Automatic taxonomic identification based on the Fossil Image Dataset (>415,000 images) and deep convolutional neural networks
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Title
Automatic taxonomic identification based on the Fossil Image Dataset (>415,000 images) and deep convolutional neural networks
Authors
Keywords
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Journal
PALEOBIOLOGY
Volume -, Issue -, Pages 1-22
Publisher
Cambridge University Press (CUP)
Online
2022-06-17
DOI
10.1017/pab.2022.14
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