Image Super-Resolution with Cross-Scale Non-Local Attention and Exhaustive Self-Exemplars Mining
About
Deep convolution-based single image super-resolution (SISR) networks embrace the benefits of learning from large-scale external image resources for local recovery, yet most existing works have ignored the long-range feature-wise similarities in natural images. Some recent works have successfully leveraged this intrinsic feature correlation by exploring non-local attention modules. However, none of the current deep models have studied another inherent property of images: cross-scale feature correlation. In this paper, we propose the first Cross-Scale Non-Local (CS-NL) attention module with integration into a recurrent neural network. By combining the new CS-NL prior with local and in-scale non-local priors in a powerful recurrent fusion cell, we can find more cross-scale feature correlations within a single low-resolution (LR) image. The performance of SISR is significantly improved by exhaustively integrating all possible priors. Extensive experiments demonstrate the effectiveness of the proposed CS-NL module by setting new state-of-the-arts on multiple SISR benchmarks.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Super-resolution | Manga109 | PSNR39.37 | 656 | |
| Image Super-resolution | Set5 (test) | PSNR38.28 | 544 | |
| Image Super-resolution | Set5 | PSNR38.28 | 507 | |
| Single Image Super-Resolution | Urban100 | PSNR33.25 | 500 | |
| Super-Resolution | B100 | PSNR32.4 | 418 | |
| Image Super-resolution | Set14 | PSNR34.12 | 329 | |
| Image Super-resolution | Set14 (test) | PSNR34.12 | 292 | |
| Single Image Super-Resolution | Urban100 (test) | PSNR33.25 | 289 | |
| Image Super-resolution | Manga109 (test) | PSNR39.37 | 233 | |
| Video Super-Resolution | Vid4 (test) | PSNR24.09 | 173 |