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Principled Design of Diffusion-based Optimizers for Inverse Problems

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Score-based diffusion models achieve state-of-the-art performance for inverse problems, but their practical deployment is hindered by long inference times and cumbersome hyperparameter tuning. While pretrained diffusion models can be reused across tasks without retraining, inference-time hyperparameters such as the noise schedule and posterior sampling weights typically require ad-hoc adjustment for each problem setup. We propose principled reparameterizations that induce invariances, allowing the same hyperparameters to be reused across multiple problems without re-tuning. In addition, building on the RED-diff framework, which reformulates posterior sampling as an optimization problem, we further develop the OptDiff pipeline. OptDiff provides a simplified tuning framework that facilitates the integration of convex optimization tools to accelerate inference. Experiments on image reconstruction, deblurring, and super-resolution show substantial speedups and improved image quality.

Julio Oscanoa, Irmak Sivgin, Cagan Alkan, Daniel Ennis, John Pauly, Mert Pilanci, Shreyas Vasanawala• 2026

Related benchmarks

TaskDatasetResultRank
Super-Resolution (4x)ImageNet
PSNR26.07
57
MRI ReconstructionfastMRI 8X acceleration (test)
SSIM0.924
43
MRI ReconstructionfastMRI 4X acceleration (test)
PSNR38.45
42
Super-Resolution (4x)FFHQ
PSNR31.33
42
Super-ResolutionFFHQ (test)
SSIM88.8
32
Super-ResolutionImageNet
PSNR20.44
31
DeblurringImageNet (test)
PSNR41.04
14
Deblurring (k=3, sigma=25)ImageNet
PSNR41.04
6
Deblurring (k=3, sigma=25)FFHQ
PSNR42.45
6
Severe deblurring (k=12, sigma=3)FFHQ
PSNR32.61
6
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