In supervised image restoration tasks, one key issue is how to obtain the aligned high-quality (HQ) and low-quality (LQ) training image pairs. Unfortunately, such HQ-LQ training pairs are hard to capture in practice, and hard to synthesize due to the complex unknown degradation in the wild. While several sophisticated degradation models have been manually designed to synthesize LQ images from their HQ counterparts, the distribution gap between the synthesized and real-world LQ images remains large. We propose a new approach to synthesizing realistic image restoration training pairs using the emerging denoising diffusion probabilistic model (DDPM). First, we train a DDPM, which could convert a noisy input into the desired LQ image, with a large amount of collected LQ images, which define the target data distribution. Then, for a given HQ image, we synthesize an initial LQ image by using an off-the-shelf degradation model, and iteratively add proper Gaussian noises to it. Finally, we denoise the noisy LQ image using the pre-trained DDPM to obtain the final LQ image, which falls into the target distribution of real-world LQ images. Thanks to the strong capability of DDPM in distribution approximation, the synthesized HQ-LQ image pairs can be used to train robust models for real-world image restoration tasks, such as blind face image restoration and blind image super-resolution. Experiments demonstrated the superiority of our proposed approach to existing degradation models. Code and data will be released.
翻译:在监督的图像恢复任务中,一个关键问题是如何获得匹配的高质量(总部)和低质量(LQ)培训图像配对。 不幸的是,这种总部-LQ培训配对在实践上很难捕捉,而且由于野生复杂的不为人知的退化而难以合成。虽然已经手工设计了若干复杂的降解模型,以合成总部对应方的 LQ 图像,但合成的图像与真实世界 LQ 图像之间的分布差距仍然很大。我们建议采用新的方法,利用新兴的不透明扩散概率模型(DDPM),将现实的图像恢复培训配对对。首先,我们培训DDPM,它可以将噪音输入理想的LQ图像,而大量收集的LQ 图像可以用来定义目标数据分布。然后,对于某个给定的HQ图像,我们通过使用现成的降解模型,反复地添加适当的高斯的噪音。最后,我们用经过培训的DDP Q 模型来淡调音LQ 图像,以便获得真实的图像恢复能力。</s>