Publication | Closed Access
Fast, robust total variation-based reconstruction of noisy, blurred images
602
Citations
27
References
1998
Year
Numerical AnalysisImage ReconstructionEngineeringDeblurringImage AnalysisTikhonov RegularizationSignal ReconstructionRegularization (Mathematics)Approximation TheoryHealth SciencesMachine VisionReconstruction TechniqueMedical ImagingInverse ProblemsMedical Image ComputingComputer VisionConjugate Gradient IterationBiomedical ImagingLarge Linear SystemsImage DenoisingImage Restoration
Tikhonov regularization with a modified total variation regularization functional is used to recover an image from noisy, blurred data. This approach is appropriate for image processing in that it does not place a priori smoothness conditions on the solution image. An efficient algorithm is presented for the discretized problem that combines a fixed point iteration to handle nonlinearity with a new, effective preconditioned conjugate gradient iteration for large linear systems. Reconstructions, convergence results, and a direct comparison with a fast linear solver are presented for a satellite image reconstruction application.
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