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Identifying Recurring Patterns with Deep Neural Networks for Natural Image Denoising

机译:使用深层神经网络识别自然图像去噪的重复模式

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Image denoising methods must effectively model, implicitly or explicitly, the vast diversity of patterns and textures that occur in natural images. This is challenging, even for modern methods that leverage deep neural networks trained to regress to clean images from noisy inputs. One recourse is to rely on "internal" image statistics, by searching for similar patterns within the input image itself. In this work, we propose a new method for natural image denoising that trains a deep neural network to determine whether patches in a noisy image input share common underlying patterns. Given a pair of noisy patches, our network predicts whether different sub-band coefficients of the original noise-free patches are similar. The denoising algorithm then aggregates matched coefficients to obtain an initial estimate of the clean image. Finally, this estimate is provided as input, along with the original noisy image, to a standard regression-based denoising network. Experiments show that our method achieves state-of-the-art color image denoising performance, including with a blind version that trains a common model for a range of noise levels, and does not require knowledge of level of noise in an input image. Our approach also has a distinct advantage when training with limited amounts of training data.
机译:图像去噪方法必须有效地模拟,隐含地或明确地模拟自然图像中发生的巨大模式和纹理。这是具有挑战性的,即使对于利用深度神经网络训练的现代方法,甚至利用训练的深度训练以从嘈杂的输入清洁图像。通过在输入图像本身内搜索类似的模式来依赖“内部”图像统计数据。在这项工作中,我们提出了一种新的自然图像去噪方法,该方法训练深度神经网络,以确定噪声图像输入中的斑块是否共同潜在的底层模式。给定一对嘈杂的补丁,我们的网络预测了原始无噪声斑块的不同子带系数是相似的。然后,去噪算法聚合匹配的系数以获得清洁图像的初始估计。最后,将该估计作为输入,以及原始嘈杂图像以及基于标准的回归的去噪网络提供。实验表明,我们的方法实现了最先进的彩色图像去噪表现,包括盲人版本,该盲版培训到一系列噪声水平的共同模型,并且不需要在输入图像中了解噪声水平的知识。当培训数量有限的培训数据时,我们的方法也具有明显的优势。

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