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Noise2Blur: Online Noise Extraction and Denoising (1912.01158v2)

Published 3 Dec 2019 in eess.IV and cs.CV

Abstract: We propose a new framework called Noise2Blur (N2B) for training robust image denoising models without pre-collected paired noisy/clean images. The training of the model requires only some (or even one) noisy images, some random unpaired clean images, and noise-free but blurred labels obtained by predefined filtering of the noisy images. The N2B model consists of two parts: a denoising network and a noise extraction network. First, the noise extraction network learns to output a noise map using the noise information from the denoising network under the guidence of the blurred labels. Then, the noise map is added to a clean image to generate a new "noisy/clean" image pair. Using the new image pair, the denoising network learns to generate clean and high-quality images from noisy observations. These two networks are trained simultaneously and mutually aid each other to learn the mappings of noise to clean/blur. Experiments on several denoising tasks show that the denoising performance of N2B is close to that of other denoising CNNs trained with pre-collected paired data.

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Authors (6)
  1. Huangxing Lin (7 papers)
  2. Weihong Zeng (5 papers)
  3. Xinghao Ding (66 papers)
  4. Xueyang Fu (28 papers)
  5. Yue Huang (171 papers)
  6. John Paisley (60 papers)
Citations (3)