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Boosting Image Restoration via Priors from Pre-Trained Models

Xiaogang Xu, Shu Kong, Tao Hu, Zhe Liu, Hujun Bao

202414 citationsDOI

Abstract

Pre-trained models with large-scale training data, such as CLIP and Stable Diffusion, have demonstrated remarkable performance in various high-level computer vision tasks such as image understanding and generation from language descriptions. Yet, their potential for low-level tasks such as image restoration remains relatively unexplored. In this paper, we explore such models to enhance image restoration. As off-the-shelf features (OSF) from pre-trained models do not directly serve image restoration, we propose to learn an additional lightweight module called Pre-Train-Guided Refinement Module (PTG-RM) to refine restoration results of a target restoration network with OSF. PTG-RM consists of two components, Pre-Train-Guided Spatial-Varying Enhancement (PTG-SVE), and Pre-Train-Guided Channel-Spatial Attention (PTG-CSA). PTG-SVE enables optimal short- and long-range neural operations, while PTG-CSA enhances spatial-channel attention for restoration-related learning. Extensive experiments demonstrate that PTG-RM, with its compact size (<1M parameters), effectively enhances restoration performance of various models across different tasks, including low-light enhancement, deraining, deblurring, and denoising.

Topics & Concepts

Boosting (machine learning)Prior probabilityArtificial intelligenceComputer scienceImage restorationPattern recognition (psychology)Computer visionImage (mathematics)Image processingBayesian probabilityAdvanced Image Processing TechniquesImage and Signal Denoising MethodsComputer Graphics and Visualization Techniques
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