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Challenges on Species Presence Prediction and Identification, and Individual Animal Identification, Springer Lecture Notes in Computer Science, Proceedings of CLEF 2025, Madrid, Spain, 2025.
Type of publication: Article
Citation: Joly, A. et al. (2025). LifeCLEF 2025 Teaser: Challenges on Species Presence Prediction and Identification, and Individual Animal Identification. In: Hauff, C., et al. Advances in Information Retrieval. ECIR 2025. Lecture Notes in Computer Science, vol 15
Publication status: Published
Journal: Lecture Notes in Computer Science, vol 15576. Springer, Cham
Volume: 15576
Year: 2025
Month: September
Pages: 373-381
ISSN: 978-3-031-88719-2
URL: https://link.springer.com/chap...
DOI: https://doi.org/10.1007/978-3-031-88720-8_57
Abstract: Accurate identification, monitoring, and understanding of species distribution is important for biodiversity conservation, invasive species control, understanding climate change, and ecosystem management. Current methodologies for species identification, animal re-identification, and large-scale population monitoring are both resource-intensive and technically complex, posing significant challenges for widespread implementation. This highlights a need for automated, scalable solutions to enhance efficiency and accuracy. Since 2011, the LifeCLEF lab has driven progress in this field by organizing annual challenges to promote innovation in biodiversity informatics. The 2025 edition introduces five – one new, and four continued – data-driven tasks aimed at addressing current challenges in species recognition: (i) AnimalCLEF: multi-species individual animal identification, (ii) BirdCLEF: bird species identification in soundscape recordings, (iii) FungiCLEF: few shot classification with rare fungi species, (iv) GeoLifeCLEF: multi-modal species prediction using remote sensing and large-scale biodiversity data, and (v) PlantCLEF: multi-species plant identification in vegetation plot images.
Keywords: Biodiversity Machine Learning AI Species Individual Identification Prediction Species Distribution Modeling
Authors Joly, Alexis
Picek, Lukas
Botella, Christophe
Marcos, Diego
Leblanc, Cesar
Larcher, Théo
Kahl, Stefan
Goëau, Hervé
Bonnet, Pierre
Klinck, Holger
maximilien Servajean
Matas, Jiří
Planqué, Robert
Vellinga, Willem-Pier
denton, Tom
Müller, Henning
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