Relationships between Nighttime Imagery and Population Density for Hong Kong Qing Liu Paul C. Sutton Christopher D. Elvidge Asia Pacific Advanced Network.

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Presentation transcript:

Relationships between Nighttime Imagery and Population Density for Hong Kong Qing Liu Paul C. Sutton Christopher D. Elvidge Asia Pacific Advanced Network Hong Kong, China February, 2011

Outline Introduction Data Methods Results Discussion Conclusion

Introduction Previous analyses have revealed a striking correlation between city- lights and human population density Some researches suggested correlation between measures of population or population density and nighttime imagery is low and not statistically significant. DMSP-OLS imagery saturated in most of the areas of high population density. ISS photograph provide more information of nighttime lights with finer spatial resolution. Will ISS photograph produce better model to estimate population for areas with high population density than DMSP-OLS imagery?

Data Nighttime Imagery  Radiance calibrated DMSP Nighttime Lights 2006  Hong Kong at Night - Astronaut Photography from ISS 2003 Population Representations  2008 LandScan population grid  2006 Hong Kong population by administrative district

Radiance calibrated DMSP Nighttime Lights of Hong Kong 2006 (F16) Cloud-free composite derived DMSP-OLS data collected at low, medium and high gain settings. 30 arc-second grid or approximately 1 km 2 at the equator

Hong Kong at Night - Astronaut Photography from ISS Spatial Resolution: approximately 90m, estimated to be 6m per pixel

LandScan Population Density of Hong Kong 2008 Representing ambient population count per cell 30 arc-second grid or approximately 1 km 2 at the equator US Laboratory Department of Energy, Oak Ridge National Laboratory

First-Principal Component of ISS photograph

Hypothesis Nighttime light intensity will positively correlate with the population density Integration of nighttime lights within district polygons will positively correlate with the total population of those polygons ISS imagery will produce better model than existing models using DMSP-OLS imagery for estimation of population or population density in high population density area

Methods Pixel-based  Multi-variate Analysis LandScan, DMSP-OLS, ISS red, ISS green, ISS blue, ISS PC 1  Correlation and scatterplot matrix Polygon-based  Mean aggregation of ISS PC1 to 1km 2 grid  Zonal statistics: sum of light in each district polygon  Ordinary least squares regression Independent variable: sum of ISS lights within district polygon Dependent variable: total population for each district

ISS PC1ISS RISS GISS B DMSP- OLSLandScan ISS PC ISS R ISS G ISS B DMSP-OLS LandScan Correlations

Scatterplot Matrix

Parameter Estimation R 2 = 0.15 p-value = Weak linear relationship between sum of lights from DMSP-OLS imagery and total district population R 2 = 0.03 p-value = No linear relationship between sum of lights from ISS PC1 imagery and total district population

Hong Kong International Airport Central & West Wan Chai Eastern Islands North Tuen Mun Kwun Tong

Hong Kong International Airport Central & West Wan Chai Eastern Islands North Tuen Mun Kwun Tong

Discussion Overestimation for districts: containing airport, commercial areas, residential areas in new town; with residents of high income and education. Underestimation for districts: containing large residential areas and industrial areas; with residents of low income and education.

Conclusions ISS photograph is no better than the DMSP OLS imagery at predicting population density of Hong Kong at the spatial resolution of LandScan. The finer spatial and spectral resolution of the ISS photographs does not increase correlation between nighttime lights and measures of population or population density. Residence-based population at district level of Hong Kong provided by census data are not well modeled by nighttime imagery alone. Areas of high ambient population density that are not residential (airports, commercial areas, etc.) tend to emit more light than residential areas.