Linear Combinations of Patches are Unreasonably Effective for Single-Image Denoising

Sébastien Herbreteau;Charles Kervrann
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Abstract

In the past decade, deep neural networks have revolutionized image denoising in achieving significant accuracy improvements by learning on datasets composed of noisy/clean image pairs. However, this strategy is extremely dependent on training data quality, which is a well-established weakness. To alleviate the requirement to learn image priors externally, single-image (a.k.a., self-supervised or zero-shot) methods perform denoising solely based on the analysis of the input noisy image without external dictionary or training dataset. This work investigates the effectiveness of linear combinations of patches for denoising under this constraint. Although conceptually very simple, we show that linear combinations of patches are enough to achieve state-of-the-art performance. The proposed parametric approach relies on quadratic risk approximation via multiple pilot images to guide the estimation of the combination weights. Experiments on images corrupted artificially with Gaussian noise as well as on real-world noisy images demonstrate that our method is on par with the very best single-image denoisers, outperforming the recent neural network-based techniques, while being much faster and fully interpretable.
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斑块的线性组合对单图像去噪效果不佳
在过去的十年中,深度神经网络带来了一场图像去噪的革命,它通过在由噪声/清洁图像对组成的数据集上学习,显著提高了图像去噪的准确性。然而,这种策略极其依赖于训练数据的质量,这是一个公认的弱点。为了减少从外部学习图像先验的要求,单图像(又称自监督或零镜头)方法仅根据对输入噪声图像的分析来执行去噪,而无需外部字典或训练数据集。这项工作研究了在这种约束条件下,线性组合补丁去噪的有效性。虽然概念上非常简单,但我们表明,线性斑块组合足以实现最先进的性能。所提出的参数方法依赖于通过多个先导图像进行二次风险逼近,以指导组合权重的估算。在使用高斯噪声人为破坏的图像以及真实世界的噪声图像上进行的实验表明,我们的方法与最好的单图像去噪器不相上下,优于最近基于神经网络的技术,同时速度更快,完全可解释。
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