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Machine Learning Using Digitized Herbarium Specimens to Advance Phenological Research.

Authors :
Pearson, Katelin D
Nelson, Gil
Aronson, Myla F J
Bonnet, Pierre
Brenskelle, Laura
Davis, Charles C
Denny, Ellen G
Ellwood, Elizabeth R
Goëau, Hervé
Heberling, J Mason
Joly, Alexis
Lorieul, Titouan
Mazer, Susan J
Meineke, Emily K
Stucky, Brian J
Sweeney, Patrick
White, Alexander E
Soltis, Pamela S
Source :
BioScience; Jul2020, Vol. 70 Issue 7, p610-620, 11p
Publication Year :
2020

Abstract

Machine learning (ML) has great potential to drive scientific discovery by harvesting data from images of herbarium specimens—preserved plant material curated in natural history collections—but ML techniques have only recently been applied to this rich resource. ML has particularly strong prospects for the study of plant phenological events such as growth and reproduction. As a major indicator of climate change, driver of ecological processes, and critical determinant of plant fitness, plant phenology is an important frontier for the application of ML techniques for science and society. In the present article, we describe a generalized, modular ML workflow for extracting phenological data from images of herbarium specimens, and we discuss the advantages, limitations, and potential future improvements of this workflow. Strategic research and investment in specimen-based ML methods, along with the aggregation of herbarium specimen data, may give rise to a better understanding of life on Earth. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00063568
Volume :
70
Issue :
7
Database :
Complementary Index
Journal :
BioScience
Publication Type :
Academic Journal
Accession number :
144505521
Full Text :
https://doi.org/10.1093/biosci/biaa044