Restore Anything with Masks: Leveraging Mask Image Modeling for Blind All-in-One Image Restoration
All-in-one image restoration aims to handle multiple degradation types using one model. This paper proposes a simple pipeline for all-in-one blind image restoration to Restore Anything with Masks (RAM). We focus on the image content by utilizing Mask Image Modeling to extract intrinsic image informa...
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Zusammenfassung: | All-in-one image restoration aims to handle multiple degradation types using
one model. This paper proposes a simple pipeline for all-in-one blind image
restoration to Restore Anything with Masks (RAM). We focus on the image content
by utilizing Mask Image Modeling to extract intrinsic image information rather
than distinguishing degradation types like other methods. Our pipeline consists
of two stages: masked image pre-training and fine-tuning with mask attribute
conductance. We design a straightforward masking pre-training approach
specifically tailored for all-in-one image restoration. This approach enhances
networks to prioritize the extraction of image content priors from various
degradations, resulting in a more balanced performance across different
restoration tasks and achieving stronger overall results. To bridge the gap of
input integrity while preserving learned image priors as much as possible, we
selectively fine-tuned a small portion of the layers. Specifically, the
importance of each layer is ranked by the proposed Mask Attribute Conductance
(MAC), and the layers with higher contributions are selected for finetuning.
Extensive experiments demonstrate that our method achieves state-of-the-art
performance. Our code and model will be released at
\href{https://github.com/Dragonisss/RAM}{https://github.com/Dragonisss/RAM}. |
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DOI: | 10.48550/arxiv.2409.19403 |