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arxiv_cv 95% Match Research Paper Computer vision researchers,Image processing engineers,Developers of imaging software 2 days ago

DeblurSDI: Blind Image Deblurring Using Self-diffusion

computer-vision › diffusion-models
📄 Abstract

Abstract: Blind image deconvolution is a challenging ill-posed inverse problem, where both the latent sharp image and the blur kernel are unknown. Traditional methods often rely on handcrafted priors, while modern deep learning approaches typically require extensive pre-training on large external datasets, limiting their adaptability to real-world scenarios. In this work, we propose DeblurSDI, a zero-shot, self-supervised framework based on self-diffusion (SDI) that requires no prior training. DeblurSDI formulates blind deconvolution as an iterative reverse self-diffusion process that starts from pure noise and progressively refines the solution. At each step, two randomly-initialized neural networks are optimized continuously to refine the sharp image and the blur kernel. The optimization is guided by an objective function combining data consistency with a sparsity-promoting L1-norm for the kernel. A key innovation is our noise scheduling mechanism, which stabilizes the optimization and provides remarkable robustness to variations in blur kernel size. These allow DeblurSDI to dynamically learn an instance-specific prior tailored to the input image. Extensive experiments demonstrate that DeblurSDI consistently achieves superior performance, recovering sharp images and accurate kernels even in highly degraded scenarios.
Authors (2)
Yanlong Yang
Guanxiong Luo
Submitted
October 31, 2025
arXiv Category
cs.CV
arXiv PDF

Key Contributions

DeblurSDI presents a novel zero-shot, self-supervised framework for blind image deconvolution using self-diffusion. It overcomes the limitations of traditional methods and deep learning approaches by requiring no prior training and iteratively refining both the sharp image and blur kernel through a guided diffusion process.

Business Value

Enables restoration of blurry images without prior knowledge or training, improving image quality in various applications like forensics, medical imaging, and consumer photography, potentially reducing the need for re-capture.