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Learning Raw Image Denoising With Bayer Pattern Unification and Bayer Preserving Augmentation

机译:学习拜耳图案统一和拜耳保存增强的原始图像去噪

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In this paper, we present new data pre-processing and augmentation techniques for DNN-based raw image denoising. Compared with traditional RGB image denoising, performing this task on direct camera sensor readings presents new challenges such as how to effectively handle various Bayer patterns from different data sources, and subsequently how to perform valid data augmentation with raw images. To address the first problem, we propose a Bayer pattern unification (BayerUnify) method to unify different Bayer patterns. This allows us to fully utilize a heterogeneous dataset to train a single denoising model instead of training one model for each pattern. Furthermore, while it is essential to augment the dataset to improve model generalization and performance, we discovered that it is error-prone to modify raw images by adapting augmentation methods designed for RGB images. Towards this end, we present a Bayer preserving augmentation (BayerAug) method as an effective approach for raw image augmentation. Combining these data processing technqiues with a modified U-Net, our method achieves a PSNR of 52.11 and a SSIM of 0.9969 in NTIRE 2019 Real Image Denoising Challenge, demonstrating the state-of-the-art performance.
机译:在本文中,我们为基于DNN的原始图像去噪提供了新的数据预处理和增强技术。与传统的RGB图像去噪相比,在直接相机传感器读数上执行此任务呈现出新的挑战,例如如何有效处理来自不同数据源的各种拜耳模式,以及随后如何使用原始图像执行有效的数据增强。为了解决第一个问题,我们提出了一个拜耳模式统一(BayerUnify)方法来统一不同的拜耳模式。这使我们能够充分利用异构数据集来训练单个去噪模型,而不是为每个模式训练一个模型。此外,虽然增强数据集是必要的,以提高模型泛化和性能,但我们发现通过适应为RGB图像设计的增强方法来修改原始图像是错误的。为此,我们展示了一个拜耳保存的增强(Bayeraug)方法,作为原始图像增强的有效方法。将这些数据处理技术与修改过的U-Net相结合,我们的方法在NTIRE 2019真正的图像去噪挑战中实现了52.11的PSNR和0.9969的SSIM,展示了最先进的性能。

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