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arxiv_cv 85% Match Research Paper Geospatial analysts,Urban planners,Education policymakers,Machine learning researchers 4 days ago

A Multi-tiered Human-in-the-loop Approach for Interactive School Mapping Using Earth Observation and Machine Learning

computer-vision › scene-understanding
📄 Abstract

Abstract: This paper presents a multi-tiered human-in-the-loop framework for interactive school mapping designed to improve the accuracy and completeness of educational facility records, particularly in developing regions where such data may be scarce and infrequently updated. The first tier involves a machine learning based analysis of population density, land cover, and existing infrastructure compared with known school locations. The first tier identifies potential gaps and "mislabelled" schools. In subsequent tiers, medium-resolution satellite imagery (Sentinel-2) is investigated to pinpoint regions with a high likelihood of school presence, followed by the application of very high-resolution (VHR) imagery and deep learning models to generate detailed candidate locations for schools within these prioritised areas. The medium-resolution approach was later removed due to insignificant improvements. The medium and VHR resolution models build upon global pre-trained steps to improve generalisation. A key component of the proposed approach is an interactive interface to allow human operators to iteratively review, validate, and refine the mapping results. Preliminary evaluations indicate that the multi-tiered strategy provides a scalable and cost-effective solution for educational infrastructure mapping to support planning and resource allocation.
Authors (5)
Casper Fibaek
Abi Riley
Kelsey Doerksen
Do-Hyung Kim
Rochelle Schneider
Submitted
October 31, 2025
arXiv Category
cs.CV
arXiv PDF

Key Contributions

This paper introduces a novel multi-tiered human-in-the-loop framework for interactive school mapping, leveraging Earth observation and machine learning. It addresses the critical issue of scarce and outdated educational facility data, particularly in developing regions, by iteratively refining school location identification through analysis of population density, land cover, infrastructure, and satellite imagery.

Business Value

Improves the accuracy of educational facility data, which is crucial for resource allocation, policy-making, and improving access to education. This can lead to better planning for school infrastructure and services.