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A general deep learning model for bird detection in high-resolution airborne imagery.
Weinstein, Ben G; Garner, Lindsey; Saccomanno, Vienna R; Steinkraus, Ashley; Ortega, Andrew; Brush, Kristen; Yenni, Glenda; McKellar, Ann E; Converse, Rowan; Lippitt, Christopher D; Wegmann, Alex; Holmes, Nick D; Edney, Alice J; Hart, Tom; Jessopp, Mark J; Clarke, Rohan H; Marchowski, Dominik; Senyondo, Henry; Dotson, Ryan; White, Ethan P; Frederick, Peter; Ernest, S K Morgan.
Affiliation
  • Weinstein BG; Department of Wildlife Ecology and Conservation, University of Florida, Gainesville, Florida, USA.
  • Garner L; Department of Wildlife Ecology and Conservation, University of Florida, Gainesville, Florida, USA.
  • Saccomanno VR; California Oceans Program, The Nature Conservancy, Sacramento, California, USA.
  • Steinkraus A; Department of Wildlife Ecology and Conservation, University of Florida, Gainesville, Florida, USA.
  • Ortega A; Geomatics Program, University of Florida, Gainesville, Florida, USA.
  • Brush K; Montana State University, Bozeman, Montana, USA.
  • Yenni G; Department of Wildlife Ecology and Conservation, University of Florida, Gainesville, Florida, USA.
  • McKellar AE; Environment and Climate Change Canada, Saskatoon, Saskatchewan, Canada.
  • Converse R; Center for the Advancement of Spatial Informatics Research and Education, University of New Mexico, Albuquerque, New Mexico, USA.
  • Lippitt CD; Center for the Advancement of Spatial Informatics Research and Education, University of New Mexico, Albuquerque, New Mexico, USA.
  • Wegmann A; California Oceans Program, The Nature Conservancy, Sacramento, California, USA.
  • Holmes ND; California Oceans Program, The Nature Conservancy, Sacramento, California, USA.
  • Edney AJ; Department of Zoology, University of Oxford, Oxford, UK.
  • Hart T; Department of Zoology, University of Oxford, Oxford, UK.
  • Jessopp MJ; School of Biological, Earth and Environmental Sciences, University College Cork, Cork, Ireland.
  • Clarke RH; School of Biological Sciences, Monash University, Melbourne, Victoria, Australia.
  • Marchowski D; Ornithological Station, Museum and Institute of Zoology, Polish Academy of Sciences, Gdansk, Poland.
  • Senyondo H; Department of Wildlife Ecology and Conservation, University of Florida, Gainesville, Florida, USA.
  • Dotson R; Quantaero, Nevada, Reno, USA.
  • White EP; Department of Wildlife Ecology and Conservation, University of Florida, Gainesville, Florida, USA.
  • Frederick P; Department of Wildlife Ecology and Conservation, University of Florida, Gainesville, Florida, USA.
  • Ernest SKM; Department of Wildlife Ecology and Conservation, University of Florida, Gainesville, Florida, USA.
Ecol Appl ; 32(8): e2694, 2022 12.
Article in En | MEDLINE | ID: mdl-35708073
ABSTRACT
Advances in artificial intelligence for computer vision hold great promise for increasing the scales at which ecological systems can be studied. The distribution and behavior of individuals is central to ecology, and computer vision using deep neural networks can learn to detect individual objects in imagery. However, developing supervised models for ecological monitoring is challenging because it requires large amounts of human-labeled training data, requires advanced technical expertise and computational infrastructure, and is prone to overfitting. This limits application across space and time. One solution is developing generalized models that can be applied across species and ecosystems. Using over 250,000 annotations from 13 projects from around the world, we develop a general bird detection model that achieves over 65% recall and 50% precision on novel aerial data without any local training despite differences in species, habitat, and imaging methodology. Fine-tuning this model with only 1000 local annotations increases these values to an average of 84% recall and 69% precision by building on the general features learned from other data sources. Retraining from the general model improves local predictions even when moderately large annotation sets are available and makes model training faster and more stable. Our results demonstrate that general models for detecting broad classes of organisms using airborne imagery are achievable. These models can reduce the effort, expertise, and computational resources necessary for automating the detection of individual organisms across large scales, helping to transform the scale of data collection in ecology and the questions that can be addressed.
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Full text: 1 Database: MEDLINE Main subject: Deep Learning Type of study: Diagnostic_studies / Prognostic_studies Limits: Animals / Humans Language: En Journal: Ecol Appl Year: 2022 Type: Article Affiliation country: United States

Full text: 1 Database: MEDLINE Main subject: Deep Learning Type of study: Diagnostic_studies / Prognostic_studies Limits: Animals / Humans Language: En Journal: Ecol Appl Year: 2022 Type: Article Affiliation country: United States