Non-Uniform Diffusion Models
About
Diffusion models have emerged as one of the most promising frameworks for deep generative modeling. In this work, we explore the potential of non-uniform diffusion models. We show that non-uniform diffusion leads to multi-scale diffusion models which have similar structure to this of multi-scale normalizing flows. We experimentally find that in the same or less training time, the multi-scale diffusion model achieves better FID score than the standard uniform diffusion model. More importantly, it generates samples $4.4$ times faster in $128\times 128$ resolution. The speed-up is expected to be higher in higher resolutions where more scales are used. Moreover, we show that non-uniform diffusion leads to a novel estimator for the conditional score function which achieves on par performance with the state-of-the-art conditional denoising estimator. Our theoretical and experimental findings are accompanied by an open source library MSDiff which can facilitate further research of non-uniform diffusion models.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Colorization | Colourization (Col) | FID43.98 | 9 | |
| Image Decompression | Image Decompression (DC) | FID136.3 | 9 | |
| Super-Resolution | Super-Resolution (SR) | FID118.3 | 9 | |
| Image-to-Image Translation | Night-to-day | F8 (Recall)90 | 8 | |
| Super-Resolution | Super-Resolution (SR) | F8 (Recall)19 | 8 |