The BirdNET app, a free machine-learning powered tool that can identify over 3,000 birds by sound alone, generates reliable scientific data and makes it easier for people to contribute citizen-science data on birds by simply recording sounds.
Credit: Ashakur Rahaman, Yang Center/Cornell Lab of Ornithology (CC-BY 4.0, https://creativecommons.org/licenses/by/4.0/)
The BirdNET app, a free machine-learning powered tool that can identify over 3,000 birds by sound alone, generates reliable scientific data and makes it easier for people to contribute citizen-science data on birds by simply recording sounds.
An article publishing June 28th in the open access journal PLOS Biology by Connor Wood and colleagues in the K. Lisa Yang Center for Conservation Bioacoustics at the Cornell Lab of Ornithology, U.S. suggests that the BirdNET app lowers the barrier to citizen science because it doesn’t require bird-identification skills to participate. Users simply listen for birds and tap the app to record. BirdNET uses artificial intelligence to automatically identify the species by sound and captures the recording for use in research.
“Our guiding design principles were that we needed an accurate algorithm and a simple user interface,” said study co-author Stefan Kahl in the Yang Center at the Cornell Lab, who led the technical development. “Otherwise, users would not return to the app.” The results exceeded expectations: Since its launch in 2018, more than 2.2 million people have contributed data.
To test whether the app could generate reliable scientific data, the authors selected four test cases in which conventional research had already provided robust answers. Their results show that BirdNET app data successfully replicated known patterns of song dialects in North American and European songbirds and accurately mapped a bird migration on both continents.
Validating the reliability of the app data for research purposes was the first step in what they hope will be a long-term, global research effort—not just for birds, but ultimately for all wildlife and indeed entire soundscapes. Data used in the four test cases is publicly available, and the authors are working on making the entire dataset open.
“The most exciting part of this work is how simple it is for people to participate in bird research and conservation,” Wood adds. “You don’t need to know anything about birds, you just need a smartphone, and the BirdNET app can then provide both you and the research team with a prediction for what bird you’ve heard. This has led to tremendous participation worldwide, which translates to an incredible wealth of data. It’s really a testament to an enthusiasm for birds that unites people from all walks of life.”
The BirdNET app is part of the Cornell Lab of Ornithology’s suite of tools, including the educational Merlin Bird ID app and citizen-science apps eBird, NestWatch, and Project FeederWatch, which together have generated more than 1 billion bird observations, sounds, and photos from participants around the world for use in science and conservation.
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In your coverage, please use this URL to provide access to the freely available paper in PLOS Biology: http://journals.plos.org/plosbiology/article?id=10.1371/journal.pbio.3001670
Citation: Wood CM, Kahl S, Rahaman A, Klinck H (2022) The machine learning–powered BirdNET App reduces barriers to global bird research by enabling citizen science participation. PLoS Biol 20(6): e3001670. https://doi.org/10.1371/journal.pbio.3001670
Author Countries: United States
Funding: Funding was provided by Jake Holshuh, the Arthur Vining Davis Foundation, the European Union, the European Social Fund for Germany, the Cornell Lab of Ornithology, the German Federal Ministry of Education and Research in the program of Entrepreneurial Regions InnoProfileTransfer in the project group localizIT (funding code 03IPT608X), and Chemnitz Technical University. All funding was secured by HK and SK. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
Journal
PLoS Biology
DOI
10.1371/journal.pbio.3001670
Method of Research
Observational study
Subject of Research
Animals
COI Statement
Competing interests: The authors have declared that no competing interests exist. SK developed the app but has made it freely available and receives no financial benefit for downloads, submissions, or other usage.