Sparse signals, assuming a small number of nonzero coefficients in a transformation domain, can be reconstructed from a reduced set of measurements. In practical applications, signals are only approximately sparse. Images are a representative example of such approximately sparse signals in the two-dimensional (2D) discrete cosine transform (DCT) domain. Although a significant amount of image energy is well concentrated in a small number of transform coefficients, other nonzero coefficients appearing in the 2D-DCT domain make the images be only approximately sparse or nonsparse. In the compressive sensing theory, strict sparsity should be assumed. It means that the reconstruction algorithms will not be able to recover small valued coefficien...
We study the notion of Compressed Sensing (CS) as put forward in [14] and related work [20, 3, 4]. T...
An analysis of robust estimation theory in the light of sparse signals reconstruction is considered....
Compressive sensing theory has attracted widespread attention in recent years and sparse signal reco...
[[abstract]]Compressive sensing is a potential technology for lossy image compression. With a given ...
In compressive sensing framework it has been shown that a sparse signal can be successfully recovere...
Sparse signals can be recovered from a reduced set of samples by using compressive sensing algorithm...
In compressive sensing framework it has been shown that a sparse signal can be successfully recovere...
The theory of compressed sensing has shown that sparse sig-nals can be reconstructed exactly from re...
In this thesis, a new approach is studied for inverse modeling of ill-posed problems with spatially ...
Compressive sensing accurately reconstructs a signal that is sparse in some basis from measurements,...
It is now well understood that (1) it is possible to reconstruct sparse signals exactly from what ap...
Abstract Compressive sensing theory asserts that, under certain conditions, a high dimensional but ...
Previous compressive sensing papers have considered the example of recovering an image with sparse g...
Compressive sensing (CS) has drawn quite an amount of attention as a joint sampling and compression ...
From many fewer acquired measurements than suggested by the Nyquist sampling theory, compressive sen...
We study the notion of Compressed Sensing (CS) as put forward in [14] and related work [20, 3, 4]. T...
An analysis of robust estimation theory in the light of sparse signals reconstruction is considered....
Compressive sensing theory has attracted widespread attention in recent years and sparse signal reco...
[[abstract]]Compressive sensing is a potential technology for lossy image compression. With a given ...
In compressive sensing framework it has been shown that a sparse signal can be successfully recovere...
Sparse signals can be recovered from a reduced set of samples by using compressive sensing algorithm...
In compressive sensing framework it has been shown that a sparse signal can be successfully recovere...
The theory of compressed sensing has shown that sparse sig-nals can be reconstructed exactly from re...
In this thesis, a new approach is studied for inverse modeling of ill-posed problems with spatially ...
Compressive sensing accurately reconstructs a signal that is sparse in some basis from measurements,...
It is now well understood that (1) it is possible to reconstruct sparse signals exactly from what ap...
Abstract Compressive sensing theory asserts that, under certain conditions, a high dimensional but ...
Previous compressive sensing papers have considered the example of recovering an image with sparse g...
Compressive sensing (CS) has drawn quite an amount of attention as a joint sampling and compression ...
From many fewer acquired measurements than suggested by the Nyquist sampling theory, compressive sen...
We study the notion of Compressed Sensing (CS) as put forward in [14] and related work [20, 3, 4]. T...
An analysis of robust estimation theory in the light of sparse signals reconstruction is considered....
Compressive sensing theory has attracted widespread attention in recent years and sparse signal reco...