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Papers/Adaptive Blind All-in-One Image Restoration

Adaptive Blind All-in-One Image Restoration

David Serrano-Lozano, Luis Herranz, Shaolin Su, Javier Vazquez-Corral

2024-11-27Image RestorationAll
PaperPDFCode(official)

Abstract

Blind all-in-one image restoration models aim to recover a high-quality image from an input degraded with unknown distortions. However, these models require all the possible degradation types to be defined during the training stage while showing limited generalization to unseen degradations, which limits their practical application in complex cases. In this paper, we propose a simple but effective adaptive blind all-in-one restoration (ABAIR) model, which can address multiple degradations, generalizes well to unseen degradations, and efficiently incorporate new degradations by training a small fraction of parameters. First, we train our baseline model on a large dataset of natural images with multiple synthetic degradations, augmented with a segmentation head to estimate per-pixel degradation types, resulting in a powerful backbone able to generalize to a wide range of degradations. Second, we adapt our baseline model to varying image restoration tasks using independent low-rank adapters. Third, we learn to adaptively combine adapters to versatile images via a flexible and lightweight degradation estimator. Our model is both powerful in handling specific distortions and flexible in adapting to complex tasks, it not only outperforms the state-of-the-art by a large margin on five- and three-task IR setups, but also shows improved generalization to unseen degradations and also composite distortions.

Results

TaskDatasetMetricValueModel
Image Restoration5-DegradationsAverage PSNR31.25ABAIR
Image Restoration5-DegradationsSSIM0.921ABAIR
Image Restoration3-DegradationsAverage PSNR33.21ABAIR
Image Restoration3-DegradationsSSIM0.919ABAIR
Image Restoration5-Degradation Blind All-in-One Image RestorationAverage PSNR31.25ABAIR
10-shot image generation5-DegradationsAverage PSNR31.25ABAIR
10-shot image generation5-DegradationsSSIM0.921ABAIR
10-shot image generation3-DegradationsAverage PSNR33.21ABAIR
10-shot image generation3-DegradationsSSIM0.919ABAIR
10-shot image generation5-Degradation Blind All-in-One Image RestorationAverage PSNR31.25ABAIR
Unified Image Restoration5-DegradationsAverage PSNR31.25ABAIR
Unified Image Restoration5-DegradationsSSIM0.921ABAIR
Unified Image Restoration3-DegradationsAverage PSNR33.21ABAIR
Unified Image Restoration3-DegradationsSSIM0.919ABAIR

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