The paper presents a Detail-Enhancing Framework (DEF) for reference-based image super-resolution (Ref-SR) that introduces a diffusion model to generate and enhance the underlying details in low-resolution (LR) images. This helps facilitate more precise alignment between the LR image and the reference image, and also reduces artifacts in the final output.
The key insights are:
Theoretical analysis shows that image restoration can be decomposed into range-space (data consistency) and null-space (realness) components. Existing Ref-SR methods tend to focus on data consistency, neglecting the importance of detail enhancement.
DEF first applies a pre-trained diffusion model to the input LR image to generate and refine the null-space details. This detail-enhanced LR image is then used for feature extraction and alignment with the reference image.
A deformable convolution network is employed in the texture transfer stage to handle irregular textures and improve the robustness of the alignment process.
Extensive experiments demonstrate that the proposed DEF achieves superior visual results while maintaining comparable numerical performance compared to state-of-the-art Ref-SR methods.
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by Zihan Wang,Z... um arxiv.org 05-02-2024
https://arxiv.org/pdf/2405.00431.pdfTiefere Fragen