Manifold Learning for Super Resolution

Publikation: Buch/Bericht/Sammelwerk/KonferenzbandMonografieForschungPeer-Review

Autoren

  • Eduardo Pérez Pellitero
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Details

OriginalspracheDeutsch
ErscheinungsortDüsseldorf
Seitenumfang114
Auflage1
ISBN (elektronisch)9783186859105
PublikationsstatusVeröffentlicht - 2018

Publikationsreihe

NameInformatik/ Kommunikation
Band859
ISSN (Print)0178-9627

Abstract

The development pace of high-resolution displays has been so fast in the recent years that many images acquired with low-end capture devices are already outdated or will be shortly in time. Super Resolution is central to match the resolution of the already existing image content to that of current and future high resolution displays and applications. This dissertation is focused on learning how to upscale images from the statistics of natural images. We build on a sparsity model that uses learned coupled low- and high-resolution dictionaries in order to upscale images, and move towards a more efficient L2 regularization scheme. Instead of using a patch-todictionary decomposition, we propose a fully collaborative neighbor embedding approach. We study the positive impact of antipodally invariant metrics for linear regression frameworks, and extend them by also taking into consideration the dihedral group of transforms (i.e. rotations and reflections), as a group of symmetries within the

Schlagwörter

    Super Resolution, Manifold Learning, Inverse Problems, Computer Vision Image Processing, Machine Learning, Upscaling

Zitieren

Manifold Learning for Super Resolution. / Pérez Pellitero, Eduardo.
1 Aufl. Düsseldorf, 2018. 114 S. (Informatik/ Kommunikation; Band 859).

Publikation: Buch/Bericht/Sammelwerk/KonferenzbandMonografieForschungPeer-Review

Pérez Pellitero, E 2018, Manifold Learning for Super Resolution. Informatik/ Kommunikation, Bd. 859, 1 Aufl., Düsseldorf. https://doi.org/10.51202/9783186859105
Pérez Pellitero, E. (2018). Manifold Learning for Super Resolution. (1 Aufl.) (Informatik/ Kommunikation; Band 859). https://doi.org/10.51202/9783186859105
Pérez Pellitero E. Manifold Learning for Super Resolution. 1 Aufl. Düsseldorf, 2018. 114 S. (Informatik/ Kommunikation). doi: 10.51202/9783186859105
Pérez Pellitero, Eduardo. / Manifold Learning for Super Resolution. 1 Aufl. Düsseldorf, 2018. 114 S. (Informatik/ Kommunikation).
Download
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