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Mapping on a Budget: Optimizing Spatial Data Collection for ML

Published: September 3, 2025 | arXiv ID: 2509.03749v1

By: Livia Betti , Farooq Sanni , Gnouyaro Sogoyou and more

Potential Business Impact:

Helps computers learn more from satellite pictures.

Business Areas:
Geospatial Data and Analytics, Navigation and Mapping

In applications across agriculture, ecology, and human development, machine learning with satellite imagery (SatML) is limited by the sparsity of labeled training data. While satellite data cover the globe, labeled training datasets for SatML are often small, spatially clustered, and collected for other purposes (e.g., administrative surveys or field measurements). Despite the pervasiveness of this issue in practice, past SatML research has largely focused on new model architectures and training algorithms to handle scarce training data, rather than modeling data conditions directly. This leaves scientists and policymakers who wish to use SatML for large-scale monitoring uncertain about whether and how to collect additional data to maximize performance. Here, we present the first problem formulation for the optimization of spatial training data in the presence of heterogeneous data collection costs and realistic budget constraints, as well as novel methods for addressing this problem. In experiments simulating different problem settings across three continents and four tasks, our strategies reveal substantial gains from sample optimization. Further experiments delineate settings for which optimized sampling is particularly effective. The problem formulation and methods we introduce are designed to generalize across application domains for SatML; we put special emphasis on a specific problem setting where our coauthors can immediately use our findings to augment clustered agricultural surveys for SatML monitoring in Togo.

Country of Origin
🇺🇸 United States

Repos / Data Links

Page Count
12 pages

Category
Computer Science:
Machine Learning (CS)