WABAD: A world annotated bird acoustic dataset for passive acoustic monitoring

  • Cristian Pérez-Granados
  • , Jon Morant
  • , Kevin F.A. Darras
  • , Oscar H. Marín-Gómez
  • , Irene Mendoza
  • , Miguel A. Muñoz-Mohedano
  • , Eduardo Santamaría-García
  • , Giulia Bastianelli
  • , Alba Márquez-Rodríguez
  • , Michał Budka
  • , Gerard Bota
  • , José M. De la Peña-Rubio
  • , Eladio L.García de la Morena
  • , Manu Santa-Cruz
  • , Pablo de la Nava
  • , Mario Fernández-Tizón
  • , Hugo Sánchez-Mateos
  • , Adrián Barrero
  • , Juan Traba
  • , Tomasz S. Osiejuk
  • Patrick J. Hart, Amanda K. Navine, Andrés F. Montoya Muñoz, Carlos B. de Araujo, Gabriel L.M. Rosa, Ingrid M. Denóbile Torres, Ana L. Camargo Catalano, Cássio Rachid Simões, Diego Llusia, Manuel B. Morales, Pablo Acebes, Juan A. Medina, Nicholas Brown, Christos Astaras, Ilias Karmiris, Elizabeth Navarrete, Maxime Cauchoix, Luc Barbaro, David Funosas, Dominik Arend, Sandra Müeller, Fernando González-García, Alberto González-Romero, Christos Mammides, Michaelangelo Pontikis, Giordano Jacuzzi, Julian D. Olden, Sara P. Bombaci, Gabriel Marcacci, Alain Jacot, Juan P. Zurano, Elena Gangenova, Diego Varela, Facundo Di Sallo, Gustavo A. Zurita, Andrey Atemasov, Junior A. Tremblay, Vincent Lamarre, Anja Hutschenreiter, Alan Monroy-Ojeda, Mauricio Díaz-Vallejo, Sergio Chaparro-Herrera, Robert A. Briers, Renata Sousa-Lima, Thiago Pinheiro, Wigna C. da Silva, Alice Calvente, Anamaria Dal Molin, Alexandre Antonelli, Svetlana Gogoleva, Igo Palko, Hiếu Vũ Trọng, Marina H. Lage Duarte, Natalia Dos Santos Saturnino, Samuel R. Silva, Ana Rainho, Paula Lopes, Karl L. Schuchmann, Marinêz I. Marques, Ana S. de Oliveira, Nick A. Littlewood, Mao Ning Tuanmu, Yi Ru Cheng, Hsuan Chao, Sebastian Kepfer-Rojas, Andrea L. Aguilera, Lluís Brotons, Mariano J. Feldman, Louis Imbeau, Pooja Panwar, Aaron S. Weed, Anant Deshwal, Raiane Vital da Paz, Carlos Salustio-Gomes, Dorgival D. Oliveira-Júnior, Cicero S. Lima-Santos, Mauro Pichorim, Wuyuan Pan, Eben Goodale, Alfredo Attisano, Jörn Theuerkauf, Esther Sebastián-González

Research output: Contribution to journalArticlepeer-review

Abstract

Under the current global biodiversity crisis, there is a need for automated and noninvasive monitoring techniques that can gather large amounts of data cost-effectively at various ecological scales, from local to large spatial scales. These data can then be analyzed to inform stakeholders and decision-makers. One such technique is passive acoustic monitoring, which is commonly coupled with automatic identification of animal species based on their sound. Automated sound analyses usually require the training of sound detection and identification algorithms. These algorithms are based on annotated acoustic datasets which mark the occurrence of sounds of species inside sound recordings. However, compiling large annotated acoustic datasets is time-consuming and requires experts, and therefore, they normally cover reduced spatial, temporal, and taxonomic scales. This data paper presents WABAD, the World Annotated Bird Acoustic Dataset for passive acoustic monitoring. WABAD is designed to provide the public, the research community, and conservation managers with a novel and globally representative annotated acoustic dataset. This database includes 5047 min of audio files annotated to species-level by local experts with the start and end time and the upper and lower frequencies of each identified bird vocalization in the recordings. The database has a wide taxonomic and spatial coverage, including information on 91,931 vocalizations from 1192 bird species recorded at 72 recording sites in 29 recording locations (mainly countries) and distributed across 13 biomes. WABAD can be used, for example, for developing and/or validating automatic species detection algorithms, answering ecological questions, such as assessing geographical variations on bird vocalizations, or comparing acoustic diversity indices with species-based diversity indices. The dataset is published under a Creative Commons Attribution 4.0 International license that permits redistribution and reuse on the condition that the original work is properly credited.

Original languageEnglish
Pages (from-to)e70317
JournalEcology
Volume107
Issue number2
DOIs
Publication statusPublished - 7 Feb 2026

Keywords

  • animal vocalizations
  • automated sound recorder
  • autonomous recording units
  • birds
  • human expert annotation
  • passive acoustic monitoring
  • song
  • soundscape

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