A deep learning approach to photo–identification demonstrates high performance on two dozen cetacean species

Author:

Patton Philip T.12ORCID,Cheeseman Ted34ORCID,Abe Kenshin5,Yamaguchi Taiki5,Reade Walter6,Southerland Ken4,Howard Addison6,Oleson Erin M.2ORCID,Allen Jason B.7,Ashe Erin8ORCID,Athayde Aline9ORCID,Baird Robin W.10ORCID,Basran Charla11ORCID,Cabrera Elsa12,Calambokidis John10ORCID,Cardoso Júlio9ORCID,Carroll Emma L.13ORCID,Cesario Amina1415ORCID,Cheney Barbara J.16ORCID,Corsi Enrico10ORCID,Currie Jens117ORCID,Durban John W.18,Falcone Erin A.19,Fearnbach Holly18,Flynn Kiirsten10,Franklin Trish320ORCID,Franklin Wally320ORCID,Galletti Vernazzani Bárbara1217,Genov Tilen2122ORCID,Hill Marie223,Johnston David R.24,Keene Erin L.19,Mahaffy Sabre D.10ORCID,McGuire Tamara L.25,McPherson Liah1,Meyer Catherine26,Michaud Robert27,Miliou Anastasia28ORCID,Orbach Dara N.29,Pearson Heidi C.30ORCID,Rasmussen Marianne H.11ORCID,Rayment William J.31,Rinaldi Caroline32,Rinaldi Renato32,Siciliano Salvatore33ORCID,Stack Stephanie1734ORCID,Tintore Beatriz28ORCID,Torres Leigh G.35,Towers Jared R.36ORCID,Trotter Cameron37,Tyson Moore Reny7ORCID,Weir Caroline R.38ORCID,Wellard Rebecca3940ORCID,Wells Randall7ORCID,Yano Kymberly M.224ORCID,Zaeschmar Jochen R.41ORCID,Bejder Lars142ORCID

Affiliation:

1. Marine Mammal Research Program, Hawai'i Institute of Marine Biology University of Hawai‘i at Mānoa Kāne'ohe Hawai'i USA

2. NOAA Fisheries Pacific Islands Fisheries Science Center Honolulu Hawai'i USA

3. Marine Ecological Research Centre Southern Cross University Lismore New South Wales Australia

4. Happywhale.com Santa Cruz California USA

5. Preferred Networks, Inc. Chiyoda‐ku Tokyo Japan

6. Google, Kaggle San Francisco California USA

7. Chicago Zoological Society's Sarasota Dolphin Research Program c/o Mote Marine Laboratory Sarasota Florida USA

8. Oceans Initiative Seattle Washington USA

9. Projeto Baleia à Vista (ProBaV) Ilhabela Brazil

10. Cascadia Research Collective Olympia Washington USA

11. Research Center in Húsavík University of Iceland Húsavík Iceland

12. Centro de Conservación Cetacea (CCC) Santiago Chile

13. School of Biological Sciences University of Auckland‐Waipapa Taumata Rau Auckland New Zealand

14. Tethys Research Institute Milan Italy

15. The Swire Institute of Marine Science The University of Hong Kong Hong Kong Hong Kong

16. School of Biological Sciences University of Aberdeen Cromarty UK

17. Pacific Whale Foundation Wailuku Hawai'i USA

18. SR3, SeaLife Response, Rehabilitation and Research Des Moines Washington USA

19. Marine Ecology and Telemetry Research Seabeck Washington USA

20. The Oceania Project Hervey Bay Queensland Australia

21. Morigenos‐Slovenian Marine Mammal Society Piran Slovenia

22. Sea Mammal Research Unit Scottish Oceans Institute, University of St Andrews St Andrews UK

23. Cooperative Institute for Marine and Atmospheric Research Research Corporation of the University of Hawai'i Honolulu Hawai'i USA

24. Marine Science Department, Te Tari Putaiao Taimoana University of Otago Otago New Zealand

25. The Cook Inlet Beluga Whale Photo–ID Project Anchorage Alaska USA

26. School of Biological Sciences, Te Kura Mātauranga Koiora University of Auckland Auckland New Zealand

27. Groupe de Recherche et D'éducation sur les Mammifères Marins (GREMM) Tadoussac Québec Canada

28. Archipelagos Institute of Marine Conservation Samos Island Greece

29. Department of Life Sciences Texas A&M University‐Corpus Christi Corpus Christi Texas USA

30. Department of Natural Sciences University of Alaska Southeast Juneau Alaska USA

31. Department of Marine Science‐Te Tari Pūtaiao Taimoana University of Otago Dunedin New Zealand

32. L'association Evasion Tropicale Bouillante Guadeloupe

33. Departamento de Ciências Biológicas Escola Nacional de Saúde Pública/Fiocruz Rio de Janeiro Brazil

34. Pacific Whale Foundation Australia Urangan Queensland Australia

35. Marine Mammal Institute, Oregon State University Newport Oregon USA

36. Bay Cetology Alert Bay British Columbia Canada

37. School of Engineering Newcastle University Newcastle UK

38. Falklands Conservation Stanley Falkland Islands

39. Centre for Marine Science and Technology Curtin University Bentley Western Australia Australia

40. Project ORCA Perth Western Australia Australia

41. Far Out Ocean Research Collective Paihia New Zealand

42. Zoophysiology, Department of Bioscience Aarhus University Aarhus Denmark

Abstract

Abstract Researchers can investigate many aspects of animal ecology through noninvasive photo–identification. Photo–identification is becoming more efficient as matching individuals between photos is increasingly automated. However, the convolutional neural network models that have facilitated this change need many training images to generalize well. As a result, they have often been developed for individual species that meet this threshold. These single‐species methods might underperform, as they ignore potential similarities in identifying characteristics and the photo–identification process among species. In this paper, we introduce a multi‐species photo–identification model based on a state‐of‐the‐art method in human facial recognition, the ArcFace classification head. Our model uses two such heads to jointly classify species and identities, allowing species to share information and parameters within the network. As a demonstration, we trained this model with 50,796 images from 39 catalogues of 24 cetacean species, evaluating its predictive performance on 21,192 test images from the same catalogues. We further evaluated its predictive performance with two external catalogues entirely composed of identities that the model did not see during training. The model achieved a mean average precision (MAP) of 0.869 on the test set. Of these, 10 catalogues representing seven species achieved a MAP score over 0.95. For some species, there was notable variation in performance among catalogues, largely explained by variation in photo quality. Finally, the model appeared to generalize well, with the two external catalogues scoring similarly to their species' counterparts in the larger test set. From our cetacean application, we provide a list of recommendations for potential users of this model, focusing on those with cetacean photo–identification catalogues. For example, users with high quality images of animals identified by dorsal nicks and notches should expect near optimal performance. Users can expect decreasing performance for catalogues with higher proportions of indistinct individuals or poor quality photos. Finally, we note that this model is currently freely available as code in a GitHub repository and as a graphical user interface, with additional functionality for collaborative data management, via Happywhale.com.

Funder

National Oceanic and Atmospheric Administration

National Science Foundation

Publisher

Wiley

Subject

Ecological Modeling,Ecology, Evolution, Behavior and Systematics

Reference34 articles.

1. Abe K.(2023).Code from: A deep learning approach to photo‐identification demonstrates high performance on two dozen cetacean species.Zenodo.https://doi.org/10.5281/zenodo.8010271

2. Optuna

3. A method for testing association patterns of social animals

4. FIN-PRINT a fully-automated multi-stage deep-learning-based framework for the individual recognition of killer whales

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