Publications des scientifiques de l'IRD

Cheeseman T., Southerland K., Park J., Olio M., Flynn K., Calambokidis J., Jones L., Garrigue Claire, Jordan A. F., Howard A., Reade W., Neilson J., Gabriele C., Clapham P. (2022). Advanced image recognition : a fully automated, high-accuracy photo-identification matching system for humpback whales. Mammalian Biology, 102 (3), p. [15 p.]. ISSN 1616-5047.

Titre du document
Advanced image recognition : a fully automated, high-accuracy photo-identification matching system for humpback whales
Année de publication
2022
Type de document
Article référencé dans le Web of Science WOS:000727758000002
Auteurs
Cheeseman T., Southerland K., Park J., Olio M., Flynn K., Calambokidis J., Jones L., Garrigue Claire, Jordan A. F., Howard A., Reade W., Neilson J., Gabriele C., Clapham P.
Source
Mammalian Biology, 2022, 102 (3), p. [15 p.] ISSN 1616-5047
We describe the development and application of a new convolutional neural network-based photo-identification algorithm for individual humpback whales (Megaptera novaeangliae). The method uses a Densely Connected Convolutional Network (DenseNet) to extract special keypoints of an image of the ventral surface of the fluke and then a separate DenseNet trained to look for features within these keypoints. The extracted features are then compared against those of the reference set of previously known humpback whales for similarity. This offers the potential to successfully automate recognition of individuals in large photographic datasets such as in ocean basin-wide marine mammal studies. The algorithm requires minimal image pre-processing and is capable of accurate, rapid matching of fair to high-quality humpback fluke photographs. In real world testing compared to manual image matching, the algorithm reduces image management time by at least 98% and reduces error rates of missing potential matches from approximately 6-9% to 1-3%. The success of this new system permits automated comparisons to be made for the first time across photo-identification datasets with tens to hundreds of thousands of individually identified encounters, with profound implications for long-term and large population studies of the species.
Plan de classement
Limnologie biologique / Océanographie biologique [034] ; Informatique [122]
Localisation
Fonds IRD [F B010083828]
Identifiant IRD
fdi:010083828
Contact