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Applying Artificial Intelligence on Satellite Imagery to Compile Granular Poverty Statistics

Author

Listed:
  • Hofer, Martin

    (Vienna University of Economics and Business)

  • Sako, Tomas

    (Freelance data scientist)

  • Martinez, Jr., Arturo

    (Asian Development Bank)

  • Addawe, Mildred

    (Asian Development Bank)

  • Durante, Ron Lester

    (Asian Development Bank)

Abstract

The spatial granularity of poverty statistics can have a significant impact on the efficiency of targeting resources meant to improve the living conditions of the poor. However, achieving granularity typically requires increasing the sample sizes of surveys on household income and expenditure or living standards, an option that is not always practical for government agencies that conduct these surveys. Previous studies that examined the use of innovative (geospatial) data sources such as those from high-resolution satellite imagery suggest that such method may be an alternative approach of producing granular poverty maps. This study outlines a computational framework to enhance the spatial granularity of government-published poverty estimates using a deep layer computer vision technique applied on publicly available medium-resolution satellite imagery, household surveys, and census data from the Philippines and Thailand. By doing so, the study explores a potentially more cost-effective alternative method for poverty estimation method. The results suggest that even using publicly accessible satellite imagery, in which the resolutions are not as fine as those in commercially sourced images, predictions generally aligned with the distributional structure of government-published poverty estimates, after calibration. The study further contributes to the existing literature by examining robustness of the resulting estimates to user-specified algorithmic parameters and model specifications.

Suggested Citation

  • Hofer, Martin & Sako, Tomas & Martinez, Jr., Arturo & Addawe, Mildred & Durante, Ron Lester, 2020. "Applying Artificial Intelligence on Satellite Imagery to Compile Granular Poverty Statistics," ADB Economics Working Paper Series 629, Asian Development Bank.
  • Handle: RePEc:ris:adbewp:0629
    as

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    References listed on IDEAS

    as
    1. Puttanapong , Nattapong & Martinez, Jr. , Arturo & Addawe, Mildred & Bulan, Joseph & Durante , Ron Lester & Martillan , Marymell, 2020. "Predicting Poverty Using Geospatial Data in Thailand," ADB Economics Working Paper Series 630, Asian Development Bank.
    2. Keola, Souknilanh & Andersson, Magnus & Hall, Ola, 2015. "Monitoring Economic Development from Space: Using Nighttime Light and Land Cover Data to Measure Economic Growth," World Development, Elsevier, vol. 66(C), pages 322-334.
    Full references (including those not matched with items on IDEAS)

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    More about this item

    Keywords

    big data; computer vision; data for development; machine learning algorithm; official statistics; poverty; SDG;
    All these keywords.

    JEL classification:

    • C19 - Mathematical and Quantitative Methods - - Econometric and Statistical Methods and Methodology: General - - - Other
    • D31 - Microeconomics - - Distribution - - - Personal Income and Wealth Distribution
    • I32 - Health, Education, and Welfare - - Welfare, Well-Being, and Poverty - - - Measurement and Analysis of Poverty
    • O15 - Economic Development, Innovation, Technological Change, and Growth - - Economic Development - - - Economic Development: Human Resources; Human Development; Income Distribution; Migration

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