Denoising images with Fourier Ring Correlation loss

Overview

Denoising images with Fourier Ring Correlation loss

The python code accompanies the working manuscript Image quality measurements and denoising using Fourier Ring Correlations. The main code is used for training denoising networks.

In the notebooks folder all the images shown in the manuscript are generated using jupyter notebooks. The data and network models used in the notebooks are deposited in Zenodo repository

Examples of training FRC neural networks, and additional processing with FRC will be added in the next days.

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