Recorrupted-to-Recorrupted: Unsupervised Deep Learning for Image Denoising

T. Pang, Huan Zheng, Yuhui Quan, Hui Ji
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引用次数: 85

Abstract

Deep denoiser, the deep network for denoising, has been the focus of the recent development on image denoising. In the last few years, there is an increasing interest in developing unsupervised deep denoisers which only call unorganized noisy images without ground truth for training. Nevertheless, the performance of these unsupervised deep denoisers is not competitive to their supervised counterparts. Aiming at developing a more powerful unsupervised deep denoiser, this paper proposed a data augmentation technique, called recorrupted-to-recorrupted (R2R), to address the overfitting caused by the absence of truth images. For each noisy image, we showed that the cost function defined on the noisy/noisy image pairs constructed by the R2R method is statistically equivalent to its supervised counterpart defined on the noisy/truth image pairs. Extensive experiments showed that the proposed R2R method noticeably outperformed existing unsupervised deep denoisers, and is competitive to representative supervised deep denoisers.
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重构到重构:用于图像去噪的无监督深度学习
深度去噪,即深度网络去噪,是近年来图像去噪研究的热点。在过去的几年里,人们对开发无监督深度去噪器越来越感兴趣,这种去噪器只调用没有基础真值的无组织噪声图像进行训练。然而,这些无监督深度去噪器的性能与有监督深度去噪器相比并不具有竞争力。为了开发一种更强大的无监督深度去噪器,本文提出了一种数据增强技术,称为重构到重构(R2R),以解决由于缺乏真实图像而导致的过拟合问题。对于每个噪声图像,我们证明了R2R方法在噪声/噪声图像对上定义的代价函数与在噪声/真值图像对上定义的监督对应函数在统计上是等价的。大量实验表明,所提出的R2R方法明显优于现有的无监督深度去噪方法,并且与具有代表性的有监督深度去噪方法具有竞争力。
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