Learning Parametric Sparse Models for Image Super-Resolution

Abstract

Learning accurate prior knowledge of natural images is of great importance for single image super-resolution (SR). Existing SR methods either learn the prior from the low/high-resolution patch pairs or estimate the prior models from the input low-resolution (LR) image. Specifically, high-frequency details are learned in the former methods. Though effective, they are heuristic and have limitations in dealing with blurred LR images; while the latter suffers from the limitations of frequency aliasing. In this paper, we propose to combine those two lines of ideas for image super-resolution. More specifically, the parametric sparse prior of the desirable high-resolution (HR) image patches are learned from both the input low-resolution (LR) image and a training image dataset. With the learned sparse priors, the sparse codes and thus the HR image patches can be accurately recovered by solving a sparse coding problem. Experimental results show that the proposed SR method outperforms existing state-of-the-art methods in terms of both subjective and objective image qualities.

Cite

Text

Li et al. "Learning Parametric Sparse Models for Image Super-Resolution." Neural Information Processing Systems, 2016.

Markdown

[Li et al. "Learning Parametric Sparse Models for Image Super-Resolution." Neural Information Processing Systems, 2016.](https://mlanthology.org/neurips/2016/li2016neurips-learning/)

BibTeX

@inproceedings{li2016neurips-learning,
  title     = {{Learning Parametric Sparse Models for Image Super-Resolution}},
  author    = {Li, Yongbo and Dong, Weisheng and Xie, Xuemei and Shi, Guangming and Li, Xin and Xu, Donglai},
  booktitle = {Neural Information Processing Systems},
  year      = {2016},
  pages     = {4664-4672},
  url       = {https://mlanthology.org/neurips/2016/li2016neurips-learning/}
}