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What Can Satellite Imagery and Machine Learning Measure?

Author

Listed:
  • Jonathan Proctor
  • Tamma Carleton
  • Trinetta Chong
  • Taryn Fransen
  • Simon Greenhill
  • Jessica Katz
  • Hikari Murayama
  • Luke Sherman
  • Jeanette Tseng
  • Hannah Druckenmiller
  • Solomon Hsiang

Abstract

Satellite imagery and machine learning (SIML) are increasingly being combined to remotely measure social and environmental outcomes, yet use of this technology has been limited by insufficient understanding of its strengths and weaknesses. Here, we undertake the most extensive effort yet to characterize the potential and limits of using a SIML technology to measure ground conditions. We conduct 115 standardized large-scale experiments using a composite high-resolution optical image of Earth and a generalizable SIML technology to evaluate what can be accurately measured and where this technology struggles. We find that SIML alone predicts roughly half the variation in ground measurements on average, and that variables describing human society (e.g. female literacy, R²=0.55) are generally as easily measured as natural variables (e.g. bird diversity, R²=0.55). Patterns of performance across measured variable type, space, income and population density indicate that SIML can likely support many new applications and decision-making use cases, although within quantifiable limits.

Suggested Citation

  • Jonathan Proctor & Tamma Carleton & Trinetta Chong & Taryn Fransen & Simon Greenhill & Jessica Katz & Hikari Murayama & Luke Sherman & Jeanette Tseng & Hannah Druckenmiller & Solomon Hsiang, 2025. "What Can Satellite Imagery and Machine Learning Measure?," NBER Working Papers 34315, National Bureau of Economic Research, Inc.
  • Handle: RePEc:nbr:nberwo:34315
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    JEL classification:

    • C80 - Mathematical and Quantitative Methods - - Data Collection and Data Estimation Methodology; Computer Programs - - - General
    • Q5 - Agricultural and Natural Resource Economics; Environmental and Ecological Economics - - Environmental Economics

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