The framework leverages remote sensing orthoimage, GIS tax parcel data, and SafeGraph home panel data. Remote sensing data sources like LiDAR and Landsat 8 were used to enhance spatial detail by mapping building areas and vegetation cover. Through comparing different models, the research identified building area as a key variable in population distribution. Machine learning models were also tested to further improve accuracy in predicting population trends.
“This framework provides a novel solution to tracking urban population dynamics. By integrating mobile data with remote sensing, we can now create monthly population maps that are more accurate and timely, which is crucial for urban planning and disaster management,” said Le Wang, co-author of the study and professor at SUNY Buffalo’s Department of Geography.
The research employed a two-step hybrid method. First, mobile phone data were combined with population-related variables to update population estimates at the census block group (CBG) level. Then, a weighted layer was created using statistical models and machine learning techniques, refining the population data down to the census block (CB) level. Model validation used random sampling and showed high accuracy, with an R² value of 0.82.
This hybrid approach combining remote sensing and mobile phone data can be applied to track population changes in various cities. Future applications could extend the model to larger regions and integrate additional dynamic data sources, such as real-time traffic or public services data, to further improve prediction accuracy and scalability. This could be a valuable tool for city management, emergency response, and policy-making, providing more detailed and up-to-date population insights.
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References
DOI
Original Source URL
https://doi.org/10.34133/remotesensing.0227
About Journal of Remote Sensing
The Journal of Remote Sensing, an online-only Open Access journal published in association with AIR-CAS, promotes the theory, science, and technology of remote sensing, as well as interdisciplinary research within earth and information science.