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High-Quality Self-Supervised Deep Image Denoising

About

We describe a novel method for training high-quality image denoising models based on unorganized collections of corrupted images. The training does not need access to clean reference images, or explicit pairs of corrupted images, and can thus be applied in situations where such data is unacceptably expensive or impossible to acquire. We build on a recent technique that removes the need for reference data by employing networks with a "blind spot" in the receptive field, and significantly improve two key aspects: image quality and training efficiency. Our result quality is on par with state-of-the-art neural network denoisers in the case of i.i.d. additive Gaussian noise, and not far behind with Poisson and impulse noise. We also successfully handle cases where parameters of the noise model are variable and/or unknown in both training and evaluation data.

Samuli Laine, Tero Karras, Jaakko Lehtinen, Timo Aila• 2019

Related benchmarks

TaskDatasetResultRank
Image DenoisingSIDD (val)
PSNR23.8
105
Image DenoisingBSD300
PSNR (dB)30.99
78
Image DenoisingKodak
PSNR32.4
45
Image DenoisingSet14
PSNR31.36
45
Gaussian DenoisingKodak
PSNR32.4
41
Poisson DenoisingKodak
PSNR31.67
40
Image DenoisingKodak Gaussian σ=25 (test)
PSNR32.4
24
Image DenoisingSIDD Benchmark raw-RGB (test)
PSNR50.28
24
Image DenoisingSIDD raw-RGB (val)
PSNR50.89
24
Gaussian DenoisingBSDS300 sigma=25 sRGB
PSNR30.99
24
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