Abstract

Fine-resolution population distribution mapping is necessary for many purposes, which cannot be met by aggregated census data due to privacy. Many approaches utilize ancillary data that are related to population density, such as nighttime light imagery and land use, to redistribute the population from census to finer-scale units. However, most of the ancillary data used in the previous studies of population modeling are environmental data, which can only provide a limited capacity to aid population redistribution. Social sensing data with geographic information, such as point-of-interest (POI), are emerging as a new type of ancillary data for urban studies. This study, as a nascent attempt, combined POI and multisensor remote sensing data into new ancillary data to aid population redistribution from census to grid cells at a resolution of 250 m in Zhejiang, China. The accuracy of the results was assessed by comparing them with WorldPop. Results showed that our approach redistributed the population with fewer errors than WorldPop, especially at the extremes of population density. The approach developed in this study—incorporating POI with multisensor remotely sensed data in redistributing the population onto finer-scale spatial units—possessed considerable potential in the era of big data, where a substantial volume of social sensing data is increasingly being collected and becoming available.

Highlights

  • High-resolution population distribution data are essential in addressing a wide range of critical issues, such as vulnerability assessment [1,2], urban planning [3,4], emergency management [5], and public health [6,7]

  • We incorporated POIs with multisource remote sensing data to further improve the accuracy of the population modeling

  • This study has introduced the field of high-resolution population modeling by utilizing an innovative combination of remote sensing and social sensing data to refine population distribution

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Summary

Introduction

High-resolution population distribution data are essential in addressing a wide range of critical issues, such as vulnerability assessment [1,2], urban planning [3,4], emergency management [5], and public health [6,7]. Commonly available information on population number and composition through the Census Bureau is aggregated over administrative units, such as provinces, counties, townships, census tracts, and block groups. The usefulness of these census data is limited due to the spatial heterogeneity of population distribution within administrative units [8]. Both the availability and quality of environmental data are increasing. The development of efficient methods for accurately modeling fine-scale population distribution is urgently needed

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