PoGaIN: Poisson-Gaussian Image Noise Modeling from Paired Samples

10/10/2022
by   Nicolas Bähler, et al.
0

Image noise can often be accurately fitted to a Poisson-Gaussian distribution. However, estimating the distribution parameters from only a noisy image is a challenging task. Here, we study the case when paired noisy and noise-free samples are available. No method is currently available to exploit the noise-free information, which holds the promise of achieving more accurate estimates. To fill this gap, we derive a novel, cumulant-based, approach for Poisson-Gaussian noise modeling from paired image samples. We show its improved performance over different baselines with special emphasis on MSE, effect of outliers, image dependence and bias, and additionally derive the log-likelihood function for further insight and discuss real-world applicability.

READ FULL TEXT
research
10/21/2022

Target Aware Poisson-Gaussian Noise Parameters Estimation from Noisy Images

Digital sensors can lead to noisy results under many circumstances. To b...
research
05/23/2021

FBI-Denoiser: Fast Blind Image Denoiser for Poisson-Gaussian Noise

We consider the challenging blind denoising problem for Poisson-Gaussian...
research
02/19/2022

C2N: Practical Generative Noise Modeling for Real-World Denoising

Learning-based image denoising methods have been bounded to situations w...
research
01/11/2018

Minimax Optimality of Sign Test for Paired Heterogeneous Data

Comparing two groups under different conditions is ubiquitous in the bio...
research
08/29/2021

Rethinking Deep Image Prior for Denoising

Deep image prior (DIP) serves as a good inductive bias for diverse inver...
research
12/07/2014

Bayesian Image Restoration for Poisson Corrupted Image using a Latent Variational Method with Gaussian MRF

We treat an image restoration problem with a Poisson noise chan- nel usi...
research
07/15/2023

ExposureDiffusion: Learning to Expose for Low-light Image Enhancement

Previous raw image-based low-light image enhancement methods predominant...

Please sign up or login with your details

Forgot password? Click here to reset