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		    Self-Supervised Face Image Restoration with a One-Shot Reference
			- DOI:
 - 10.60864/xd5k-9x62
 - Citation Author(s):
 - Submitted by:
 - Yanhui Guo
 - Last updated:
 - 6 June 2024 - 10:50am
 - Document Type:
 - Presentation Slides
 - Document Year:
 - 2024
 - Event:
 - Paper Code:
 - IVMSP-L4.3
 
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For image restoration, methods leveraging priors from generative models have been proposed and demonstrated a promising capacity to robustly restore photorealistic and high-quality results. However, these methods are susceptible to semantic ambiguity, particularly with images that have obviously correct semantics, such as facial images. In this paper, we propose a semantic-aware latent space exploration method for image restoration (SAIR). By explicitly modelling semantic information from a given reference image, SAIR is able to reliably restore severely degraded images not only to high-resolution and highly realistic looks but also to correct semantics. Quantitative and qualitative experiments collectively demonstrate the superior performance of the proposed SAIR. Our code is available at https://github.com/Liamkuo/SAIR.