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Articles

Estimating work and home population using lidar-derived building volumes

, , ORCID Icon, ORCID Icon, &
Pages 1180-1196
Received 11 Nov 2016
Accepted 02 Jan 2017
Published online: 23 Jan 2017
 

ABSTRACT

As urban populations rapidly rise worldwide, it is increasingly necessary to determine the accurate distribution and configuration of the population in order to appropriate resources and services. Census-based methods for obtaining population counts are time consuming, labour intensive, and costly. Researchers have turned to remote sensing to estimate population from aerial and satellite datasets including lidar, which allows measures of building volume to be incorporated into population estimates. However, studies using lidar-derived building volumes have noted inconsistencies between population and building volume estimates in certain areas. In this article, we investigate this issue by incorporating both static and ambient population data into models using the US Census Bureau’s Longitudinal Employer-Household Dynamics (LEHD) database. To do this, we first develop a normalized home–work index to classify census blocks as primarily work-oriented, home-oriented, or mixed-use based on the LEHD data. We then employ ordinary least squares and geographically weighted regression (GWR) to explore the relationships between the different population groups (work, home, and mixed) and lidar-derived building volumes. We test these relationships across four diverse cities in Texas: Austin, Dallas, Houston, and San Antonio. Results suggest non-stationarity in the relationship between building volume and population with stronger, positive relationships in home-oriented and mixed-use blocks where the amount of building volume per person may be more consistent compared to work-oriented blocks. GWR models yielded high R2 values (0.9), particularly in mixed-use areas, indicating the potential for predictive relationships.

Acknowledgements

This work was funded through a Research Initiation Grant (RIG) from the Oklahoma NASA Space Grant Consortium/NASA EPSCoR (Grant number NNX15AK42A) to A.J. Mathews and A.E. Frazier. The authors wish to thank the Army Geospatial Center for providing us with the lidar data used in this study. We also wish to thank Son Nghiem, Lisa Nguyen, and Greg Neumann of the NASA Jet Propulsion Laboratory (JPL) for their support of this project.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

This work was funded through a Research Initiation Grant (RIG) from the Oklahoma Space Grant Consortium/NASA EPSCoR (Grant number NNX15AK42A) to A.J. Mathews and A.E. Frazier.

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