Authors
Jun Xu, Yuan Huang, Ming-Ming Cheng, Li Liu, Fan Zhu, Zhou Xu, Ling Shao
Publication date
2020/9
Journal
IEEE Transactions on Image Processing
Volume
29
Pages
9316-9329
Publisher
IEEE
Description
Supervised deep networks have achieved promising performance on image denoising, by learning image priors and noise statistics on plenty pairs of noisy and clean images. Unsupervised denoising networks are trained with only noisy images. However, for an unseen corrupted image, both supervised and unsupervised networks ignore either its particular image prior, the noise statistics, or both. That is, the networks learned from external images inherently suffer from a domain gap problem: the image priors and noise statistics are very different between the training and test images. This problem becomes more clear when dealing with the signal dependent realistic noise. To circumvent this problem, in this work, we propose a novel “Noisy-As-Clean” (NAC) strategy of training self-supervised denoising networks. Specifically, the corrupted test image is directly taken as the “clean” target, while the inputs are …
Total citations
20192020202120222023202411024485741
Scholar articles
J Xu, Y Huang, MM Cheng, L Liu, F Zhu, Z Xu, L Shao - IEEE Transactions on Image Processing, 2020