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PoGaIN: Poisson-Gaussian Image Noise Modeling from Paired Samples

DOI:
10.60864/pv6n-0546
Citation Author(s):
Étienne Objois, Kaan Okumuş, Sabine Süsstrunk
Submitted by:
Nicolas Bähler
Last updated:
17 November 2023 - 12:07pm
Document Type:
Poster
Document Year:
2023
Event:
Presenters:
Nicolas Bähler
Paper Code:
6815
 

Image noise can often be accurately fitted to a Poisson-Gaussian distribution. However, estimating the distribution parameters from a noisy image only is a challenging task. Here, we study the case when paired noisy and noise-free samples are accessible. No method is currently available to exploit the noise-free information, which may help to achieve more accurate estimations. 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. We additionally derive the log-likelihood function for further insights and discuss real-world applicability.

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