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Variational Denoising Network: Toward Blind Noise Modeling and Removal

About

Blind image denoising is an important yet very challenging problem in computer vision due to the complicated acquisition process of real images. In this work we propose a new variational inference method, which integrates both noise estimation and image denoising into a unique Bayesian framework, for blind image denoising. Specifically, an approximate posterior, parameterized by deep neural networks, is presented by taking the intrinsic clean image and noise variances as latent variables conditioned on the input noisy image. This posterior provides explicit parametric forms for all its involved hyper-parameters, and thus can be easily implemented for blind image denoising with automatic noise estimation for the test noisy image. On one hand, as other data-driven deep learning methods, our method, namely variational denoising network (VDN), can perform denoising efficiently due to its explicit form of posterior expression. On the other hand, VDN inherits the advantages of traditional model-driven approaches, especially the good generalization capability of generative models. VDN has good interpretability and can be flexibly utilized to estimate and remove complicated non-i.i.d. noise collected in real scenarios. Comprehensive experiments are performed to substantiate the superiority of our method in blind image denoising.

Zongsheng Yue, Hongwei Yong, Qian Zhao, Lei Zhang, Deyu Meng• 2019

Related benchmarks

TaskDatasetResultRank
Image DenoisingBSD68
PSNR33.9
404
Image DenoisingSIDD (val)
PSNR39.29
153
Image DenoisingDND
PSNR39.39
135
Image DenoisingBSD68 (test)
PSNR29.02
129
Image DenoisingSIDD (test)
PSNR39.28
102
Image DenoisingSIDD
PSNR39.28
102
Image DenoisingDND (test)
PSNR39.38
94
Image DenoisingSIDD 1 (test)
PSNR39.28
89
Image DenoisingSIDD Benchmark
PSNR39.49
80
Image DenoisingDND benchmark (test)
PSNR39.38
65
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