Andreas Floros, Seyed-Mohsen Moosavi-Dezfooli, Pier Luigi Dragotti
We consider the problem of trustworthy image restoration, taking the form of a constrained optimization over the prior density. To this end, we develop generative models for the task of image super-resolution that respect the degradation process and that can be made asymptotically consistent with the low-resolution measurements, outperforming existing methods by a large margin in that respect.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Super-Resolution | CelebA-HQ 128x128 | Consistency | 0.31 | TSRGP |
| Super-Resolution | CelebA-HQ 128x128 | PSNR | 24.09 | TSRGP |
| Super-Resolution | CelebA-HQ 128x128 | SSIM | 0.71 | TSRGP |
| Image Super-Resolution | CelebA-HQ 128x128 | Consistency | 0.31 | TSRGP |
| Image Super-Resolution | CelebA-HQ 128x128 | PSNR | 24.09 | TSRGP |
| Image Super-Resolution | CelebA-HQ 128x128 | SSIM | 0.71 | TSRGP |
| 3D Object Super-Resolution | CelebA-HQ 128x128 | Consistency | 0.31 | TSRGP |
| 3D Object Super-Resolution | CelebA-HQ 128x128 | PSNR | 24.09 | TSRGP |
| 3D Object Super-Resolution | CelebA-HQ 128x128 | SSIM | 0.71 | TSRGP |
| 16k | CelebA-HQ 128x128 | Consistency | 0.31 | TSRGP |
| 16k | CelebA-HQ 128x128 | PSNR | 24.09 | TSRGP |
| 16k | CelebA-HQ 128x128 | SSIM | 0.71 | TSRGP |