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deadtrees.earth — An open-access and interactive database for centimeter-scale aerial imagery to uncover global tree mortality dynamics

  • Clemens Mosig*
  • , Janusch Vajna-Jehle
  • , Miguel D. Mahecha
  • , Yan Cheng
  • , Henrik Hartmann
  • , David Montero
  • , Samuli Junttila
  • , Stéphanie Horion
  • , Mirela Beloiu Schwenke
  • , Michael J. Koontz
  • , Khairul Nizam Abdul Maulud
  • , Stephen Adu-Bredu
  • , Djamil Al-Halbouni
  • , Muhammad Ali
  • , Matthew Allen
  • , Jan Altman
  • , Lot Amorós
  • , Claudia Angiolini
  • , Rasmus Astrup
  • , Hassan Awada
  • Caterina Barrasso, Harm Bartholomeus, Pieter S.A. Beck, Aurora Bozzini, Joshua Braun-Wimmer, Benjamin Brede, Fabio Marcelo Breunig, Stefano Brugnaro, Allan Buras, Vicente Burchard-Levine, Jesús Julio Camarero, Anna Candotti, Luka Capuder, Erik Carrieri, Mauro Centritto, Gherardo Chirici, Myriam Cloutier, Dhemerson Conciani, KC C. Cushman, James W. Dalling, Phuong D. Dao, Jan Dempewolf, Martin Denter, Marcel Dogotari, Ricardo Díaz-Delgado, Simon Ecke, Jana Eichel, Anette Eltner, André Fabbri, Maximilian Fabi, Fabian Fassnacht, Matheus Pinheiro Ferreira, Fabian Jörg Fischer, Julian Frey, Annett Frick, Jose Fuentes, Selina Ganz, Matteo Garbarino, Milton García, Matthias Gassilloud, Antonio Gazol, Guillermo Gea-Izquierdo, Kilian Gerberding, Marziye Ghasemi, Francesca Giannetti, Jeffrey Gillan, Roy Gonzalez, Carl Gosper, Terry Greene, Konrad Greinwald, Stuart Grieve, André Große-Stoltenberg, Jesus Aguirre Gutierrez, Anna Göritz, Peter Hajek, David Hedding, Jan Hempel, Stien Heremans, Melvin Hernández, Marco Heurich, Eija Honkavaara, Bernhard Höfle, Robert Jackisch, Tommaso Jucker, Jesse M. Kalwij, Sebastian Kepfer-Rojas, Pratima Khatri-Chhetri, Till Kleinebecker, Hans Joachim Klemmt, Tomáš Klouček, Niko Koivumäki, Nagesh Kolagani, Jan Komárek, Kirill Korznikov, Bartłomiej Kraszewski, Stefan Kruse, Robert Krüger, Helga Kuechly, Ivan H.Y. Kwong, Etienne Laliberté, Liam Langan, Hooman Latifi, Claudia Leal-Medina, Jan R.K. Lehmann, Linyuan Li, Emily Lines, Maciej Lisiewicz, Javier Lopatin, Arko Lucieer, Antonia Ludwig, Marvin Ludwig, Päivi Lyytikäinen-Saarenmaa, Qin Ma, Nicolas Mansuy, José Manuel Peña, Giovanni Marino, Michael Maroschek, M. Pilar Martín, Darío Martín-Benito, Pavan Matham, Sabrina Mazzoni, Fabio Meloni, Annette Menzel, Hanna Meyer, Mojdeh Miraki, Gerardo Moreno, Daniel Moreno-Fernández, Helene C. Muller-Landau, Mirko Mälicke, Jakobus Möhring, Jana Müllerova, Setti Sridhara Naidu, Davide Nardi, Paul Neumeier, Mihai Daniel Nita, Roope Näsi, Lars Oppgenoorth, Sagynbek Orunbaev, Melanie Palmer, Thomas Paul, Mattis Pfenning, Alastair Potts, Gudala Laxmi Prasanna, Suzanne Prober, Stefano Puliti, Antonio J. Pérez-Luque, Oscar Pérez-Priego, Chris Reudenbach, Jesús Revuelto, Gonzalo Rivas-Torres, Philippe Roberge, Pier Paolo Roggero, Christian Rossi, Nadine Katrin Ruehr, Paloma Ruiz-Benito, Christian Mestre Runge, Gabriele Giuseppe Antonio Satta, Bruno Scanu, Michael Scherer-Lorenzen, Felix Schiefer, Christopher Schiller, Jacob Schladebach, Marie Therese Schmehl, Jonathan Schmid, Tristan Alexander Schmidt, Selina Schwarz, Rupert Seidl, Thomas Seifert, Ana Seifert Barba, Elham Shafeian, Aurélie Shapiro, Leopoldo de Simone, Hormoz Sohrabi, Salim Soltani, Laura Sotomayor, Ben Sparrow, Benjamin S.C. Steer, Matt Stenson, Benjamin Stöckigt, Yanjun Su, Juha Suomalainen, Elisa Tamudo, Mauro J.Tognetti Barbieri, Enrico Tomelleri, Michele Torresani, Katerina Trepekli, Saif Ullah, Sami Ullah, Josefine Umlauft, Nicolás Vargas-Ramírez, Can Vatandaslar, Vladimir Visacki, Michele Volpi, Vicente Vásquez, Christine Wallis, Ben Weinstein, Hannah Weiser, Serge Wich, Tagle Casapia Ximena, Pablo J. Zarco-Tejada, Katherine Zdunic, Katarzyna Zielewska-Büttner, Raquel Alves de Oliveira, Liz van Wagtendonk, Vincent von Dosky, Teja Kattenborn
*Autor correspondiente de este trabajo
  • Leipzig University
  • Center for Scalable Data Analytics and Artificial Intelligence (ScaDS.AI)
  • University of Freiburg
  • German Center for Integrative Biodiversity Research (iDiv)
  • University of Copenhagen
  • Bundesforschungsinstitut fur Kulturpflanzen
  • Georg-August-Universität Göttingen
  • Max Planck Institute for Biogeochemistry
  • University of Kuopio
  • ETH Zurich
  • United States Geological Survey
  • Universiti Kebangsaan Malaysia
  • Forestry Research Institute of Ghana (FORIG)
  • University of Cambridge
  • Czech Academy of Sciences
  • Czech University of Life Sciences Prague
  • Dronecoria
  • National Biodiversity Future Center (NBFC)
  • Norwegian Institute of Bioeconomy Research
  • University of Sassari
  • National Biodiversity Future Centre
  • Technische Universität Dresden
  • Wageningen University & Research
  • European Commission Joint Research Centre Institute
  • University of Padua
  • Helmholtzcentre Potsdam GFZ German Research Centre for Geosciences
  • Federal University of Parana
  • Technical University of Munich
  • CSIC
  • CSIC - Pyrenean Institute of Ecology
  • Free University of Bozen-Bolzano
  • Slovenian Forestry Institute
  • Université di Torino
  • National Research Council of Italy
  • University of Florence
  • University of Montreal
  • Amazon Environmental Research Institute
  • Oak Ridge National Lab
  • University of Illinois at Urbana-Champaign
  • Colorado State University
  • Bavarian State Institute of Forestry
  • Justus Liebig University Giessen
  • Doñana Biological Station-CSIC
  • Utrecht University
  • Free University of Berlin
  • Universidade de São Paulo
  • University of Bristol
  • Luftbild Umwelt Planung GmbH (LUP)
  • Universidad del Valle
  • Forest Research Institute (FVA)
  • Smithsonian Institution
  • K.N. Toosi University of Technology
  • University of Arizona
  • Universidad de Tolima
  • Western Australian Department of Biodiversity
  • New Zealand's Department of Conservation
  • Queen Mary University of London
  • University of Oxford
  • University of South Africa
  • Research Institute for Nature and Forest (INBO)
  • Bavarian Forest National Park
  • Inland Norway University of Applied Sciences
  • National Land Survey of Finland
  • Ruprecht-Karls-Universität Heidelberg
  • Berlin Institute of Technology (TU Berlin)
  • Karlsruhe Institute of Technology
  • University of Johannesburg
  • University of Washington
  • Watershed Support Services and Activities Network (WASSAN)
  • Forest Research Institute
  • Alfred Wegener Institute Helmholtz Centre for Polar and Marine Research
  • World Wide Fund for Nature (WWF) Germany
  • The Chinese University of Hong Kong
  • Data and Modelling Centre
  • University of Münster
  • Beijing Forestry University
  • Universidad Adolfo Ibáñez
  • Data Observatory Foundation
  • Universidad de Chile
  • University of Tasmania
  • Nanjing Normal University
  • Natural Resources Canada
  • Nationalpark Berchtesgaden
  • Tarbiat Modares University
  • University of Extremadura
  • Universidad de Alcalá
  • hydrocode GmbH
  • Faculty of Environment
  • Transilvania University of Brasov
  • University of Marburg
  • American University of Central Asia
  • Scion Research
  • Nelson Mandela University
  • Commonwealth Scientific and Industrial Research Organization
  • University of Córdoba
  • Stanford University
  • Swiss National Park
  • University of Potsdam
  • University of Saskatchewan
  • Food and Agriculture Organization of the United Nations
  • University of Siena
  • University of Adelaide
  • Terrestrial Ecosystem Research Network (TERN)
  • CAS - Institute of Botany
  • Vorttex AP
  • National and Kapodistrian University of Athens
  • CAS - Xinjiang Institute of Ecology and Geography
  • University of Kohsar
  • Universidad Nacional Autónoma de México
  • Artvin Coruh University
  • University of Georgia
  • University of Novi Sad
  • Swiss Data Science Center
  • University of Florida
  • Liverpool John Moores University
  • Instituto de Investigaciones de la Amazonía Peruana
  • CSIC - Institute for Sustainable Agriculture
  • unique land use GmbH

Producción científica: Contribución a una revistaArtículorevisión exhaustiva

7 Citas (Scopus)

Resumen

Excessive tree mortality is a global concern and remains poorly understood as it is a complex phenomenon. We lack global and temporally continuous coverage on tree mortality data. Ground-based observations on tree mortality, e.g., derived from national inventories, are very sparse, and may not be standardized or spatially explicit. Earth observation data, combined with supervised machine learning, offer a promising approach to map overstory tree mortality in a consistent manner over space and time. However, global-scale machine learning requires broad training data covering a wide range of environmental settings and forest types. Low altitude observation platforms (e.g., drones or airplanes) provide a cost-effective source of training data by capturing high-resolution orthophotos of overstory tree mortality events at centimeter-scale resolution. Here, we introduce deadtrees.earth, an open-access platform hosting more than two thousand centimeter-resolution orthophotos, covering more than 1,000,000 ha, of which more than 58,000 ha are manually annotated with live/dead tree classifications. This community-sourced and rigorously curated dataset can serve as a comprehensive reference dataset to uncover tree mortality patterns from local to global scales using space-based Earth observation data and machine learning models. This will provide the basis to attribute tree mortality patterns to environmental changes or project tree mortality dynamics to the future. The open nature of deadtrees.earth, together with its curation of high-quality, spatially representative, and ecologically diverse data will continuously increase our capacity to uncover and understand tree mortality dynamics.

Idioma originalInglés
Número de artículo115027
PublicaciónRemote Sensing of Environment
Volumen332
DOI
EstadoPublicada - 1 ene. 2026

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