CVMar 27, 2025

Invert2Restore: Zero-Shot Degradation-Blind Image Restoration

arXiv:2503.21486v12 citationsh-index: 3
Originality Incremental advance
AI Analysis

This addresses the challenge of applying image restoration methods without precise degradation knowledge, which is incremental as it builds on pre-trained diffusion models but extends their applicability.

The paper tackles the problem of image restoration in real-world scenarios where degradation models are unknown or partially known, introducing Invert2Restore, a zero-shot, training-free method that achieves state-of-the-art performance across various degradation types.

Two of the main challenges of image restoration in real-world scenarios are the accurate characterization of an image prior and the precise modeling of the image degradation operator. Pre-trained diffusion models have been very successfully used as image priors in zero-shot image restoration methods. However, how to best handle the degradation operator is still an open problem. In real-world data, methods that rely on specific parametric assumptions about the degradation model often face limitations in their applicability. To address this, we introduce Invert2Restore, a zero-shot, training-free method that operates in both fully blind and partially blind settings -- requiring no prior knowledge of the degradation model or only partial knowledge of its parametric form without known parameters. Despite this, Invert2Restore achieves high-fidelity results and generalizes well across various types of image degradation. It leverages a pre-trained diffusion model as a deterministic mapping between normal samples and undistorted image samples. The key insight is that the input noise mapped by a diffusion model to a degraded image lies in a low-probability density region of the standard normal distribution. Thus, we can restore the degraded image by carefully guiding its input noise toward a higher-density region. We experimentally validate Invert2Restore across several image restoration tasks, demonstrating that it achieves state-of-the-art performance in scenarios where the degradation operator is either unknown or partially known.

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