard compressed sensing (CS) requires that the sensing matrix is e...
Abstract Compressed sensing was introduced some ten years ago as an effective way of acquiring signa...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...
Abstract. Compressed Sensing (CS) seeks to recover an unknown vector with N entries by making far fe...
In this paper, we investigate dictionary learning (DL) from sparsely corrupted or compressed signals...
AbstractThe compressed sensing problem for redundant dictionaries aims to use a small number of line...
AbstractThis article presents novel results concerning the recovery of signals from undersampled dat...
This article presents novel results concerning the recovery of signals from undersampled data in the...
This article presents novel results concerning the recovery of signals from undersampled data in the...
Compressed Sensing concerns a new class of linear data acquisition protocols that are more efficient...
Compressed sensing takes advantage that most of the natural signals can be sparsely represented via ...
Consider the problem of recovering an unknown signal from undersampled measurements, given the knowl...
Compressive sensing (CS) has recently emerged as a powerful framework for acquiring sparse signals. ...
Abstract—This paper addresses the problem of simultaneous signal recovery and dictionary learning ba...
Compressed sensing is the ability to retrieve a sparse vector from a set of linear measurements. The...
The sparse signal recovery in standard compressed sensing (CS) requires that the sensing matrix is e...
Abstract Compressed sensing was introduced some ten years ago as an effective way of acquiring signa...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...
Abstract. Compressed Sensing (CS) seeks to recover an unknown vector with N entries by making far fe...
In this paper, we investigate dictionary learning (DL) from sparsely corrupted or compressed signals...