Locally-guided neural denoising

Lukas Bode , Sebastian Merzbach , Julian Kaltheuner , Michael Weinmann , Reinhard Klein
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引用次数: 1

Abstract

Noise-like artifacts are common in measured or fitted data across various domains, e.g. photography, geometric reconstructions in terms of point clouds or meshes, as well as reflectance measurements and the respective fitting of commonly used reflectance models to them. State-of-the-art denoising approaches focus on specific noise characteristics usually observed in photography. However, these approaches do not perform well if data is corrupted with location-dependent noise. A typical example is the acquisition of heterogeneous materials, which leads to different noise levels due to different behavior of the components either during acquisition or during reconstruction. We address this problem by first automatically determining location-dependent noise levels in the input data and demonstrate that state-of-the-art denoising algorithms can usually benefit from this guidance with only minor modifications to their loss function or employed regularization mechanisms. To generate this information for guidance, we analyze patchwise variances and subsequently derive per-pixel importance values. We demonstrate the benefits of such locally-guided denoising at the examples of the Deep Image Prior method and the Self2Self method.

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局部引导神经去噪
在各种领域的测量或拟合数据中,类噪声伪影很常见,例如摄影、点云或网格方面的几何重建,以及反射率测量和常用反射率模型的各自拟合。最先进的去噪方法关注的是通常在摄影中观察到的特定噪声特性。然而,如果数据被位置相关噪声破坏,这些方法就不能很好地执行。一个典型的例子是异质材料的采集,由于在采集或重建过程中组件的不同行为,导致不同的噪声水平。我们首先通过自动确定输入数据中与位置相关的噪声水平来解决这个问题,并证明最先进的去噪算法通常可以从这种指导中受益,只需对其损失函数或采用正则化机制进行轻微修改。为了生成用于指导的这些信息,我们分析了逐块的方差,随后推导出逐像素的重要性值。我们在深度图像先验方法和Self2Self方法的例子中展示了这种局部引导去噪的好处。
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Editorial Board Geometric models for plant leaf area estimation from 3D point clouds: A comparative study Efficient structuring of the latent space for controllable data reconstruction and compression Locally-guided neural denoising Editorial Note
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