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Papers/Learning to Generate Realistic Noisy Images via Pixel-leve...

Learning to Generate Realistic Noisy Images via Pixel-level Noise-aware Adversarial Training

Yuanhao Cai, Xiaowan Hu, Haoqian Wang, Yulun Zhang, Hanspeter Pfister, Donglai Wei

2022-04-06NeurIPS 2021 12DenoisingImage DenoisingNoise EstimationImage Generation
PaperPDFCodeCode

Abstract

Existing deep learning real denoising methods require a large amount of noisy-clean image pairs for supervision. Nonetheless, capturing a real noisy-clean dataset is an unacceptable expensive and cumbersome procedure. To alleviate this problem, this work investigates how to generate realistic noisy images. Firstly, we formulate a simple yet reasonable noise model that treats each real noisy pixel as a random variable. This model splits the noisy image generation problem into two sub-problems: image domain alignment and noise domain alignment. Subsequently, we propose a novel framework, namely Pixel-level Noise-aware Generative Adversarial Network (PNGAN). PNGAN employs a pre-trained real denoiser to map the fake and real noisy images into a nearly noise-free solution space to perform image domain alignment. Simultaneously, PNGAN establishes a pixel-level adversarial training to conduct noise domain alignment. Additionally, for better noise fitting, we present an efficient architecture Simple Multi-scale Network (SMNet) as the generator. Qualitative validation shows that noise generated by PNGAN is highly similar to real noise in terms of intensity and distribution. Quantitative experiments demonstrate that a series of denoisers trained with the generated noisy images achieve state-of-the-art (SOTA) results on four real denoising benchmarks. Part of codes, pre-trained models, and results are available at https://github.com/caiyuanhao1998/PNGAN for comparisons.

Results

TaskDatasetMetricValueModel
DenoisingSIDDPSNR (sRGB)40.07PNGAN
DenoisingSIDDSSIM (sRGB)0.96PNGAN
DenoisingNamPSNR40.78PNGAN
DenoisingNamSSIM0.986PNGAN
DenoisingPolyUPSNR40.55PNGAN
DenoisingPolyUSSIM0.983PNGAN
DenoisingDNDPSNR (sRGB)40.18PNGAN
DenoisingDNDSSIM (sRGB)0.961PNGAN
Noise EstimationSIDDAverage KL Divergence0.153PNGAN
Noise EstimationSIDDPSNR Gap0.84PNGAN
Image DenoisingSIDDPSNR (sRGB)40.07PNGAN
Image DenoisingSIDDSSIM (sRGB)0.96PNGAN
Image DenoisingNamPSNR40.78PNGAN
Image DenoisingNamSSIM0.986PNGAN
Image DenoisingPolyUPSNR40.55PNGAN
Image DenoisingPolyUSSIM0.983PNGAN
Image DenoisingDNDPSNR (sRGB)40.18PNGAN
Image DenoisingDNDSSIM (sRGB)0.961PNGAN
3D ArchitectureSIDDPSNR (sRGB)40.07PNGAN
3D ArchitectureSIDDSSIM (sRGB)0.96PNGAN
3D ArchitectureNamPSNR40.78PNGAN
3D ArchitectureNamSSIM0.986PNGAN
3D ArchitecturePolyUPSNR40.55PNGAN
3D ArchitecturePolyUSSIM0.983PNGAN
3D ArchitectureDNDPSNR (sRGB)40.18PNGAN
3D ArchitectureDNDSSIM (sRGB)0.961PNGAN

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