Preprint / Version 0

GorillaWatch: An Automated System for In-the-Wild Gorilla Re-Identification and Population Monitoring

Authors

  • Maximilian Schall
  • Felix Leonard Knöfel
  • Noah Elias König
  • Jan Jonas Kubeler
  • Maximilian von Klinski
  • Joan Wilhelm Linnemann
  • Xiaoshi Liu
  • Iven Jelle Schlegelmilch
  • Ole Woyciniuk
  • Alexandra Schild
  • Dante Wasmuht
  • Magdalena Bermejo Espinet
  • German Illera Basas
  • Gerard de Melo

Abstract

Monitoring critically endangered western lowland gorillas is currently hampered by the immense manual effort required to re-identify individuals from vast archives of camera trap footage. The primary obstacle to automating this process has been the lack of large-scale, "in-the-wild" video datasets suitable for training robust deep learning models. To address this gap, we introduce a comprehensive benchmark with three novel datasets: Gorilla-SPAC-Wild, the largest video dataset for wild primate re-identification to date; Gorilla-Berlin-Zoo, for assessing cross-domain re-identification generalization; and Gorilla-SPAC-MoT, for evaluating multi-object tracking in camera trap footage. Building on these datasets, we present GorillaWatch, an end-to-end pipeline integrating detection, tracking, and re-identification. To exploit temporal information, we introduce a multi-frame self-supervised pretraining strategy that leverages consistency in tracklets to learn domain-specific features without manual labels. To ensure scientific validity, a differentiable adaptation of AttnLRP verifies that our model relies on discriminative biometric traits rather than background correlations. Extensive benchmarking subsequently demonstrates that aggregating features from large-scale image backbones outperforms specialized video architectures. Finally, we address unsupervised population counting by integrating spatiotemporal constraints into standard clustering to mitigate over-segmentation. We publicly release all code and datasets to facilitate scalable, non-invasive monitoring of endangered species

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Posted

2025-12-08