Zero-Shot Solving of Imaging Inverse Problems via Noise-Refined Likelihood Guided Diffusion Models
Journal:
arXiv
Published Date:
Jun 16, 2025
Abstract
Diffusion models have achieved remarkable success in imaging inverse problems
owing to their powerful generative capabilities. However, existing approaches
typically rely on models trained for specific degradation types, limiting their
generalizability to various degradation scenarios. To address this limitation,
we propose a zero-shot framework capable of handling various imaging inverse
problems without model retraining. We introduce a likelihood-guided noise
refinement mechanism that derives a closed-form approximation of the likelihood
score, simplifying score estimation and avoiding expensive gradient
computations. This estimated score is subsequently utilized to refine the
model-predicted noise, thereby better aligning the restoration process with the
generative framework of diffusion models. In addition, we integrate the
Denoising Diffusion Implicit Models (DDIM) sampling strategy to further improve
inference efficiency. The proposed mechanism can be applied to both
optimization-based and sampling-based schemes, providing an effective and
flexible zero-shot solution for imaging inverse problems. Extensive experiments
demonstrate that our method achieves superior performance across multiple
inverse problems, particularly in compressive sensing, delivering high-quality
reconstructions even at an extremely low sampling rate (5%).