Soundscapes and deep learning enable tracking biodiversity recovery in tropical forests

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

  • Joerg Mueller - , University of Würzburg (Author)
  • Oliver Mitesser - , University of Würzburg (Author)
  • H. Martin Schaefer - (Author)
  • Sebastian Seibold - , Chair of Forest Zoology (Author)
  • Annika Busse - (Author)
  • Peter Kriegel - , University of Würzburg (Author)
  • Dominik Rabl - , University of Würzburg (Author)
  • Rudy Gelis - (Author)
  • Alejandro Arteaga - (Author)
  • Juan Freile - (Author)
  • Gabriel Augusto Leite - (Author)
  • Tomaz Nascimento de Melo - (Author)
  • John G. Lebien - (Author)
  • Marconi Campos-Cerqueira - (Author)
  • Nico Bluethgen - , Technische Universität Darmstadt (Author)
  • Constance J. Tremlett - , Technische Universität Darmstadt (Author)
  • Dennis Boettger - , Friedrich Schiller University Jena (Author)
  • Heike Feldhaar - , University of Bayreuth (Author)
  • Nina Grella - , University of Bayreuth (Author)
  • Ana Falconi-Lopez - , University of Würzburg, Universidad de las Américas - Ecuador (Author)
  • David A. Donoso - , Universidad de las Américas - Ecuador (Author)
  • Jerome Moriniere - (Author)
  • Zuzana Burivalova - , University of Wisconsin-Madison (Author)

Abstract

Tropical forest recovery is fundamental to addressing the intertwined climate and biodiversity loss crises. While regenerating trees sequester carbon relatively quickly, the pace of biodiversity recovery remains contentious. Here, we use bioacoustics and metabarcoding to measure forest recovery post-agriculture in a global biodiversity hotspot in Ecuador. We show that the community composition, and not species richness, of vocalizing vertebrates identified by experts reflects the restoration gradient. Two automated measures - an acoustic index model and a bird community composition derived from an independently developed Convolutional Neural Network - correlated well with restoration (adj-R-2 = 0.62 and 0.69, respectively). Importantly, both measures reflected composition of non-vocalizing nocturnal insects identified via metabarcoding. We show that such automated monitoring tools, based on new technologies, can effectively monitor the success of forest recovery, using robust and reproducible data.

Details

Original languageGerman
Number of pages12
JournalNature Communications
Volume14
Issue number1
Publication statusPublished - 17 Oct 2023
Peer-reviewedYes

External IDs

PubMed 37848442
Scopus 85174454841
ORCID /0000-0002-7968-4489/work/149439498

Keywords

Sustainable Development Goals

Keywords

  • Acoustic indexes, Arthropod assemblages, Bird, Diversity