A structural low rank regularization method for single image super-resolution

Jialin Peng*, Benny Y. C. Hon, Dexing Kong

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

Example-learning-based algorithms such as those based on sparse coding or neighbor embedding have been popular for single image super-resolution in recent years. However, affected by several critical factors on the training data and example representation, their reconstructions are usually plagued by kinds of artifacts. The removing of these artifacts is one of the major tasks for these methods. Unlike most existing methods that employ more complicated training methods, in this paper we would like to recover a clear reconstruction by fusing several “dirty” coarse reconstructions which are outputs of one or several simple training methods with small training set. One underlying key observation is that although coarse reconstructions are corrupted by different artifacts, they refer to the same high-resolution image. This global structure information is captured by an image structure-based low rank regularization method. The advantage of our method is that it can remove not only small noises but also gross artifacts. Except sparsity and randomness of the large artifacts, no other knowledge about them is required. Experimental results show that the proposed method can not only dramatically improve coarse reconstructions but also achieve competitive results.
Original languageEnglish
Pages (from-to)991-1005
JournalMachine Vision and Applications
Volume26
Issue number7-8
Online published19 Sept 2015
DOIs
Publication statusPublished - Nov 2015

Research Keywords

  • Fusion
  • Low rank
  • Regularization
  • Super-resolution

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