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Tweedie Moment Projected Diffusions For Inverse Problems

About

Diffusion generative models unlock new possibilities for inverse problems as they allow for the incorporation of strong empirical priors in scientific inference. Recently, diffusion models are repurposed for solving inverse problems using Gaussian approximations to conditional densities of the reverse process via Tweedie's formula to parameterise the mean, complemented with various heuristics. To address various challenges arising from these approximations, we leverage higher order information using Tweedie's formula and obtain a statistically principled approximation. We further provide a theoretical guarantee specifically for posterior sampling which can lead to a better theoretical understanding of diffusion-based conditional sampling. Finally, we illustrate the empirical effectiveness of our approach for general linear inverse problems on toy synthetic examples as well as image restoration. We show that our method (i) removes any time-dependent step-size hyperparameters required by earlier methods, (ii) brings stability and better sample quality across multiple noise levels, (iii) is the only method that works in a stable way with variance exploding (VE) forward processes as opposed to earlier works.

Benjamin Boys, Mark Girolami, Jakiw Pidstrigach, Sebastian Reich, Alan Mosca, O. Deniz Akyildiz• 2023

Related benchmarks

TaskDatasetResultRank
Gaussian DeblurringFFHQ 256x256 (val)
FID102
24
4x super-resolutionFFHQ 256x256 (val)
FID62.13
19
Super-Resolution (x4)ImageNet 256 x 256 (val)
FID108.9
17
Uniform deblurringImageNet 256x256 (val)
LPIPS0.548
12
Half-mask inpaintingImageNet 256x256 (val)
LPIPS0.407
5
Half-mask inpaintingFFHQ 256x256 (val)
LPIPS0.271
5
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