Deep Back-Projection Networks For Super-Resolution
About
The feed-forward architectures of recently proposed deep super-resolution networks learn representations of low-resolution inputs, and the non-linear mapping from those to high-resolution output. However, this approach does not fully address the mutual dependencies of low- and high-resolution images. We propose Deep Back-Projection Networks (DBPN), that exploit iterative up- and down-sampling layers, providing an error feedback mechanism for projection errors at each stage. We construct mutually-connected up- and down-sampling stages each of which represents different types of image degradation and high-resolution components. We show that extending this idea to allow concatenation of features across up- and down-sampling stages (Dense DBPN) allows us to reconstruct further improve super-resolution, yielding superior results and in particular establishing new state of the art results for large scaling factors such as 8x across multiple data sets.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Super-Resolution | Set5 | PSNR38.09 | 751 | |
| Image Super-resolution | Manga109 | PSNR39.32 | 656 | |
| Super-Resolution | Urban100 | PSNR33.02 | 603 | |
| Super-Resolution | Set14 | PSNR33.85 | 586 | |
| Image Super-resolution | Set5 (test) | PSNR38.09 | 544 | |
| Image Super-resolution | Set5 | PSNR38.09 | 507 | |
| Single Image Super-Resolution | Urban100 | PSNR32.55 | 500 | |
| Super-Resolution | B100 | PSNR32.27 | 418 | |
| Super-Resolution | B100 (test) | PSNR32.27 | 363 | |
| Single Image Super-Resolution | Set5 | PSNR38.09 | 352 |