Dyadic Partition-Based Training Schemes for TV/TGV Denoising

Elisa Davoli, Rita Ferreira, Irene Fonseca, José A. Iglesias*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

1 Citation (Scopus)
13 Downloads (Pure)

Abstract

Due to their ability to handle discontinuous images while having a well-understood behavior, regularizations with total variation (TV) and total generalized variation (TGV) are some of the best-known methods in image denoising. However, like other variational models including a fidelity term, they crucially depend on the choice of their tuning parameters. A remedy is to choose these automatically through multilevel approaches, for example by optimizing performance on noisy/clean image pairs. In this work, we consider such methods with space-dependent parameters which are piecewise constant on dyadic grids, with the grid itself being part of the minimization. We prove existence of minimizers for fixed discontinuous parameters under mild assumptions on the data, which lead to existence of finite optimal partitions. We further establish that these assumptions are equivalent to the commonly used box constraints on the parameters. On the numerical side, we consider a simple subdivision scheme for optimal partitions built on top of any other bilevel optimization method for scalar parameters, and demonstrate its improved performance on some representative test images when compared with constant optimized parameters.

Original languageEnglish
Pages (from-to)1070-1108
Number of pages39
JournalJournal of Mathematical Imaging and Vision
Volume66
Issue number6
DOIs
Publication statusPublished - Dec 2024

Keywords

  • UT-Hybrid-D
  • 49J10
  • 68U10
  • 94A08
  • Bilevel optimization
  • Box constraint
  • Discontinuous weights
  • Spatially-dependent regularization parameters
  • Total generalized variation
  • Total variation
  • 26B30

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