Literature DB >> 29200929

Applications of deep convolutional neural networks to digitized natural history collections.

Eric Schuettpelz1, Paul B Frandsen2, Rebecca B Dikow2, Abel Brown3, Sylvia Orli1, Melinda Peters1, Adam Metallo2, Vicki A Funk1, Laurence J Dorr1.   

Abstract

Natural history collections contain data that are critical for many scientific endeavors. Recent efforts in mass digitization are generating large datasets from these collections that can provide unprecedented insight. Here, we present examples of how deep convolutional neural networks can be applied in analyses of imaged herbarium specimens. We first demonstrate that a convolutional neural network can detect mercury-stained specimens across a collection with 90% accuracy. We then show that such a network can correctly distinguish two morphologically similar plant families 96% of the time. Discarding the most challenging specimen images increases accuracy to 94% and 99%, respectively. These results highlight the importance of mass digitization and deep learning approaches and reveal how they can together deliver powerful new investigative tools.

Entities:  

Keywords:  convolutional neural networks; deep learning; machine learning; mass digitization; natural history collections

Year:  2017        PMID: 29200929      PMCID: PMC5680669          DOI: 10.3897/BDJ.5.e21139

Source DB:  PubMed          Journal:  Biodivers Data J        ISSN: 1314-2828


  6 in total

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Authors:  Kevin J Gaston; Mark A O'Neill
Journal:  Philos Trans R Soc Lond B Biol Sci       Date:  2004-04-29       Impact factor: 6.237

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3.  Computer vision applied to herbarium specimens of German trees: testing the future utility of the millions of herbarium specimen images for automated identification.

Authors:  Jakob Unger; Dorit Merhof; Susanne Renner
Journal:  BMC Evol Biol       Date:  2016-11-16       Impact factor: 3.260

4.  Going deeper in the automated identification of Herbarium specimens.

Authors:  Jose Carranza-Rojas; Herve Goeau; Pierre Bonnet; Erick Mata-Montero; Alexis Joly
Journal:  BMC Evol Biol       Date:  2017-08-11       Impact factor: 3.260

5.  Mass digitization of scientific collections: New opportunities to transform the use of biological specimens and underwrite biodiversity science.

Authors:  Reed S Beaman; Nico Cellinese
Journal:  Zookeys       Date:  2012-07-20       Impact factor: 1.546

6.  The US Virtual Herbarium: working with individual herbaria to build a national resource.

Authors:  Mary E Barkworth; Zack E Murrell
Journal:  Zookeys       Date:  2012-07-20       Impact factor: 1.546

  6 in total
  10 in total

Review 1.  The history and impact of digitization and digital data mobilization on biodiversity research.

Authors:  Gil Nelson; Shari Ellis
Journal:  Philos Trans R Soc Lond B Biol Sci       Date:  2018-11-19       Impact factor: 6.237

Review 2.  Herbarium data: Global biodiversity and societal botanical needs for novel research.

Authors:  Shelley A James; Pamela S Soltis; Lee Belbin; Arthur D Chapman; Gil Nelson; Deborah L Paul; Matthew Collins
Journal:  Appl Plant Sci       Date:  2018-02-28       Impact factor: 1.936

3.  An algorithm competition for automatic species identification from herbarium specimens.

Authors:  Damon P Little; Melissa Tulig; Kiat Chuan Tan; Yulong Liu; Serge Belongie; Christine Kaeser-Chen; Fabián A Michelangeli; Kiran Panesar; R V Guha; Barbara A Ambrose
Journal:  Appl Plant Sci       Date:  2020-07-01       Impact factor: 1.936

4.  Applying machine learning to investigate long-term insect-plant interactions preserved on digitized herbarium specimens.

Authors:  Emily K Meineke; Carlo Tomasi; Song Yuan; Kathleen M Pryer
Journal:  Appl Plant Sci       Date:  2020-07-01       Impact factor: 1.936

5.  Generating segmentation masks of herbarium specimens and a data set for training segmentation models using deep learning.

Authors:  Alexander E White; Rebecca B Dikow; Makinnon Baugh; Abigail Jenkins; Paul B Frandsen
Journal:  Appl Plant Sci       Date:  2020-07-01       Impact factor: 1.936

6.  Using computer vision on herbarium specimen images to discriminate among closely related horsetails (Equisetum).

Authors:  Kathleen M Pryer; Carlo Tomasi; Xiaohan Wang; Emily K Meineke; Michael D Windham
Journal:  Appl Plant Sci       Date:  2020-07-01       Impact factor: 1.936

7.  A benchmark dataset of herbarium specimen images with label data.

Authors:  Mathias Dillen; Quentin Groom; Simon Chagnoux; Anton Güntsch; Alex Hardisty; Elspeth Haston; Laurence Livermore; Veljo Runnel; Leif Schulman; Luc Willemse; Zhengzhe Wu; Sarah Phillips
Journal:  Biodivers Data J       Date:  2019-02-08

8.  The Herbarium 2021 Half-Earth Challenge Dataset and Machine Learning Competition.

Authors:  Riccardo de Lutio; John Y Park; Kimberly A Watson; Stefano D'Aronco; Jan D Wegner; Jan J Wieringa; Melissa Tulig; Richard L Pyle; Timothy J Gallaher; Gillian Brown; Gordon Guymer; Andrew Franks; Dhahara Ranatunga; Yumiko Baba; Serge J Belongie; Fabián A Michelangeli; Barbara A Ambrose; Damon P Little
Journal:  Front Plant Sci       Date:  2022-02-01       Impact factor: 5.753

9.  Designing an Herbarium Digitisation Workflow with Built-In Image Quality Management.

Authors:  Abraham Nieva de la Hidalga; Paul L Rosin; Xianfang Sun; Ann Bogaerts; Niko De Meeter; Sofie De Smedt; Maarten Strack van Schijndel; Paul Van Wambeke; Quentin Groom
Journal:  Biodivers Data J       Date:  2020-03-26

10.  Assessment of North American arthropod collections: prospects and challenges for addressing biodiversity research.

Authors:  Neil S Cobb; Lawrence F Gall; Jennifer M Zaspel; Nicolas J Dowdy; Lindsie M McCabe; Akito Y Kawahara
Journal:  PeerJ       Date:  2019-11-25       Impact factor: 2.984

  10 in total

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