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Conference Paper

Improving Blind Spot Denoising for Microscopy.

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Goncharova,  Anna
Max Planck Institute for Molecular Cell Biology and Genetics, Max Planck Society;

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Honigmann,  Alf
Max Planck Institute for Molecular Cell Biology and Genetics, Max Planck Society;

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Jug,  Florian
Max Planck Institute for Molecular Cell Biology and Genetics, Max Planck Society;

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Krull,  Alexander
Max Planck Institute for Molecular Cell Biology and Genetics, Max Planck Society;

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Citation

Goncharova, A., Honigmann, A., Jug, F., & Krull, A. (2020). Improving Blind Spot Denoising for Microscopy. In A. Bartoli (Ed.), Computer vision - ECCV 2020 workshops: Glasgow, UK, August 23-28, 2020: proceedings: Part 1 (pp. 380-393). Cham: Springer International Publishing.


Cite as: https://hdl.handle.net/21.11116/0000-000A-0C46-B
Abstract
Many microscopy applications are limited by the total amount of usable light and are consequently challenged by the resulting levels of noise in the acquired images. This problem is often addressed via (supervised) deep learning based denoising. Recently, by making assumptions about the noise statistics, self-supervised methods have emerged. Such methods are trained directly on the images that are to be denoised and do not require additional paired training data. While achieving remarkable results, self-supervised methods can produce high-frequency artifacts and achieve inferior results compared to supervised approaches. Here we present a novel way to improve the quality of self-supervised denoising. Considering that light microscopy images are usually diffraction-limited, we propose to include this knowledge in the denoising process. We assume the clean image to be the result of a convolution with a point spread function (PSF) and explicitly include this operation at the end of our neural network. As a consequence, we are able to eliminate high-frequency artifacts and achieve self-supervised results that are very close to the ones achieved with traditional supervised methods.