Fast, Accurate and Lightweight Super-Resolution with Neural Architecture Search
About
Deep convolutional neural networks demonstrate impressive results in the super-resolution domain. A series of studies concentrate on improving peak signal noise ratio (PSNR) by using much deeper layers, which are not friendly to constrained resources. Pursuing a trade-off between the restoration capacity and the simplicity of models is still non-trivial. Recent contributions are struggling to manually maximize this balance, while our work achieves the same goal automatically with neural architecture search. Specifically, we handle super-resolution with a multi-objective approach. We also propose an elastic search tactic at both micro and macro level, based on a hybrid controller that profits from evolutionary computation and reinforcement learning. Quantitative experiments help us to draw a conclusion that our generated models dominate most of the state-of-the-art methods with respect to the individual FLOPS.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Super-Resolution | Set5 | PSNR37.82 | 751 | |
| Super-Resolution | Urban100 | PSNR31.93 | 603 | |
| Super-Resolution | Set14 | PSNR33.55 | 586 | |
| Image Super-resolution | Set5 (test) | PSNR37.82 | 544 | |
| Image Super-resolution | Set5 | PSNR37.82 | 507 | |
| Single Image Super-Resolution | Urban100 | PSNR31.93 | 500 | |
| Super-Resolution | B100 | PSNR32.12 | 418 | |
| Single Image Super-Resolution | Set5 | PSNR37.82 | 352 | |
| Image Super-resolution | Set14 | PSNR33.55 | 329 | |
| Image Super-resolution | Set14 (test) | PSNR33.55 | 292 |