FaithDiff: Unleashing Diffusion Priors for Faithful Image Super-resolution
- URL: http://arxiv.org/abs/2411.18824v1
- Date: Wed, 27 Nov 2024 23:58:03 GMT
- Title: FaithDiff: Unleashing Diffusion Priors for Faithful Image Super-resolution
- Authors: Junyang Chen, Jinshan Pan, Jiangxin Dong,
- Abstract summary: We propose a simple and effective method, named FaithDiff, to fully harness the power of latent diffusion models (LDMs) for faithful image SR.
In contrast to existing diffusion-based SR methods that freeze the diffusion model pre-trained on high-quality images, we propose to unleash the diffusion prior to identify useful information and recover faithful structures.
- Score: 48.88184541515326
- License:
- Abstract: Faithful image super-resolution (SR) not only needs to recover images that appear realistic, similar to image generation tasks, but also requires that the restored images maintain fidelity and structural consistency with the input. To this end, we propose a simple and effective method, named FaithDiff, to fully harness the impressive power of latent diffusion models (LDMs) for faithful image SR. In contrast to existing diffusion-based SR methods that freeze the diffusion model pre-trained on high-quality images, we propose to unleash the diffusion prior to identify useful information and recover faithful structures. As there exists a significant gap between the features of degraded inputs and the noisy latent from the diffusion model, we then develop an effective alignment module to explore useful features from degraded inputs to align well with the diffusion process. Considering the indispensable roles and interplay of the encoder and diffusion model in LDMs, we jointly fine-tune them in a unified optimization framework, facilitating the encoder to extract useful features that coincide with diffusion process. Extensive experimental results demonstrate that FaithDiff outperforms state-of-the-art methods, providing high-quality and faithful SR results.
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