Denoising: from classical methods to deep CNNs

Jean-Eric Campagne
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Abstract

This paper aims to explore the evolution of image denoising in a pedagological way. We briefly review classical methods such as Fourier analysis and wavelet bases, highlighting the challenges they faced until the emergence of neural networks, notably the U-Net, in the 2010s. The remarkable performance of these networks has been demonstrated in studies such as Kadkhodaie et al. (2024). They exhibit adaptability to various image types, including those with fixed regularity, facial images, and bedroom scenes, achieving optimal results and biased towards geometry-adaptive harmonic basis. The introduction of score diffusion has played a crucial role in image generation. In this context, denoising becomes essential as it facilitates the estimation of probability density scores. We discuss the prerequisites for genuine learning of probability densities, offering insights that extend from mathematical research to the implications of universal structures.
去噪:从经典方法到深度 CNN
本文旨在从方法学的角度探讨图像去噪的演变。我们简要回顾了傅立叶分析和小波基等经典方法,重点介绍了这些方法在 2010 年代神经网络(尤其是 U-Net)出现之前所面临的挑战。Kadkhodaie 等人(2024 年)的研究证明了这些网络的卓越性能。它们表现出对各种图像类型的适应性,包括具有固定规则性的图像、面部图像和卧室场景,实现了最佳结果,并偏向于几何自适应谐波基础。评分扩散的引入在图像生成中起到了至关重要的作用。在这种情况下,去噪变得至关重要,因为它有助于估计概率密度分数。我们讨论了真正学习概率密度的先决条件,提供了从数学研究延伸到通用结构含义的见解。
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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