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Detectability of the Critically Endangered Araucaria angustifolia Tree Using Worldview-2 Images, Google Earth Engine and UAV-LiDAR

Author

Listed:
  • Felipe Saad

    (Programa de Pós-Graduação em Ecologia e Conservação, Universidade Federal do Paraná, Curitiba 81531-980, Brazil)

  • Sumalika Biswas

    (Smithsonian Conservation Biology Institute, Front Royal, VA 22630, USA)

  • Qiongyu Huang

    (Smithsonian Conservation Biology Institute, Front Royal, VA 22630, USA)

  • Ana Paula Dalla Corte

    (Centro de Excelência em Pesquisas sobre Fixação Carbono na Biomassa—BIOFIX Lab, Universidade Federal do Paraná, Curitiba 81530-00, Brazil)

  • Márcio Coraiola

    (Engenharia Florestal, Pontifícia Universidade Católica do Paraná—PUCPR, Curitiba 80215-901, Brazil)

  • Sarah Macey

    (Smithsonian Conservation Biology Institute, Front Royal, VA 22630, USA)

  • Marcos Bergmann Carlucci

    (Laboratório de Ecologia Funcional de Comunidades (LABEF), Departamento de Botânica, Universidade Federal do Paraná, Curitiba 81531-980, Brazil)

  • Peter Leimgruber

    (Smithsonian Conservation Biology Institute, Front Royal, VA 22630, USA)

Abstract

The Brazilian Atlantic Forest is a global biodiversity hotspot and has been extensively mapped using satellite remote sensing. However, past mapping focused on overall forest cover without consideration of keystone plant resources such as Araucaria angustifolia. A. angustifolia is a critically endangered coniferous tree that is essential for supporting overall biodiversity in the Atlantic Forest. A. angustifolia’s distribution has declined dramatically because of overexploitation and land-use changes. Accurate detection and rapid assessments of the distribution and abundance of this species are urgently needed. We compared two approaches for mapping Araucaria angustifolia across two scales (stand vs. individual tree) at three study sites in Brazil. The first approach used Worldview-2 images and Random Forest in Google Earth Engine to detect A. angustifolia at the stand level, with an accuracy of >90% across all three study sites. The second approach relied on object identification using UAV-LiDAR and successfully mapped individual trees (producer’s/user’s accuracy = 94%/64%) at one study site. Both approaches can be employed in tandem to map remaining stands and to determine the exact location of A. angustifolia trees. Each approach has its own strengths and weaknesses, and we discuss their adoptability by managers to inform conservation of A. angustifolia .

Suggested Citation

  • Felipe Saad & Sumalika Biswas & Qiongyu Huang & Ana Paula Dalla Corte & Márcio Coraiola & Sarah Macey & Marcos Bergmann Carlucci & Peter Leimgruber, 2021. "Detectability of the Critically Endangered Araucaria angustifolia Tree Using Worldview-2 Images, Google Earth Engine and UAV-LiDAR," Land, MDPI, vol. 10(12), pages 1-15, November.
  • Handle: RePEc:gam:jlands:v:10:y:2021:i:12:p:1316-:d:691273
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    References listed on IDEAS

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    1. Joseph Mascaro & Gregory P Asner & David E Knapp & Ty Kennedy-Bowdoin & Roberta E Martin & Christopher Anderson & Mark Higgins & K Dana Chadwick, 2014. "A Tale of Two “Forests”: Random Forest Machine Learning Aids Tropical Forest Carbon Mapping," PLOS ONE, Public Library of Science, vol. 9(1), pages 1-9, January.
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