Result Details

On Combining Animal Re-Identification Models to Address Small Datasets

ALGASOV, A.; NEPOVINNYKH, E.; ZOLOTAREV, F.; EEROLA, T.; KÄLVIÄINEN, H.; STEWART, C.; OTARASHVILI, L.; HOLMBERG, J. On Combining Animal Re-Identification Models to Address Small Datasets. International journal of computer vision, 2026, vol. 134, no. 3, p. 1-18.
Type
journal article
Language
English
Authors
Algasov Aleksandr
Nepovinnykh Ekaterina
Zolotarev Fedor
Eerola Tuomas
Kälviäinen Heikki Antero, prof., Dr., DCGM (FIT)
Stewart Charles V.
Otarashvili Lasha
Holmberg Jason A.
Abstract

Recent advancements in the automatic re-identification of animal individuals from images have opened up new possibilities for studying wildlife through camera traps and citizen science projects. Existing methods leverage distinct and permanent visual body markings, such as fur patterns or scars, and typically employ one of two approaches: local features or end-to-end learning. The end-to-end learning-based methods outperform local feature-based methods given a sufficient amount of good-quality training data, but the challenge of gathering such datasets for wildlife animals means that local feature-based methods remain a more practical approach for many species. In this study, we aim to achieve two goals: (1) to obtain a better understanding of the impact of training-set size on animal re-identification, and (2) to explore ways to combine various methods to leverage the advantages of their approaches for re-identification. In the work, we conduct comprehensive experiments across six different methods and six animal species with various training set sizes. Furthermore, we propose a simple yet effective combination strategy and show that a properly selected method combinations outperform the individual methods with both small and large training sets up to 30%. Additionally, the proposed combination strategy offers a generalizable framework to improve accuracy across species and address the challenges posed by small datasets, which are common in ecological research. This work lays the foundation for more robust and accessible tools to support wildlife conservation, population monitoring, and behavioral studies.

Keywords

Animal re-identification, Local feature-based methods, Vision transformers, Species-specific re-identification, Dataset impact

URL
Published
2026
Pages
1–18
Journal
International journal of computer vision, vol. 134, no. 3, ISSN
Publisher
Springer Nature
DOI
UT WoS
001674972500001
EID Scopus
BibTeX
@article{BUT201195,
  author="{} and  {} and  {} and  {} and Heikki Antero {Kälviäinen} and  {} and  {} and  {}",
  title="On Combining Animal Re-Identification Models to Address Small Datasets",
  journal="International journal of computer vision",
  year="2026",
  volume="134",
  number="3",
  pages="1--18",
  doi="10.1007/s11263-025-02708-9",
  issn="0920-5691",
  url="https://link.springer.com/article/10.1007/s11263-025-02708-9"
}
Departments
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