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Adjoint method in PDE-based image compression

Belhachmi, Zakaria and Jacumin, Thomas LU (2025) In Asymptotic Analysis 143(3). p.927-950
Abstract

We consider a shape optimization based method for finding the best interpolation data in the compression of images with noise. The aim is to reconstruct missing regions by means of minimizing a data fitting term in an Lp-norm, for 1 ⩽ p < + ∞, between original images and their reconstructed counterparts using linear diffusion PDE-based inpainting. Reformulating the problem as a constrained optimization over sets (shapes), we derive the topological asymptotic expansion of the considered shape functionals with respect to the insertion of small ball (a single pixel) using the adjoint method. Based on the achieved distributed topological shape derivatives, we propose a numerical approach to determine the optimal set and... (More)

We consider a shape optimization based method for finding the best interpolation data in the compression of images with noise. The aim is to reconstruct missing regions by means of minimizing a data fitting term in an Lp-norm, for 1 ⩽ p < + ∞, between original images and their reconstructed counterparts using linear diffusion PDE-based inpainting. Reformulating the problem as a constrained optimization over sets (shapes), we derive the topological asymptotic expansion of the considered shape functionals with respect to the insertion of small ball (a single pixel) using the adjoint method. Based on the achieved distributed topological shape derivatives, we propose a numerical approach to determine the optimal set and present numerical experiments showing the efficiency of our method. Numerical computations are presented that confirm the usefulness of our theoretical findings for PDE-based image compression.

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author
and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
adjoint method, Image compression, image denoising, image interpolation, inpainting, PDEs, shape optimization
in
Asymptotic Analysis
volume
143
issue
3
pages
24 pages
publisher
I O S Press
external identifiers
  • scopus:105011622565
ISSN
0921-7134
DOI
10.3233/ASY-241944
language
English
LU publication?
yes
id
942bbe3e-077b-410d-b4f4-63169c8c16b9
date added to LUP
2025-12-12 12:12:53
date last changed
2025-12-12 12:13:27
@article{942bbe3e-077b-410d-b4f4-63169c8c16b9,
  abstract     = {{<p>We consider a shape optimization based method for finding the best interpolation data in the compression of images with noise. The aim is to reconstruct missing regions by means of minimizing a data fitting term in an L<sup>p</sup>-norm, for 1 ⩽ p &lt; + ∞, between original images and their reconstructed counterparts using linear diffusion PDE-based inpainting. Reformulating the problem as a constrained optimization over sets (shapes), we derive the topological asymptotic expansion of the considered shape functionals with respect to the insertion of small ball (a single pixel) using the adjoint method. Based on the achieved distributed topological shape derivatives, we propose a numerical approach to determine the optimal set and present numerical experiments showing the efficiency of our method. Numerical computations are presented that confirm the usefulness of our theoretical findings for PDE-based image compression.</p>}},
  author       = {{Belhachmi, Zakaria and Jacumin, Thomas}},
  issn         = {{0921-7134}},
  keywords     = {{adjoint method; Image compression; image denoising; image interpolation; inpainting; PDEs; shape optimization}},
  language     = {{eng}},
  number       = {{3}},
  pages        = {{927--950}},
  publisher    = {{I O S Press}},
  series       = {{Asymptotic Analysis}},
  title        = {{Adjoint method in PDE-based image compression}},
  url          = {{http://dx.doi.org/10.3233/ASY-241944}},
  doi          = {{10.3233/ASY-241944}},
  volume       = {{143}},
  year         = {{2025}},
}