论文标题

C2N:现实世界denoising的实用生成噪声建模

C2N: Practical Generative Noise Modeling for Real-World Denoising

论文作者

Jang, Geonwoon, Lee, Wooseok, Son, Sanghyun, Lee, Kyoung Mu

论文摘要

基于学习的图像剥夺方法已与给出良好的嘈杂和干净的图像或样品合成的情况下,从预定的噪声模型(例如高斯,高斯)合成。尽管最近的生成噪声建模方法旨在模拟现实世界噪声的未知分布,但仍然存在一些局限性。在实际情况下,噪声发生器应学会模拟一般和复杂的噪声分布,而无需使用配对的嘈杂和干净的图像。但是,由于现有方法是基于现实世界噪声的不切实际的假设而构建的,因此它们倾向于产生令人难以置信的模式,并且无法表达复杂的噪声图。因此,我们引入了一个干净的图像生成框架,即C2N,以模仿复杂的现实世界噪声而无需使用任何配对示例。我们将C2N中的噪声发生器与现实世界噪声特性的每个组件相应地构造,以准确地表达广泛的噪声。结合我们的C2N,可以训练常规的Denoising CNN,以优于现有的无监督方法,这些方法在挑战现实世界基准的较大利润方面。

Learning-based image denoising methods have been bounded to situations where well-aligned noisy and clean images are given, or samples are synthesized from predetermined noise models, e.g., Gaussian. While recent generative noise modeling methods aim to simulate the unknown distribution of real-world noise, several limitations still exist. In a practical scenario, a noise generator should learn to simulate the general and complex noise distribution without using paired noisy and clean images. However, since existing methods are constructed on the unrealistic assumption of real-world noise, they tend to generate implausible patterns and cannot express complicated noise maps. Therefore, we introduce a Clean-to-Noisy image generation framework, namely C2N, to imitate complex real-world noise without using any paired examples. We construct the noise generator in C2N accordingly with each component of real-world noise characteristics to express a wide range of noise accurately. Combined with our C2N, conventional denoising CNNs can be trained to outperform existing unsupervised methods on challenging real-world benchmarks by a large margin.

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