Repository logo

Infoscience

  • English
  • French
Log In
Logo EPFL, École polytechnique fédérale de Lausanne

Infoscience

  • English
  • French
Log In
  1. Home
  2. Academic and Research Output
  3. Journal articles
  4. Learning Weakly Convex Regularizers for Convergent Image-Reconstruction Algorithms
 
research article

Learning Weakly Convex Regularizers for Convergent Image-Reconstruction Algorithms

Goujon, Alexis  
•
Neumayer, Sebastian Jonas  
•
Unser, Michael  
January 1, 2024
Siam Journal On Imaging Sciences

We propose to learn non-convex regularizers with a prescribed upper bound on their weak-convexity modulus. Such regularizers give rise to variational denoisers that minimize a convex energy. They rely on few parameters (less than 15,000) and offer a signal-processing interpretation as they mimic handcrafted sparsity-promoting regularizers. Through numerical experiments, we show that such denoisers outperform convex-regularization methods as well as the popular BM3D denoiser. Additionally, the learned regularizer can be deployed to solve inverse problems with iterative schemes that provably converge. For both CT and MRI reconstruction, the regularizer generalizes well and offers an excellent tradeoff between performance, number of parameters, guarantees, and interpretability when compared to other data-driven approaches.

  • Files
  • Details
  • Metrics
Loading...
Thumbnail Image
Name

goujon2403.pdf

Type

Publisher

Version

Published version

Access type

openaccess

License Condition

CC BY-NC-ND

Size

1.46 MB

Format

Adobe PDF

Checksum (MD5)

ce3b7d0f77dc3172f8fc45c877b3ab2e

Logo EPFL, École polytechnique fédérale de Lausanne
  • Contact
  • infoscience@epfl.ch

  • Follow us on Facebook
  • Follow us on Instagram
  • Follow us on LinkedIn
  • Follow us on X
  • Follow us on Youtube
AccessibilityLegal noticePrivacy policyCookie settingsEnd User AgreementGet helpFeedback

Infoscience is a service managed and provided by the Library and IT Services of EPFL. © EPFL, tous droits réservés