Real-time pollen monitoring using digital holography
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Published:2020-03-31
Issue:3
Volume:13
Page:1539-1550
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ISSN:1867-8548
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Container-title:Atmospheric Measurement Techniques
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language:en
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Short-container-title:Atmos. Meas. Tech.
Author:
Sauvageat Eric, Zeder Yanick, Auderset Kevin, Calpini Bertrand, Clot Bernard, Crouzy Benoît, Konzelmann Thomas, Lieberherr Gian, Tummon FionaORCID, Vasilatou Konstantina
Abstract
Abstract. We present the first validation of the Swisens Poleno, currently the
only operational automatic pollen monitoring system based on digital
holography. The device provides in-flight images of all coarse
aerosols, and here we develop a two-step classification algorithm that
uses these images to identify a range of pollen taxa. Deterministic
criteria based on the shape of the particle are applied to initially
distinguish between intact pollen grains and other coarse particulate
matter. This first level of discrimination identifies pollen with an
accuracy of 96 %. Thereafter, individual pollen taxa are
recognized using supervised learning techniques. The algorithm is
trained using data obtained by inserting known pollen types into the
device, and out of eight pollen taxa six can be identified with an
accuracy of above 90 %. In addition to the ability to
correctly identify aerosols, an automatic pollen monitoring system
needs to be able to correctly determine particle concentrations. To
further verify the device, controlled chamber experiments using
polystyrene latex beads were performed. This provided reference
aerosols with traceable particle size and number concentrations in order to
ensure particle size and sampling volume were correctly characterized.
Publisher
Copernicus GmbH
Subject
Atmospheric Science
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