ReviveDiff: A Universal Diffusion Model for Restoring Images in Adverse Weather Conditions

IF 13.7
Wenfeng Huang;Guoan Xu;Wenjing Jia;Stuart Perry;Guangwei Gao
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Abstract

Images captured in challenging environments–such as nighttime, smoke, rainy weather, and underwater–often suffer from significant degradation, resulting in a substantial loss of visual quality. The effective restoration of these degraded images is critical for the subsequent vision tasks. While many existing approaches have successfully incorporated specific priors for individual tasks, these tailored solutions limit their applicability to other degradations. In this work, we propose a universal network architecture, dubbed “ReviveDiff”, which can address various degradations and restore images to their original quality by enhancing and restoring their details. Our approach is inspired by the observation that, unlike degradation caused by movement or electronic issues, quality degradation under adverse conditions primarily stems from natural media (such as fog, water, and low luminance), which generally preserves the original structures of objects. To restore the quality of such images, we leveraged the latest advancements in diffusion models and developed ReviveDiff to restore image quality from both macro and micro levels across some key factors determining image quality, such as sharpness, distortion, noise level, dynamic range, and color accuracy. We rigorously evaluated ReviveDiff on seven benchmark datasets covering five types of degrading conditions: Rainy, Underwater, Low-light, Smoke, and Nighttime Hazy. Our experimental results demonstrate that ReviveDiff outperforms the state-of-the-art methods both quantitatively and visually.
一个用于恶劣天气条件下图像恢复的通用扩散模型
在具有挑战性的环境中拍摄的图像,如夜间、烟雾、阴雨天气和水下,通常会受到严重的退化,导致视觉质量的严重损失。有效地恢复这些退化图像对后续的视觉任务至关重要。虽然许多现有的方法已经成功地结合了针对单个任务的特定先验,但这些定制的解决方案限制了它们对其他退化的适用性。在这项工作中,我们提出了一个通用的网络架构,称为“ReviveDiff”,它可以解决各种退化问题,并通过增强和恢复图像的细节来恢复图像的原始质量。我们的方法受到观察的启发,与运动或电子问题引起的退化不同,不利条件下的质量退化主要源于自然介质(如雾、水和低亮度),这些介质通常保留了物体的原始结构。为了恢复这些图像的质量,我们利用了扩散模型的最新进展,并开发了ReviveDiff,从宏观和微观两个层面恢复图像质量,包括一些决定图像质量的关键因素,如清晰度、失真、噪声水平、动态范围和色彩精度。我们在七个基准数据集上严格评估了ReviveDiff,这些数据集涵盖了五种退化条件:下雨、水下、低光、烟雾和夜间朦胧。我们的实验结果表明,revvediff在定量和视觉上都优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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