Mapping the World Population One Building at a Time
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World Bank, Washington, DC
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High resolution datasets of population
density which accurately map sparsely distributed human
populations do not exist at a global scale. Typically,
population data is obtained using censuses and statistical
modeling. More recently, methods using remotely-sensed data
have emerged, capable of effectively identifying urbanized
areas. Obtaining high accuracy in estimation of population
distribution in rural areas remains a very challenging task
due to the simultaneous requirements of sufficient
sensitivity and resolution to detect very sparse populations
through remote sensing as well as reliable performance at a
global scale. Here, the authors present a computer vision
method based on machine learning to create population maps
from satellite imagery at a global scale, with a spatial
sensitivity corresponding to individual buildings and
suitable for global deployment.
Palabras clave
POPULATION DENSITY, POPULATION ESTIMATE, SATELLITE IMAGERY, POPULATION DISTRIBUTION
