Regularization by Inexact Krylov Methods with Applications to Blind Deblurring
DOI10.1137/21M1402066zbMath1483.65060arXiv2105.07378OpenAlexW3183282093MaRDI QIDQ5014161
Silvia Gazzola, Malena Sabaté Landman
Publication date: 1 December 2021
Published in: SIAM Journal on Matrix Analysis and Applications (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/2105.07378
Tikhonov regularizationimage deblurringblind deblurringvariable projection methodinexact Krylov methodsseparable nonlinear inverse problems
Numerical solutions to overdetermined systems, pseudoinverses (65F20) Ill-posedness and regularization problems in numerical linear algebra (65F22) Numerical optimization and variational techniques (65K10) Numerical aspects of computer graphics, image analysis, and computational geometry (65D18)
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