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Papers/Transfer Learning from Synthetic to Real-Noise Denoising w...

Transfer Learning from Synthetic to Real-Noise Denoising with Adaptive Instance Normalization

Yoonsik Kim, Jae Woong Soh, Gu Yong Park, Nam Ik Cho

2020-02-26CVPR 2020 6DenoisingImage DenoisingTransfer Learning
PaperPDFCode(official)

Abstract

Real-noise denoising is a challenging task because the statistics of real-noise do not follow the normal distribution, and they are also spatially and temporally changing. In order to cope with various and complex real-noise, we propose a well-generalized denoising architecture and a transfer learning scheme. Specifically, we adopt an adaptive instance normalization to build a denoiser, which can regularize the feature map and prevent the network from overfitting to the training set. We also introduce a transfer learning scheme that transfers knowledge learned from synthetic-noise data to the real-noise denoiser. From the proposed transfer learning, the synthetic-noise denoiser can learn general features from various synthetic-noise data, and the real-noise denoiser can learn the real-noise characteristics from real data. From the experiments, we find that the proposed denoising method has great generalization ability, such that our network trained with synthetic-noise achieves the best performance for Darmstadt Noise Dataset (DND) among the methods from published papers. We can also see that the proposed transfer learning scheme robustly works for real-noise images through the learning with a very small number of labeled data.

Results

TaskDatasetMetricValueModel
DenoisingSIDDPSNR (sRGB)38.95AINDNet
DenoisingSIDDSSIM (sRGB)0.952AINDNet
DenoisingDNDPSNR (sRGB)39.37AINDNet
DenoisingDNDSSIM (sRGB)0.951AINDNet
Image DenoisingSIDDPSNR (sRGB)38.95AINDNet
Image DenoisingSIDDSSIM (sRGB)0.952AINDNet
Image DenoisingDNDPSNR (sRGB)39.37AINDNet
Image DenoisingDNDSSIM (sRGB)0.951AINDNet
3D ArchitectureSIDDPSNR (sRGB)38.95AINDNet
3D ArchitectureSIDDSSIM (sRGB)0.952AINDNet
3D ArchitectureDNDPSNR (sRGB)39.37AINDNet
3D ArchitectureDNDSSIM (sRGB)0.951AINDNet

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