In this thesis we present an overview of sparse approximations of grey level images. The sparse representations are realized by classic, Matching Pursuit (MP) based, greedy selection strategies. One such technique, termed Orthogonal Matching Pursuit (OMP), is shown to be suitable for producing sparse approximations of images, if they are processed in small blocks. When the blocks are enlarged, the proposed Self Projected Matching Pursuit (SPMP) algorithm, successfully renders equivalent results to OMP. A simple coding algorithm is then proposed to store these sparse approximations. This is shown, under certain conditions, to be competitive with JPEG2000 image compression standard. An application termed image folding, which partially secures...
The two major approaches to sparse recovery are L_1-minimization and greedy methods. Recently, Neede...
Sparse coding is a widespread framework in signal and image processing. For instance, it has been em...
Image representation is important for efficient image process-ing, data compression and pattern reco...
This thesis addresses the problem associated with the approximation of signals as linear superpositi...
This thesis considers sparse approximation of still images as the basis of a lossy compression syste...
We are interested in finding sparse solutions to systems of linear equations $mathbf{A}mathbf{x} = m...
In this paper, we propose a secure Orthogonal Matching Pursuit (OMP) based pattern recognition schem...
Sparse representation of astronomical images is discussed. It is shown that a significant gain in sp...
For thousands of years, doctors had to face the daunting task of diagnosing and treating all sorts o...
Sparse coding aims to find a parsimonious representation of an example given an observation matrix o...
A property of sparse representations in relation to their capacity for information storage is discus...
A competitive scheme for economic storage of the informational content of an X-Ray image, as it can ...
This paper introduces an algorithm for sparse approximation in redundant dictionaries, called the M-...
The pure greedy algorithmsmatching pursuit (MP) and complementary MP (CompMP)are extremely computati...
An approach for effective implementation of greedy selection methodologies, to approximate an image ...
The two major approaches to sparse recovery are L_1-minimization and greedy methods. Recently, Neede...
Sparse coding is a widespread framework in signal and image processing. For instance, it has been em...
Image representation is important for efficient image process-ing, data compression and pattern reco...
This thesis addresses the problem associated with the approximation of signals as linear superpositi...
This thesis considers sparse approximation of still images as the basis of a lossy compression syste...
We are interested in finding sparse solutions to systems of linear equations $mathbf{A}mathbf{x} = m...
In this paper, we propose a secure Orthogonal Matching Pursuit (OMP) based pattern recognition schem...
Sparse representation of astronomical images is discussed. It is shown that a significant gain in sp...
For thousands of years, doctors had to face the daunting task of diagnosing and treating all sorts o...
Sparse coding aims to find a parsimonious representation of an example given an observation matrix o...
A property of sparse representations in relation to their capacity for information storage is discus...
A competitive scheme for economic storage of the informational content of an X-Ray image, as it can ...
This paper introduces an algorithm for sparse approximation in redundant dictionaries, called the M-...
The pure greedy algorithmsmatching pursuit (MP) and complementary MP (CompMP)are extremely computati...
An approach for effective implementation of greedy selection methodologies, to approximate an image ...
The two major approaches to sparse recovery are L_1-minimization and greedy methods. Recently, Neede...
Sparse coding is a widespread framework in signal and image processing. For instance, it has been em...
Image representation is important for efficient image process-ing, data compression and pattern reco...