C2N: Practical Generative Noise Modeling for Real-World Denoising
- URL: http://arxiv.org/abs/2202.09533v1
- Date: Sat, 19 Feb 2022 05:53:46 GMT
- Title: C2N: Practical Generative Noise Modeling for Real-World Denoising
- Authors: Geonwoon Jang, Wooseok Lee, Sanghyun Son, Kyoung Mu Lee
- Abstract summary: We introduce a Clean-to-Noisy image generation framework, namely C2N, to imitate complex real-world noise without using paired examples.
We construct the noise generator in C2N accordingly with each component of real-world noise characteristics to express a wide range of noise accurately.
- Score: 53.96391787869974
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Learning-based image denoising methods have been bounded to situations where
well-aligned noisy and clean images are given, or samples are synthesized from
predetermined noise models, e.g., Gaussian. While recent generative noise
modeling methods aim to simulate the unknown distribution of real-world noise,
several limitations still exist. In a practical scenario, a noise generator
should learn to simulate the general and complex noise distribution without
using paired noisy and clean images. However, since existing methods are
constructed on the unrealistic assumption of real-world noise, they tend to
generate implausible patterns and cannot express complicated noise maps.
Therefore, we introduce a Clean-to-Noisy image generation framework, namely
C2N, to imitate complex real-world noise without using any paired examples. We
construct the noise generator in C2N accordingly with each component of
real-world noise characteristics to express a wide range of noise accurately.
Combined with our C2N, conventional denoising CNNs can be trained to outperform
existing unsupervised methods on challenging real-world benchmarks by a large
margin.
Related papers
- Realistic Noise Synthesis with Diffusion Models [68.48859665320828]
Deep image denoising models often rely on large amount of training data for the high quality performance.
We propose a novel method that synthesizes realistic noise using diffusion models, namely Realistic Noise Synthesize Diffusor (RNSD)
RNSD can incorporate guided multiscale content, such as more realistic noise with spatial correlations can be generated at multiple frequencies.
arXiv Detail & Related papers (2023-05-23T12:56:01Z) - NoiseTransfer: Image Noise Generation with Contrastive Embeddings [9.322843611215486]
We propose a new generative model that can synthesize noisy images with multiple different noise distributions.
We adopt recent contrastive learning to learn distinguishable latent features of the noise.
Our model can generate new noisy images by transferring the noise characteristics solely from a single reference noisy image.
arXiv Detail & Related papers (2023-01-31T11:09:15Z) - Noise2NoiseFlow: Realistic Camera Noise Modeling without Clean Images [35.29066692454865]
This paper proposes a framework for training a noise model and a denoiser simultaneously.
It relies on pairs of noisy images rather than noisy/clean paired image data.
The trained denoiser is shown to significantly improve upon both supervised and weakly supervised baseline denoising approaches.
arXiv Detail & Related papers (2022-06-02T15:31:40Z) - Learning to Generate Realistic Noisy Images via Pixel-level Noise-aware
Adversarial Training [50.018580462619425]
We propose a novel framework, namely Pixel-level Noise-aware Generative Adrial Network (PNGAN)
PNGAN employs a pre-trained real denoiser to map the fake and real noisy images into a nearly noise-free solution space.
For better noise fitting, we present an efficient architecture Simple Multi-versa-scale Network (SMNet) as the generator.
arXiv Detail & Related papers (2022-04-06T14:09:02Z) - Estimating Fine-Grained Noise Model via Contrastive Learning [11.626812663592416]
We propose an innovative noise model estimation and noise synthesis pipeline for realistic noisy image generation.
Our model learns a noise estimation model with fine-grained statistical noise model in a contrastive manner.
By calibrating noise models of several sensors, our model can be extended to predict other cameras.
arXiv Detail & Related papers (2022-04-03T02:35:01Z) - Rethinking Noise Synthesis and Modeling in Raw Denoising [75.55136662685341]
We introduce a new perspective to synthesize noise by directly sampling from the sensor's real noise.
It inherently generates accurate raw image noise for different camera sensors.
arXiv Detail & Related papers (2021-10-10T10:45:24Z) - Neighbor2Neighbor: Self-Supervised Denoising from Single Noisy Images [98.82804259905478]
We present Neighbor2Neighbor to train an effective image denoising model with only noisy images.
In detail, input and target used to train a network are images sub-sampled from the same noisy image.
A denoising network is trained on sub-sampled training pairs generated in the first stage, with a proposed regularizer as additional loss for better performance.
arXiv Detail & Related papers (2021-01-08T02:03:25Z) - Adaptive noise imitation for image denoising [58.21456707617451]
We develop a new textbfadaptive noise imitation (ADANI) algorithm that can synthesize noisy data from naturally noisy images.
To produce realistic noise, a noise generator takes unpaired noisy/clean images as input, where the noisy image is a guide for noise generation.
Coupling the noisy data output from ADANI with the corresponding ground-truth, a denoising CNN is then trained in a fully-supervised manner.
arXiv Detail & Related papers (2020-11-30T02:49:36Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.