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Estimating Fine-Grained Noise Model via Contrastive Learning

About

Image denoising has achieved unprecedented progress as great efforts have been made to exploit effective deep denoisers. To improve the denoising performance in realworld, two typical solutions are used in recent trends: devising better noise models for the synthesis of more realistic training data, and estimating noise level function to guide non-blind denoisers. In this work, we combine both noise modeling and estimation, and propose an innovative noise model estimation and noise synthesis pipeline for realistic noisy image generation. Specifically, our model learns a noise estimation model with fine-grained statistical noise model in a contrastive manner. Then, we use the estimated noise parameters to model camera-specific noise distribution, and synthesize realistic noisy training data. The most striking thing for our work is that by calibrating noise models of several sensors, our model can be extended to predict other cameras. In other words, we can estimate cameraspecific noise models for unknown sensors with only testing images, without laborious calibration frames or paired noisy/clean data. The proposed pipeline endows deep denoisers with competitive performances with state-of-the-art real noise modeling methods.

Yunhao Zou, Ying Fu• 2022

Related benchmarks

TaskDatasetResultRank
Noise SynthesisSIDD (test)
DKL0.01
13
Image DenoisingSIDD (S6 camera, ISO 100)
PSNR54.12
6
Image DenoisingSIDD S6 camera, ISO 800
PSNR48.82
6
Image DenoisingSIDD S6 camera, ISO 1600
PSNR49.11
6
Image DenoisingSIDD S6 camera, All ISOs
PSNR50.13
6
Image DenoisingSIDD S6 camera, ISO 3200
PSNR43.05
6
Noise SynthesisSIDD (N6)
KL Divergence0.0165
5
Noise SynthesisSIDD Average
KL Divergence0.0211
5
Noise SynthesisSIDD (GP)
KL Divergence0.0219
5
Noise SynthesisSIDD (G4)
KL Divergence0.0187
5
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