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Noise2Void - Learning Denoising from Single Noisy Images

About

The field of image denoising is currently dominated by discriminative deep learning methods that are trained on pairs of noisy input and clean target images. Recently it has been shown that such methods can also be trained without clean targets. Instead, independent pairs of noisy images can be used, in an approach known as Noise2Noise (N2N). Here, we introduce Noise2Void (N2V), a training scheme that takes this idea one step further. It does not require noisy image pairs, nor clean target images. Consequently, N2V allows us to train directly on the body of data to be denoised and can therefore be applied when other methods cannot. Especially interesting is the application to biomedical image data, where the acquisition of training targets, clean or noisy, is frequently not possible. We compare the performance of N2V to approaches that have either clean target images and/or noisy image pairs available. Intuitively, N2V cannot be expected to outperform methods that have more information available during training. Still, we observe that the denoising performance of Noise2Void drops in moderation and compares favorably to training-free denoising methods.

Alexander Krull, Tim-Oliver Buchholz, Florian Jug• 2018

Related benchmarks

TaskDatasetResultRank
Image DenoisingSIDD (val)
PSNR29.35
105
Image DenoisingDND
PSNR33.37
99
Gaussian DenoisingBSD68
PSNR26.77
89
Image DenoisingBSD300
PSNR (dB)29.34
78
Poisson Image DenoisingBSD68
PSNR31.85
61
Image DenoisingSIDD Benchmark
PSNR31.77
61
Image DenoisingPolyU
PSNR33.83
56
Gaussian DenoisingSet12
Average PSNR27.56
47
Image DenoisingFMD raw (test)
PSNR39.04
45
Image DenoisingKodak
PSNR30.44
45
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