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Decoupled Data Consistency with Diffusion Purification for Image Restoration

About

Diffusion models have recently gained traction as a powerful class of deep generative priors, excelling in a wide range of image restoration tasks due to their exceptional ability to model data distributions. To solve image restoration problems, many existing techniques achieve data consistency by incorporating additional likelihood gradient steps into the reverse sampling process of diffusion models. However, the additional gradient steps pose a challenge for real-world practical applications as they incur a large computational overhead, thereby increasing inference time. They also present additional difficulties when using accelerated diffusion model samplers, as the number of data consistency steps is limited by the number of reverse sampling steps. In this work, we propose a novel diffusion-based image restoration solver that addresses these issues by decoupling the reverse process from the data consistency steps. Our method involves alternating between a reconstruction phase to maintain data consistency and a refinement phase that enforces the prior via diffusion purification. Our approach demonstrates versatility, making it highly adaptable for efficient problem-solving in latent space. Additionally, it reduces the necessity for numerous sampling steps through the integration of consistency models. The efficacy of our approach is validated through comprehensive experiments across various image restoration tasks, including image denoising, deblurring, inpainting, and super-resolution.

Xiang Li, Soo Min Kwon, Shijun Liang, Ismail R. Alkhouri, Saiprasad Ravishankar, Qing Qu• 2024

Related benchmarks

TaskDatasetResultRank
InpaintingFFHQ
LPIPS0.163
62
Motion DeblurFFHQ--
56
Gaussian DeblurringFFHQ
PSNR16.821
46
Super-ResolutionImageNet
PSNR24.517
31
Phase RetrievalFFHQ
PSNR20.026
30
Phase RetrievalImageNet
PSNR12.257
29
Gaussian DeblurringFFHQ (val)
PSNR16.75
26
Gaussian BlurImageNet
PSNR15.102
20
4× Super-ResolutionFFHQ (val)
PSNR26.65
19
Inpainting (Random)FFHQ--
17
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