BVI-LOWLIGHT

Citation Author(s):
Alexandra
Malyugina
University of Bristol
Nantheera
Anantrasirichai
University of Bristol
David
Bull
University of Bristol
Submitted by:
Alexandra Malyugina
Last updated:
Thu, 08/04/2022 - 09:33
DOI:
10.21227/zp7a-0683
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Abstract 

One of the weak points of most of denoising algoritms (deep learning based ones) is the training data. Due to no or very limited amount of groundtruth data available, these algorithms are often evaluated using synthetic noise models such as Additive Zero-Mean Gaussian noise. The downside of this approach is that these simple model do not represent noise present in natural imagery. For evaluation of denoising algorithms’ performance in poor light conditions, we need either representative models or real noisy images paired with those we can consider as groundtruth.

Instructions: 

The description can be found on https://github.com/malalejandra/bvi-lowlight

Comments

ddd

Submitted by Mehmet aydin on Wed, 04/12/2023 - 08:27

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