Seven ways to improve example-based single image super resolution
About
In this paper we present seven techniques that everybody should know to improve example-based single image super resolution (SR): 1) augmentation of data, 2) use of large dictionaries with efficient search structures, 3) cascading, 4) image self-similarities, 5) back projection refinement, 6) enhanced prediction by consistency check, and 7) context reasoning. We validate our seven techniques on standard SR benchmarks (i.e. Set5, Set14, B100) and methods (i.e. A+, SRCNN, ANR, Zeyde, Yang) and achieve substantial improvements.The techniques are widely applicable and require no changes or only minor adjustments of the SR methods. Moreover, our Improved A+ (IA) method sets new state-of-the-art results outperforming A+ by up to 0.9dB on average PSNR whilst maintaining a low time complexity.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Super-Resolution | Set5 x2 | PSNR37.39 | 134 | |
| Super-Resolution | Set5 x3 | PSNR33.46 | 108 | |
| Super-Resolution | Set5 x4 | PSNR31.1 | 68 | |
| Super-Resolution | Set14 x3 | PSNR29.69 | 64 | |
| Super-Resolution | B100 x2 | PSNR31.33 | 31 | |
| Super-Resolution | Set14 x2 | PSNR32.87 | 29 | |
| Super-Resolution | Set14 x4 | PSNR27.88 | 29 | |
| Super-Resolution | B100 x3 | PSNR28.58 | 26 | |
| Super-Resolution | B100 x4 | PSNR27.16 | 26 |