Authors
Leonhard Möckl, Anish R Roy, Petar N Petrov, WE Moerner
Publication date
2020/1/7
Journal
Proceedings of the National Academy of Sciences
Volume
117
Issue
1
Pages
60-67
Publisher
National Academy of Sciences
Description
Background fluorescence, especially when it exhibits undesired spatial features, is a primary factor for reduced image quality in optical microscopy. Structured background is particularly detrimental when analyzing single-molecule images for 3-dimensional localization microscopy or single-molecule tracking. Here, we introduce BGnet, a deep neural network with a U-net-type architecture, as a general method to rapidly estimate the background underlying the image of a point source with excellent accuracy, even when point-spread function (PSF) engineering is in use to create complex PSF shapes. We trained BGnet to extract the background from images of various PSFs and show that the identification is accurate for a wide range of different interfering background structures constructed from many spatial frequencies. Furthermore, we demonstrate that the obtained background-corrected PSF images, for both …
Total citations
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