Sparse representations of signals for information recovery from incomplete data (CROSBI ID 377649)
Ocjenski rad | doktorska disertacija
Podaci o odgovornosti
Filipović, Marko
Kopriva, Ivica ; Drmač, Zlatko
engleski
Sparse representations of signals for information recovery from incomplete data
Mathematical modeling of inverse problems in imaging, such as inpainting, deblurring and denoising, results in ill-posed, i.e. underdetermined linearsystems. Sparseness constraintis used often to regularize these problems.That is because many classes of discrete signals (e.g. naturalimages), when expressed as vectors in a high-dimensional space, are sparse in some predefined basis or a frame(fixed or learned). An efficient approach to basis / frame learning is formulated using the independent component analysis (ICA)and biologically inspired linear model of sparse coding. In the learned basis, the inverse problem of data recovery and removal of impulsive noise is reduced to solving sparseness constrained underdetermined linear system of equations. The same situation occurs in bioinformatics data analysis when novel type of linear mixture model with a reference sample is employed for feature extraction. Extracted features can be used for disease prediction and biomarker identification.
Independent component analysis ; Source separation ; Sparsity ; Sparse component analysis ; Sparse representation ; Sparse signal reconstruction ; Underdetermined linear system ; Dictionary learning ; K-SVD ; Incomplete data ; Missing data ; Image inpainting ; Salt-and-pepper noise ; Nonlinear filtering ; Feature extraction ; Linear mixture model ; Bioinformatics
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Podaci o izdanju
126
05.04.2013.
obranjeno
Podaci o ustanovi koja je dodijelila akademski stupanj
Prirodoslovno-matematički fakultet, Zagreb
Zagreb