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 i...
Spatial distribution information on population density is essential for understanding urban dynamics...
Land use is of great importance for urban planning, environmental monitoring, and transportation man...
The high precision population forecasting and spatial distribution modeling are very important for t...
Fine-resolution population distribution mapping is necessary for many purposes, which cannot be met ...
Remote sensing image products (e.g. brightness of nighttime lights and land cover/land use types) ha...
High-resolution gridded population data are important for understanding and responding to many socio...
Aging, shrinking cities, urban agglomerations and other new key terms continue to emerge when descri...
Accurately and precisely grasping the spatial distribution and changing trends of China’s regional p...
© 2018 Elsevier Ltd Remote sensing satellite data from 2012 to 2013 are used to fit the Chinese citi...
The rates of urbanization and increase in urban sprawl that have occurred in China over the past thi...
Accurate and detailed monitoring of population distribution and evolution is of great significance i...
Despite the importance of high-resolution population distribution in urban planning, disaster preven...
The spatialization of population of counties in China is significant. Firstly, we can gain the estim...
On behalf of more populous and developed regions in China, urban agglomerations have become importan...
AbstractThe rates of urbanization and increase in urban sprawl that have occurred in China over the ...
Spatial distribution information on population density is essential for understanding urban dynamics...
Land use is of great importance for urban planning, environmental monitoring, and transportation man...
The high precision population forecasting and spatial distribution modeling are very important for t...
Fine-resolution population distribution mapping is necessary for many purposes, which cannot be met ...
Remote sensing image products (e.g. brightness of nighttime lights and land cover/land use types) ha...
High-resolution gridded population data are important for understanding and responding to many socio...
Aging, shrinking cities, urban agglomerations and other new key terms continue to emerge when descri...
Accurately and precisely grasping the spatial distribution and changing trends of China’s regional p...
© 2018 Elsevier Ltd Remote sensing satellite data from 2012 to 2013 are used to fit the Chinese citi...
The rates of urbanization and increase in urban sprawl that have occurred in China over the past thi...
Accurate and detailed monitoring of population distribution and evolution is of great significance i...
Despite the importance of high-resolution population distribution in urban planning, disaster preven...
The spatialization of population of counties in China is significant. Firstly, we can gain the estim...
On behalf of more populous and developed regions in China, urban agglomerations have become importan...
AbstractThe rates of urbanization and increase in urban sprawl that have occurred in China over the ...
Spatial distribution information on population density is essential for understanding urban dynamics...
Land use is of great importance for urban planning, environmental monitoring, and transportation man...
The high precision population forecasting and spatial distribution modeling are very important for t...