Applications in Plant Sciences (Jun 2020)

GinJinn: An object‐detection pipeline for automated feature extraction from herbarium specimens

  • Tankred Ott,
  • Christoph Palm,
  • Robert Vogt,
  • Christoph Oberprieler

DOI
https://doi.org/10.1002/aps3.11351
Journal volume & issue
Vol. 8, no. 6
pp. n/a – n/a

Abstract

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Premise The generation of morphological data in evolutionary, taxonomic, and ecological studies of plants using herbarium material has traditionally been a labor‐intensive task. Recent progress in machine learning using deep artificial neural networks (deep learning) for image classification and object detection has facilitated the establishment of a pipeline for the automatic recognition and extraction of relevant structures in images of herbarium specimens. Methods and Results We implemented an extendable pipeline based on state‐of‐the‐art deep‐learning object‐detection methods to collect leaf images from herbarium specimens of two species of the genus Leucanthemum. Using 183 specimens as the training data set, our pipeline extracted one or more intact leaves in 95% of the 61 test images. Conclusions We establish GinJinn as a deep‐learning object‐detection tool for the automatic recognition and extraction of individual leaves or other structures from herbarium specimens. Our pipeline offers greater flexibility and a lower entrance barrier than previous image‐processing approaches based on hand‐crafted features.

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