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Object detection networks and augmented reality for cellular detection in fluorescence microscopy
Authors
Jill M. Brown
Isabel Diez-Sevilla
+4 more
Christian Eggeling
Katharina Reglinski
David Roberts
Dominic Waithe
Publication date
1 January 2020
Publisher
New York, NY : Rockefeller Univ. Press
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Abstract
Object detection networks are high-performance algorithms famously applied to the task of identifying and localizing objects in photography images. We demonstrate their application for the classification and localization of cells in fluorescence microscopy by benchmarking four leading object detection algorithms across multiple challenging 2D microscopy datasets. Furthermore we develop and demonstrate an algorithm that can localize and image cells in 3D, in close to real time, at the microscope using widely available and inexpensive hardware. Furthermore, we exploit the fast processing of these networks and develop a simple and effective augmented reality (AR) system for fluorescence microscopy systems using a display screen and back-projection onto the eyepiece. We show that it is possible to achieve very high classification accuracy using datasets with as few as 26 images present. Using our approach, it is possible for relatively nonskilled users to automate detection of cell classes with a variety of appearances and enable new avenues for automation of fluorescence microscopy acquisition pipelines. © 2020 Waithe et al
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Last time updated on 23/07/2022