Autodir: Automatic all-in-one image restoration with latent diffusion

Y Jiang, Z Zhang, T Xue, J Gu - arXiv preprint arXiv:2310.10123, 2023 - arxiv.org
arXiv preprint arXiv:2310.10123, 2023arxiv.org
In this paper, we aim to solve complex real-world image restoration situations, in which, one
image may have a variety of unknown degradations. To this end, we propose an all-in-one
image restoration framework with latent diffusion (AutoDIR), which can automatically detect
and address multiple unknown degradations. Our framework first utilizes a Blind Image
Quality Assessment Module (BIQA) to automatically detect and identify the unknown
dominant image degradation type of the image. Then, an All-in-One Image Editing (AIR) …
In this paper, we aim to solve complex real-world image restoration situations, in which, one image may have a variety of unknown degradations. To this end, we propose an all-in-one image restoration framework with latent diffusion (AutoDIR), which can automatically detect and address multiple unknown degradations. Our framework first utilizes a Blind Image Quality Assessment Module (BIQA) to automatically detect and identify the unknown dominant image degradation type of the image. Then, an All-in-One Image Editing (AIR) Module handles multiple kinds of degradation image restoration with the guidance of BIQA. Finally, a Structure Correction Module (SCM) is proposed to recover the image details distorted by AIR. Our comprehensive evaluation demonstrates that AutoDIR outperforms state-of-the-art approaches by achieving superior restoration results while supporting a wider range of tasks. Notably, AutoDIR is also the first method to automatically handle real-scenario images with multiple unknown degradations.
arxiv.org
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