Estimating Small Area Population Density Using Survey Data and Satellite Imagery

Country-level census data are typically collected once every 10 years. However, conflict, migration, urbanization, and natural disasters can cause rapid shifts in local population patterns. This study uses Sri Lankan data to demonstrate the feasibility of a bottom-up method that combines household survey data with contemporaneous satellite imagery to track frequent changes in local population density. A Poisson regression model based on indicators derived from satellite data, selected using the least absolute shrinkage and selection operator, accurately predicts village-level population density. The model is estimated in villages sampled in the 2012/13 Household Income and Expenditure Survey to obtain out-of-sample density predictions in the nonsurveyed villages. The predictions approximate the 2012 census density well and are more accurate than other bottom-up studies based on lower-resolution satellite data. The predictions are also more accurate than most publicly available population products, which rely on areal interpolation of census data to redistribute population at the local level. The accuracies are similar when estimated using a random forest model, and when density estimates are expressed in terms of population counts. The collective evidence suggests that combining surveys with satellite data is a cost-effective method to track local population changes at more frequent intervals.

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Bibliographic Details
Main Authors: Engstrom, Ryan, Newhouse, David, Soundararajan, Vidhya
Format: Working Paper biblioteca
Language:English
Published: World Bank, Washington, DC 2019-03
Subjects:POPULATION DENSITY, SATELLITE IMAGERY, MACHINE LEARNING, SMALL AREA ESTIMATION, CENSUS DATA, HOUSEHOLD SURVEYS, MIGRATION,
Online Access:http://documents.worldbank.org/curated/en/920771552394454183/Estimating-Small-Area-Population-Density-Using-Survey-Data-and-Satellite-Imagery-An-Application-to-Sri-Lanka
https://hdl.handle.net/10986/31402
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spelling dig-okr-10986314022024-08-09T07:06:50Z Estimating Small Area Population Density Using Survey Data and Satellite Imagery An Application to Sri Lanka Engstrom, Ryan Newhouse, David Soundararajan, Vidhya POPULATION DENSITY SATELLITE IMAGERY MACHINE LEARNING SMALL AREA ESTIMATION CENSUS DATA HOUSEHOLD SURVEYS MIGRATION Country-level census data are typically collected once every 10 years. However, conflict, migration, urbanization, and natural disasters can cause rapid shifts in local population patterns. This study uses Sri Lankan data to demonstrate the feasibility of a bottom-up method that combines household survey data with contemporaneous satellite imagery to track frequent changes in local population density. A Poisson regression model based on indicators derived from satellite data, selected using the least absolute shrinkage and selection operator, accurately predicts village-level population density. The model is estimated in villages sampled in the 2012/13 Household Income and Expenditure Survey to obtain out-of-sample density predictions in the nonsurveyed villages. The predictions approximate the 2012 census density well and are more accurate than other bottom-up studies based on lower-resolution satellite data. The predictions are also more accurate than most publicly available population products, which rely on areal interpolation of census data to redistribute population at the local level. The accuracies are similar when estimated using a random forest model, and when density estimates are expressed in terms of population counts. The collective evidence suggests that combining surveys with satellite data is a cost-effective method to track local population changes at more frequent intervals. 2019-03-14T20:49:21Z 2019-03-14T20:49:21Z 2019-03 Working Paper Document de travail Documento de trabajo http://documents.worldbank.org/curated/en/920771552394454183/Estimating-Small-Area-Population-Density-Using-Survey-Data-and-Satellite-Imagery-An-Application-to-Sri-Lanka https://hdl.handle.net/10986/31402 English Policy Research Working Paper;No. 8776 CC BY 3.0 IGO http://creativecommons.org/licenses/by/3.0/igo World Bank application/pdf text/plain World Bank, Washington, DC
institution Banco Mundial
collection DSpace
country Estados Unidos
countrycode US
component Bibliográfico
access En linea
databasecode dig-okr
tag biblioteca
region America del Norte
libraryname Biblioteca del Banco Mundial
language English
topic POPULATION DENSITY
SATELLITE IMAGERY
MACHINE LEARNING
SMALL AREA ESTIMATION
CENSUS DATA
HOUSEHOLD SURVEYS
MIGRATION
POPULATION DENSITY
SATELLITE IMAGERY
MACHINE LEARNING
SMALL AREA ESTIMATION
CENSUS DATA
HOUSEHOLD SURVEYS
MIGRATION
spellingShingle POPULATION DENSITY
SATELLITE IMAGERY
MACHINE LEARNING
SMALL AREA ESTIMATION
CENSUS DATA
HOUSEHOLD SURVEYS
MIGRATION
POPULATION DENSITY
SATELLITE IMAGERY
MACHINE LEARNING
SMALL AREA ESTIMATION
CENSUS DATA
HOUSEHOLD SURVEYS
MIGRATION
Engstrom, Ryan
Newhouse, David
Soundararajan, Vidhya
Estimating Small Area Population Density Using Survey Data and Satellite Imagery
description Country-level census data are typically collected once every 10 years. However, conflict, migration, urbanization, and natural disasters can cause rapid shifts in local population patterns. This study uses Sri Lankan data to demonstrate the feasibility of a bottom-up method that combines household survey data with contemporaneous satellite imagery to track frequent changes in local population density. A Poisson regression model based on indicators derived from satellite data, selected using the least absolute shrinkage and selection operator, accurately predicts village-level population density. The model is estimated in villages sampled in the 2012/13 Household Income and Expenditure Survey to obtain out-of-sample density predictions in the nonsurveyed villages. The predictions approximate the 2012 census density well and are more accurate than other bottom-up studies based on lower-resolution satellite data. The predictions are also more accurate than most publicly available population products, which rely on areal interpolation of census data to redistribute population at the local level. The accuracies are similar when estimated using a random forest model, and when density estimates are expressed in terms of population counts. The collective evidence suggests that combining surveys with satellite data is a cost-effective method to track local population changes at more frequent intervals.
format Working Paper
topic_facet POPULATION DENSITY
SATELLITE IMAGERY
MACHINE LEARNING
SMALL AREA ESTIMATION
CENSUS DATA
HOUSEHOLD SURVEYS
MIGRATION
author Engstrom, Ryan
Newhouse, David
Soundararajan, Vidhya
author_facet Engstrom, Ryan
Newhouse, David
Soundararajan, Vidhya
author_sort Engstrom, Ryan
title Estimating Small Area Population Density Using Survey Data and Satellite Imagery
title_short Estimating Small Area Population Density Using Survey Data and Satellite Imagery
title_full Estimating Small Area Population Density Using Survey Data and Satellite Imagery
title_fullStr Estimating Small Area Population Density Using Survey Data and Satellite Imagery
title_full_unstemmed Estimating Small Area Population Density Using Survey Data and Satellite Imagery
title_sort estimating small area population density using survey data and satellite imagery
publisher World Bank, Washington, DC
publishDate 2019-03
url http://documents.worldbank.org/curated/en/920771552394454183/Estimating-Small-Area-Population-Density-Using-Survey-Data-and-Satellite-Imagery-An-Application-to-Sri-Lanka
https://hdl.handle.net/10986/31402
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