Label-Efficient School Detection from Aerial Imagery via Weakly Supervised Pretraining and Fine-Tuning
arXiv cs.CV / 5/6/2026
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Key Points
- The paper proposes a weakly supervised approach to detect schools in aerial imagery, aiming to scale mapping in regions where official records are incomplete or outdated.
- It uses an automatic labeling pipeline that combines sparse location points with semantic segmentation to create infrastructure masks and derive bounding boxes with minimal human annotation.
- The training is done in two stages: first pretraining detectors to learn representations of school appearances from auto-labeled data, then fine-tuning on a small, manually cleaned dataset.
- Results show strong object detection performance in low-data settings, with promising performance using only 50 manually labeled images, substantially reducing annotation cost.
- The authors state that models, training code, and auto-labeled data will be publicly released to encourage both further research and practical deployment for education and connectivity initiatives.
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