Image Denoising: The Deep Learning Revolution and Beyond—A Survey Paper

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2023-08-24 DOI:10.1137/23m1545859
Michael Elad, Bahjat Kawar, Gregory Vaksman
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引用次数: 1

Abstract

Image denoising—removal of additive white Gaussian noise from an image—is one of the oldest and most studied problems in image processing. Extensive work over several decades has led to thousands of papers on this subject, and to many well-performing algorithms for this task. Indeed, 10 years ago, these achievements led some researchers to suspect that “Denoising is Dead,” in the sense that all that can be achieved in this domain has already been obtained. However, this turned out to be far from the truth, with the penetration of deep learning (DL) into the realm of image processing. The era of DL brought a revolution to image denoising, both by taking the lead in today’s ability for noise suppression in images, and by broadening the scope of denoising problems being treated. Our paper starts by describing this evolution, highlighting in particular the tension and synergy that exist between classical approaches and modern artificial intelligence (AI) alternatives in design of image denoisers. The recent transitions in the field of image denoising go far beyond the ability to design better denoisers. In the second part of this paper we focus on recently discovered abilities and prospects of image denoisers. We expose the possibility of using image denoisers for service of other problems, such as regularizing general inverse problems and serving as the prime engine in diffusion-based image synthesis. We also unveil the (strange?) idea that denoising and other inverse problems might not have a unique solution, as common algorithms would have us believe. Instead, we describe constructive ways to produce randomized and diverse high perceptual quality results for inverse problems, all fueled by the progress that DL brought to image denoising. This is a survey paper, and its prime goal is to provide a broad view of the history of the field of image denoising and closely related topics in image processing. Our aim is to give a better context to recent discoveries, and to the influence of the AI revolution in our domain.
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图像去噪:深度学习革命和超越-一篇调查论文
图像去噪,即去除图像中的加性高斯白噪声,是图像处理中最古老、研究最多的问题之一。几十年来的广泛工作已经导致了数千篇关于这个主题的论文,以及许多用于该任务的性能良好的算法。事实上,10年前,这些成就让一些研究人员怀疑“去噪已死”,因为在这个领域所能实现的一切都已经实现了。然而,随着深度学习(DL)渗透到图像处理领域,事实证明这与事实相去甚远。我们的论文首先描述了这种演变,特别强调了经典方法与现代人工智能(AI)替代方案在图像去噪设计中存在的张力和协同作用。最近在图像去噪领域的转变远远超出了设计更好的去噪器的能力。本文的第二部分重点介绍了图像去噪器的性能和发展前景。我们揭示了使用图像去噪器服务于其他问题的可能性,例如正则化一般逆问题和作为基于扩散的图像合成的主要引擎。我们还揭示了一个(奇怪的?)想法,即去噪和其他逆问题可能没有唯一的解决方案,就像普通算法让我们相信的那样。相反,我们描述了建设性的方法来产生随机和多样化的高感知质量的反问题结果,所有这些都是由深度学习带来的图像去噪的进步所推动的。这是一篇调查论文,其主要目标是提供图像去噪领域的历史和图像处理中密切相关的主题的广泛观点。我们的目标是为最近的发现提供一个更好的背景,以及人工智能革命在我们领域的影响。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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