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Visual-Instructed Degradation Diffusion for All-in-One Image Restoration

About

Image restoration tasks like deblurring, denoising, and dehazing usually need distinct models for each degradation type, restricting their generalization in real-world scenarios with mixed or unknown degradations. In this work, we propose \textbf{Defusion}, a novel all-in-one image restoration framework that utilizes visual instruction-guided degradation diffusion. Unlike existing methods that rely on task-specific models or ambiguous text-based priors, Defusion constructs explicit \textbf{visual instructions} that align with the visual degradation patterns. These instructions are grounded by applying degradations to standardized visual elements, capturing intrinsic degradation features while agnostic to image semantics. Defusion then uses these visual instructions to guide a diffusion-based model that operates directly in the degradation space, where it reconstructs high-quality images by denoising the degradation effects with enhanced stability and generalizability. Comprehensive experiments demonstrate that Defusion outperforms state-of-the-art methods across diverse image restoration tasks, including complex and real-world degradations.

Wenyang Luo, Haina Qin, Zewen Chen, Libin Wang, Dandan Zheng, Yuming Li, Yufan Liu, Bing Li, Weiming Hu• 2025

Related benchmarks

TaskDatasetResultRank
Image DehazingSOTS indoor (test)
PSNR41.65
69
Image DehazingSOTS Outdoor (test)
PSNR37.41
69
All-in-one Image RestorationCombined (Deraining, Desnowing, Dehazing)
PSNR33.26
13
DesnowingImage Restoration Desnowing
PSNR33.29
13
DehazingImage Restoration Dehazing
PSNR35.52
13
DerainingDeraining
PSNR30.98
13
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