2023
DOI: 10.1101/2023.12.21.572952
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Leveraging machine learning and citizen science data to describe flowering phenology across South Africa

R. D. Stewart,
N. Bard,
M. van der Bank
et al.

Abstract: SummaryPhenology — the timing of recurring life history events—is strongly linked to climate. Shifts in phenology have important implications for trophic interactions, ecosystem functioning and community ecology. However, data on plant phenology can be time consuming to collect and current records are biased across space and taxonomy.Here, we explore the performance of Convolutional Neural Networks (CNN) for classifying flowering phenology on a very large and taxonomically diverse dataset of citizen science im… Show more

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