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A new fine‐grained method for automated visual analysis of herbarium specimens: A case study for phenological data extraction
2020
Applications in Plant Sciences
Herbarium specimens represent an outstanding source of material with which to study plant phenological changes in response to climate change. The fine-scale phenological annotation of such specimens is nevertheless highly time consuming and requires substantial human investment and expertise, which are difficult to rapidly mobilize. We trained and evaluated new deep learning models to automate the detection, segmentation, and classification of four reproductive structures of Streptanthus
doi:10.1002/aps3.11368
pmid:32626610
pmcid:PMC7328656
fatcat:bwed35zxdzcbnoiehr7r5almai