Compressed Sensing (CS) is an established way to perform efficient dimensionality reduction during a signal’s acquisition process. However, the common transform bases used in CS to represent a signal often lead to a compressible representation that is not optimal in terms of compactness. In this paper we present a novel dictionary learning algorithm designed to work with CS data. Following our approach, dictionaries learned directly from the signal’s random projections are specifically suited to the signal class of interest, resulting in very sparse representations. Moreover, since the proposed method lays its foundation in a Bayesian dictionary learning algorithm, no prior information such as the signals’ sparsity is needed because it is i...
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient ap...
Assuming that a set of source signals is sparsely representable in a given dictionary, we show how t...
Signal and image processing have seen an explosion of interest in the last few years in a new form o...
Recent work in signal processing in general and image processing in particular deals with sparse rep...
The main contribution of this thesis is the introduction of new techniques which allow to perform si...
The works presented in this thesis focus on sparsity in the real world signals, its applications in ...
Abstract—Sparse Bayesian learning (SBL) is a popular ap-proach to sparse signal recovery in compress...
Appling compressive sensing (CS),which theoretically guarantees that signal sampling and signal comp...
Compressed sensing takes advantage that most of the natural signals can be sparsely represented via ...
Abstract—Nonparametric Bayesian methods are considered for recovery of imagery based upon compressiv...
Compressive Sensing (CS) allows to acquire signals at sampling rates significantly lower than the Ny...
Compressive sensing (CS) is a new technology which allows the acquisition of signals directly in com...
The field of Compressive Sensing (CS) has provided algorithms to reconstruct signals from a much low...
In this paper, we investigate dictionary learning (DL) from sparsely corrupted or compressed signals...
Super Resolution based on Compressed Sensing (CS) considers low resolution (LR) image patch as the c...
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient ap...
Assuming that a set of source signals is sparsely representable in a given dictionary, we show how t...
Signal and image processing have seen an explosion of interest in the last few years in a new form o...
Recent work in signal processing in general and image processing in particular deals with sparse rep...
The main contribution of this thesis is the introduction of new techniques which allow to perform si...
The works presented in this thesis focus on sparsity in the real world signals, its applications in ...
Abstract—Sparse Bayesian learning (SBL) is a popular ap-proach to sparse signal recovery in compress...
Appling compressive sensing (CS),which theoretically guarantees that signal sampling and signal comp...
Compressed sensing takes advantage that most of the natural signals can be sparsely represented via ...
Abstract—Nonparametric Bayesian methods are considered for recovery of imagery based upon compressiv...
Compressive Sensing (CS) allows to acquire signals at sampling rates significantly lower than the Ny...
Compressive sensing (CS) is a new technology which allows the acquisition of signals directly in com...
The field of Compressive Sensing (CS) has provided algorithms to reconstruct signals from a much low...
In this paper, we investigate dictionary learning (DL) from sparsely corrupted or compressed signals...
Super Resolution based on Compressed Sensing (CS) considers low resolution (LR) image patch as the c...
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient ap...
Assuming that a set of source signals is sparsely representable in a given dictionary, we show how t...
Signal and image processing have seen an explosion of interest in the last few years in a new form o...