Publication | Closed Access
Invertible Denoising Network: A Light Solution for Real Noise Removal
180
Citations
45
References
2021
Year
Unknown Venue
EngineeringSparse ImagingNoise ReductionDeblurringImage AnalysisData ScienceNoiseComputational ImagingVideo RestorationInvertible NetworksReal Noise RemovalInverse ProblemsComputer ScienceDeep LearningMedical Image ComputingSignal ProcessingClean ImageVideo DenoisingImage DenoisingImage RestorationInvertible Denoising Network
Invertible networks have various benefits for image de-noising since they are lightweight, information-lossless, and memory-saving during back-propagation. However, applying invertible models to remove noise is challenging because the input is noisy, and the reversed output is clean, following two different distributions. We propose an invertible denoising network, InvDN, to address this challenge. InvDN transforms the noisy input into a low-resolution clean image and a latent representation containing noise. To discard noise and restore the clean image, InvDN replaces the noisy latent representation with another one sampled from a prior distribution during reversion. The de-noising performance of InvDN is better than all the existing competitive models, achieving a new state-of-the-art result for the SIDD dataset while enjoying less run time. Moreover, the size of InvDN is far smaller, only having 4.2% of the number of parameters compared to the most recently proposed DANet. Further, via manipulating the noisy latent representation, InvDN is also able to generate noise more similar to the original one. Our code is available at: https://github.com/Yang-Liu1082/InvDN.git.
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