99
0

CzechLynx: A Dataset for Individual Identification and Pose Estimation of the Eurasian Lynx

Abstract

We introduce CzechLynx, the first large-scale, open-access dataset for individual identification, 2D pose estimation, and instance segmentation of the Eurasian lynx (Lynx lynx). CzechLynx includes more than 30k camera trap images annotated with segmentation masks, identity labels, and 20-point skeletons and covers 219 unique individuals across 15 years of systematic monitoring in two geographically distinct regions: Southwest Bohemia and the Western Carpathians. To increase the data variability, we create a complementary synthetic set with more than 100k photorealistic images generated via a Unity-based pipeline and diffusion-driven text-to-texture modeling, covering diverse environments, poses, and coat-pattern variations. To allow testing generalization across spatial and temporal domains, we define three tailored evaluation protocols/splits: (i) geo-aware, (ii) time-aware open-set, and (iii) time-aware closed-set. This dataset is targeted to be instrumental in benchmarking state-of-the-art models and the development of novel methods for not just individual animal re-identification.

View on arXiv
@article{picek2025_2506.04931,
  title={ CzechLynx: A Dataset for Individual Identification and Pose Estimation of the Eurasian Lynx },
  author={ Lukas Picek and Elisa Belotti and Michal Bojda and Ludek Bufka and Vojtech Cermak and Martin Dula and Rostislav Dvorak and Luboslav Hrdy and Miroslav Jirik and Vaclav Kocourek and Josefa Krausova and Jirı Labuda and Jakub Straka and Ludek Toman and Vlado Trulık and Martin Vana and Miroslav Kutal },
  journal={arXiv preprint arXiv:2506.04931},
  year={ 2025 }
}
Comments on this paper