High resolution, contemporary data on human population distributions are vital for measuring impacts of population growth, monitoring human-environment interactions and for planning and policy development. Many methods are used to disaggregate census data and predict population densities for finer scale, gridded population data sets. We present a new semi-automated dasymetric modeling approach that incorporates detailed census and ancillary data in a flexible, "Random Forest" estimation technique. We outline the combination of widely available, remotely-sensed and geospatial data that contribute to the modeled dasymetric weights and then use the Random Forest model to generate a gridded prediction of population density at ~100 m spatial res...
Population numbers at local levels are fundamental data for many applications, including the deliver...
<p>These files are supplementary information to illustrate the metadata reports and default visualiz...
<p>These files represent the source code and technical fitting details of the Random Forest-based po...
High resolution, contemporary data on human population distributions are vital for measuring impacts...
<div><p>High resolution, contemporary data on human population distributions are vital for measuring...
High resolution, contemporary data on human population distributions are vital for measuring impacts...
The spatial distribution of humans on the earth is critical knowledge that informs many disciplines ...
Many disciplines require consistent, comparable areal information about where people are. Gridded po...
These data present the effectiveness of three different high-resolution built area datasets for prod...
Interactions between humans, diseases, and the environment take place across a range of temporal and...
High-resolution gridded population data are important for understanding and responding to many socio...
Machine learning algorithms such as Random Forest (RF) are being increasingly applied on traditional...
Mapping built land cover at unprecedented detail has been facilitated by increasing availability of ...
Existing resources of population data, provided by national censuses in the form of areal aggregates...
This repository includes census-disaggregated population gridded estimates for Burkina Faso, using a...
Population numbers at local levels are fundamental data for many applications, including the deliver...
<p>These files are supplementary information to illustrate the metadata reports and default visualiz...
<p>These files represent the source code and technical fitting details of the Random Forest-based po...
High resolution, contemporary data on human population distributions are vital for measuring impacts...
<div><p>High resolution, contemporary data on human population distributions are vital for measuring...
High resolution, contemporary data on human population distributions are vital for measuring impacts...
The spatial distribution of humans on the earth is critical knowledge that informs many disciplines ...
Many disciplines require consistent, comparable areal information about where people are. Gridded po...
These data present the effectiveness of three different high-resolution built area datasets for prod...
Interactions between humans, diseases, and the environment take place across a range of temporal and...
High-resolution gridded population data are important for understanding and responding to many socio...
Machine learning algorithms such as Random Forest (RF) are being increasingly applied on traditional...
Mapping built land cover at unprecedented detail has been facilitated by increasing availability of ...
Existing resources of population data, provided by national censuses in the form of areal aggregates...
This repository includes census-disaggregated population gridded estimates for Burkina Faso, using a...
Population numbers at local levels are fundamental data for many applications, including the deliver...
<p>These files are supplementary information to illustrate the metadata reports and default visualiz...
<p>These files represent the source code and technical fitting details of the Random Forest-based po...