RareSpot+: A Benchmark, Model, and Active Learning Framework for Small and Rare Wildlife in Aerial Imagery
Bowen Zhang, Jesse T. Boulerice, Charvi Mendiratta, Nikhil Kuniyil, Satish Kumar, Hila Shamon, B. S. Manjunath

TL;DR
RareSpot+ is a comprehensive framework combining novel detection, augmentation, and active learning techniques to improve small, rare wildlife detection in aerial imagery, aiding conservation efforts.
Contribution
It introduces a multi-scale consistency loss, context-aware augmentation, and geospatial active learning, advancing detection accuracy and reducing annotation costs for ecological monitoring.
Findings
Improves detection mAP@50 by 35.2% on a prairie dog dataset.
Boosts prairie dog AP by 14.5% with only 1.7% annotation budget.
Demonstrates transferability across multiple wildlife datasets.
Abstract
Automated wildlife monitoring from aerial imagery is vital for conservation but remains limited by two persistent challenges: the difficulty of detecting small, rare species and the high cost of large-scale expert annotation. Prairie dogs exemplify this problem -- they are ecologically important yet appear tiny, sparsely distributed, and visually indistinct from their surroundings, posing a severe challenge for conventional detection models. To overcome these limitations, we present RareSpot+, a detection framework that integrates multi-scale consistency learning, context-aware augmentation, and geospatially guided active learning to address these issues. A novel multi-scale consistency loss aligns intermediate feature maps across detection heads, enhancing localization of small (approx. 30 pixels wide) objects without architectural changes, while context-aware augmentation improves…
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