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Preference learning evaluation
paperAuthors
Pol del Aguila Pla·Sebastian Neumayer·Michael Unser
Credibility Rating
3/5
Good(3)Good quality. Reputable source with community review or editorial standards, but less rigorous than peer-reviewed venues.
Rating inherited from publication venue: arXiv
Data Status
Not fetched
Abstract
Robustness and stability of image-reconstruction algorithms have recently come under scrutiny. Their importance to medical imaging cannot be overstated. We review the known results for the topical variational regularization strategies ($\ell_2$ and $\ell_1$ regularization) and present novel stability results for $\ell_p$-regularized linear inverse problems for $p\in(1,\infty)$. Our results guarantee Lipschitz continuity for small $p$ and Hölder continuity for larger $p$. They generalize well to the $L_p(Ω)$ function spaces.
Cited by 1 page
| Page | Type | Quality |
|---|---|---|
| AI Evaluation | Approach | 72.0 |
Resource ID:
ad95bec86c548340 | Stable ID: MmFmM2VkNT