Optical imaging systems are inherently imperfect due to diffraction limits, lens manufacturing tolerances, assembly misalignment, and other physical constraints. In addition, unavoidable camera shake and object motion further introduce non-ideal degradations during acquisition. These aberrations and motion-induced variations are typically unknown, difficult to measure, and costly to model or calibrate in practice. Blind inverse problems offer a promising direction by jointly estimating both the latent image and the unknown degradation kernel. However, existing approaches often suffer from convergence instability, limited prior expressiveness, and sensitivity to hyperparameters. Inspired by recent advances in self-diffusion, we propose DeblurSDI, a zero-shot, self-supervised blind imaging framework that requires no pre-training. DeblurSDI formulates blind image recovery as an iterative reverse self-diffusion process that begins from pure noise and progressively refines both the sharp image and the blur kernel. Extensive experiments on combined optical aberrations and motion blur demonstrate that DeblurSDI consistently outperforms other methods by a substantial margin.
翻译:光学成像系统由于衍射极限、透镜制造公差、装配失准以及其他物理约束而存在固有缺陷。此外,不可避免的相机抖动和物体运动在采集过程中会进一步引入非理想的退化。这些像差和运动引起的畸变通常是未知的,难以测量,且在实践中建模或校准成本高昂。盲逆问题通过联合估计潜在图像和未知退化核,提供了一个有前景的方向。然而,现有方法常面临收敛不稳定性、先验表达能力有限以及对超参数敏感的问题。受自扩散最新进展的启发,我们提出了DeblurSDI,一种无需预训练的零样本自监督盲成像框架。DeblurSDI将盲图像恢复表述为一个迭代的反向自扩散过程,该过程从纯噪声开始,逐步优化清晰图像和模糊核。在组合光学像差和运动模糊上的大量实验表明,DeblurSDI始终以显著优势超越其他方法。