Signal expansions using frames may be considered as generalizations of signal representations based on transforms and filter banks. Frames for sparse signal representations may be designed using an iterative method with two main steps: (1) Frame vector selection and expansion coefficient determination for signals in a training set, – selected to be representative of the signals for which compact representations are desired, using the frame designed in the previous iteration. (2) Update of frame vectors with the objective of improving the representation of step (1). In this thesis we solve step (2) of the general frame design problem using the compact notation of linear algebra. This makes the solution both conceptually and computationally ...
In this thesis a new type of representation for medium level vision operations is explored. We focus...
Block sparsity was employed recently in vector/matrix based sparse representations to improve their ...
In this paper, application of sparse representation (factorization) of signals over an overcomplete ...
Signal expansions using frames may be considered as generalizations of sig-nal representations based...
The demand for efficient communication and data storage is continuously increasing and signal repres...
The demand for efficient communication and data storage is continuously increasing and signal repres...
Konferanse fra NORSIG 2002, Tromsø / Trondheim, Norway, Oct. 4-7, 2002In this paper a new method for...
Sparse signal processing is a mathematical theory that predicts the possibility of reconstructing th...
Besides basis expansions, frames representations play a key role in signal processing. We thus consi...
Many emerging applications involve sparse signals, and their processing is a subject of active resea...
It is well known that natural images admit sparse representations by redundant dictionaries of basis...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
Techniques from sparse signal representation are beginning to see significant impact in computer vis...
Signal processing has been at the forefront of modern information technology as the need for storing...
In this thesis a new type of representation for medium level vision operations is explored. We focus...
Block sparsity was employed recently in vector/matrix based sparse representations to improve their ...
In this paper, application of sparse representation (factorization) of signals over an overcomplete ...
Signal expansions using frames may be considered as generalizations of sig-nal representations based...
The demand for efficient communication and data storage is continuously increasing and signal repres...
The demand for efficient communication and data storage is continuously increasing and signal repres...
Konferanse fra NORSIG 2002, Tromsø / Trondheim, Norway, Oct. 4-7, 2002In this paper a new method for...
Sparse signal processing is a mathematical theory that predicts the possibility of reconstructing th...
Besides basis expansions, frames representations play a key role in signal processing. We thus consi...
Many emerging applications involve sparse signals, and their processing is a subject of active resea...
It is well known that natural images admit sparse representations by redundant dictionaries of basis...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
Techniques from sparse signal representation are beginning to see significant impact in computer vis...
Signal processing has been at the forefront of modern information technology as the need for storing...
In this thesis a new type of representation for medium level vision operations is explored. We focus...
Block sparsity was employed recently in vector/matrix based sparse representations to improve their ...
In this paper, application of sparse representation (factorization) of signals over an overcomplete ...