2023
DOI: 10.1177/09596836231211876
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A trainable object finder, selector and identifier for pollen, spores and other things: A step towards automated pollen recognition in lake sediments

Martin Theuerkauf,
Nia Siradze,
Alexander Gillert

Abstract: Pollen records are the most important proxy for reconstructing past terrestrial vegetation. While new approaches for improved quantitative interpretation of pollen data have been developed over the last decades, the availability of pollen records remains mostly limited because pollen samples are still analysed manually, which is a time-consuming task and requires extensive training. Here, we present an approach for automated recognition of pollen and spores from lake sediments using deep convolutional neural n… Show more

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Cited by 2 publications
(2 citation statements)
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“…Given a sufficient number of pollen grains is present in the samples, several thousand birch pollen grains can be measured per F I G U R E 9 Sediment stratigraphy (left), Betula grain sizes (as grain area and mean grain width) and proportion of NAP upland pollen in the Li-Bpa record (Hein et al, 2021). NAP upland pollen percentages are derived from automatic pollen counts with TOFSI (Theuerkauf et al, 2023). The zonation of the sequence is based on a conventionally established, yet unpublished pollen record (data by Brigitte Urban).…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…Given a sufficient number of pollen grains is present in the samples, several thousand birch pollen grains can be measured per F I G U R E 9 Sediment stratigraphy (left), Betula grain sizes (as grain area and mean grain width) and proportion of NAP upland pollen in the Li-Bpa record (Hein et al, 2021). NAP upland pollen percentages are derived from automatic pollen counts with TOFSI (Theuerkauf et al, 2023). The zonation of the sequence is based on a conventionally established, yet unpublished pollen record (data by Brigitte Urban).…”
Section: Discussionmentioning
confidence: 99%
“…1. Pollen recognition: In the first step, the TOFSI algorithm (Theuerkauf et al, 2023) is used to detect and classify pollen grains in scanned pollen samples from lake sediments and peat. TOFSI consists of two convolutional neural networks.…”
Section: Automatic Size Measurementsmentioning
confidence: 99%