2022
DOI: 10.1021/acssensors.2c01890
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Virtual Impactor-Based Label-Free Pollen Detection using Holography and Deep Learning

Abstract: Exposure to bio-aerosols such as pollen can lead to adverse health effects. There is a need for a portable and cost-effective device for long-term monitoring and quantification of various types of pollen. To address this need, we present a mobile and cost-effective label-free sensor that takes holographic images of flowing particulate matter (PM) concentrated by a virtual impactor, which selectively slows down and guides particles larger than 6 μm to fly through an imaging window. The flowing particles are ill… Show more

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Cited by 9 publications
(3 citation statements)
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“…That is especially noticeable on larger data sets with a higher number of pollen taxa. Deep learning methods have been also used successfully to classify pollen types from holographic images of flowing particle 28 in a mobile and cost-effective sensor, as well as to classify pollen types from scattering images 29 . Recent approaches in the field of automatic pollen classification utilize multi-modal identification, for example combining light-induced fluorescence and elastic light scattering data as in Rapid-E (Plair SA, Geneva, Switzerland) 8 , or adding also holography on these as in Poleno (Swisens AG, Horw, Switzerland) 30 .…”
Section: Related Workmentioning
confidence: 99%
“…That is especially noticeable on larger data sets with a higher number of pollen taxa. Deep learning methods have been also used successfully to classify pollen types from holographic images of flowing particle 28 in a mobile and cost-effective sensor, as well as to classify pollen types from scattering images 29 . Recent approaches in the field of automatic pollen classification utilize multi-modal identification, for example combining light-induced fluorescence and elastic light scattering data as in Rapid-E (Plair SA, Geneva, Switzerland) 8 , or adding also holography on these as in Poleno (Swisens AG, Horw, Switzerland) 30 .…”
Section: Related Workmentioning
confidence: 99%
“…Addressing the need for a portable and cost-effective device for long-term monitoring and quantification of various types of pollen which affect human health, Lou et al [38] presented a label-free sensor that takes holographic images of flowing particulate matter (PM) concentrated by a virtual impactor, which selectively guides particles of a specific size (larger than 6 μm) to fly through an imaging window. The inline holograms cast on a CMOS image sensor due to the flowing particles illuminated by a pulsed laser diode enable particle detection based on deep learning techniques.…”
Section: Optical Technologiesmentioning
confidence: 99%
“…However, this method has an underlying assumption that the variable chosen FIGURE 1 AUM photonic system [comprising of a continuous wave laser light source at the bottom on the front side, to illuminate the target volume of air, and, a position sensing photodetector at the top on the front side, to detect the back scattered laser light from the target volume. Optical filters in front of both laser source and the photodetector ensures that only the particular wavelength of light from the source passes through and falls back on the photodetector after scattering from microbes in target volume of air [Picture adopted from Tatavarti, 2021 [38]].…”
Section: Signal Processing Techniques For Els Measurementsmentioning
confidence: 99%