Botany One on Nostr: Gillespie and colleagues developed a deep learning model, Deepbiosphere, using a ...
Gillespie and colleagues developed a deep learning model, Deepbiosphere, using a modified convolutional neural network architecture to fed with combined aerial imagery from the National Agriculture Imagery Program with over 650,000 plant observations from citizen scientists across California. The model was trained to predict the presence of 2,221 plant species. Its performance was compared to traditional modeling approaches like MaxEnt and Random Forest.
Published at
2024-09-17 11:30:06Event JSON
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