Large-scale avian vocalization detection delivers reliable global biodiversity insights

Author:

Sethi Sarab S.1ORCID,Bick Avery2ORCID,Chen Ming-Yuan3,Crouzeilles Renato4,Hillier Ben V.5,Lawson Jenna1,Lee Chia-Yun6,Liu Shih-Hao6,de Freitas Parruco Celso Henrique7,Rosten Carolyn M.2,Somveille Marius5ORCID,Tuanmu Mao-Ning6ORCID,Banks-Leite Cristina1ORCID

Affiliation:

1. Department of Life Sciences, Imperial College London, London W12 7TA, United Kingdom

2. Norwegian Institute for Nature Research, Trondheim 7034, Norway

3. Department of Forestry and Resources Conservation, National Taiwan University, Taipei 106, Taiwan

4. Mombak, São Paulo 04547-000, Brazil

5. Division of Biosciences, University College London, London WC1E 6AE, United Kingdom

6. Biodiversity Research Center, Academia Sinica, Taipei 11529, Taiwan

7. Independent Researcher, Brazil

Abstract

Tracking biodiversity and its dynamics at scale is essential if we are to solve global environmental challenges. Detecting animal vocalizations in passively recorded audio data offers an automatable, inexpensive, and taxonomically broad way to monitor biodiversity. However, the labor and expertise required to label new data and fine-tune algorithms for each deployment is a major barrier. In this study, we applied a pretrained bird vocalization detection model, BirdNET, to 152,376 h of audio comprising datasets from Norway, Taiwan, Costa Rica, and Brazil. We manually listened to a subset of detections for each species in each dataset, calibrated classification thresholds, and found precisions of over 90% for 109 of 136 species. While some species were reliably detected across multiple datasets, the performance of others was dataset specific. By filtering out unreliable detections, we could extract species and community-level insight into diel (Brazil) and seasonal (Taiwan) temporal scales, as well as landscape (Costa Rica) and national (Norway) spatial scales. Our findings demonstrate that, with relatively fast but essential local calibration, a single vocalization detection model can deliver multifaceted community and species-level insight across highly diverse datasets; unlocking the scale at which acoustic monitoring can deliver immediate applied impact.

Funder

National Science and Technology Council

Academia Sinica

Royal Society

Miljødirektoratet

UKRI | Natural Environment Research Council

Publisher

Proceedings of the National Academy of Sciences

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Shazam for birds;Proceedings of the National Academy of Sciences;2024-08-26

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