Active Learning for Animal Re-Identification with Ambiguity-Aware Sampling
Depanshu Sani, Mehar Khurana, Saket Anand

TL;DR
This paper introduces a novel active learning framework for animal re-identification that efficiently utilizes minimal annotations to significantly improve performance across multiple wildlife datasets, addressing challenges of ambiguity and open-set recognition.
Contribution
The proposed AL framework uses complementary clustering and oracle feedback to target ambiguous regions, outperforming existing methods with only 0.033% annotations.
Findings
Achieves over 10% improvement in mAP on wildlife datasets
Outperforms foundational, USL, and AL baselines significantly
Enhances open-world unknown individual recognition by over 8%
Abstract
Animal Re-ID has recently gained substantial attention in the AI research community due to its high impact on biodiversity monitoring and unique research challenges arising from environmental factors. The subtle distinguishing patterns, handling new species and the inherent open-set nature make the problem even harder. To address these complexities, foundation models trained on labeled, large-scale and multi-species animal Re-ID datasets have recently been introduced to enable zero-shot Re-ID. However, our benchmarking reveals significant gaps in their zero-shot Re-ID performance for both known and unknown species. While this highlights the need for collecting labeled data in new domains, exhaustive annotation for Re-ID is laborious and requires domain expertise. Our analyses show that existing unsupervised (USL) and AL Re-ID methods underperform for animal Re-ID. To address these…
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Videos
Taxonomy
TopicsAnimal Vocal Communication and Behavior · Species Distribution and Climate Change · Wildlife Ecology and Conservation
