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Time series analysis of VIIRS-DNB nighttime lights imagery for change detection in urban areas: A case study of devastation in Puerto Rico from hurricanes Irma and Maria

机译:viirs-dnb夜间灯图像变革检测的时间序列分析 - 以飓风IRMA和玛丽亚普拉斯港的毁灭为例

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Brightness of nighttime lights (NTL) collected by the Suomi National Polar-orbiting Partnership (S-NPP) Visible Infrared Imaging Radiometer Suite (VIIRS) is compatible across different times of images thanks to the on-board calibration system. However, the NTL radiance observed by the S-NPP VIIRS shows clear seasonality corresponding to the seasonal changes in the albedo of land surface. Additionally, the existence of many uncertain factors (e.g. complex atmospheric conditions) renders it inappropriate to directly use the NTL radiances to derive changes on the ground. In this study, we adopt a statistical procedure of time series analysis, namely seasonal and trend decomposition using Loess (STL), to model the time series observations of NTL brightness by decomposing the observations into three separable time series components (i.e. trend, seasonality, and remainder). Based on the time series model, forecast can be made for short-term future with confidence measure, and by comparing the model forecast with observed NTL brightness, significant changes can then be detected at pixel levels. We applied this method to the Puerto Rico area to detect and assess the damages caused by Hurricanes Irma and Maria, and to monitor the recovery after the disaster. Our results show that the proposed method successfully captures the changes of NTL brightness due to the damage of the hurricanes and general economic decline. Moreover, we also find that after removing the seasonal and remainder components, the time series of NTL image can more accurately reflect the temporal trends of economic status in Puerto Rico.
机译:由Suomi National Orbiting Partnership(S-NPP)可见红外成像辐射计套件(VIIRs)收集的夜间灯(NTL)的亮度符合车载校准系统的不同时间兼容。然而,S-NPP VIIR观察到的NTL辐射显示出澄清的季节性对应于土地表面的季节性变化的季节性。另外,许多不确定因素的存在(例如复杂的大气条件)呈现不适当的直接使用NTL辐射来导出地面的变化。在这项研究中,我们采用时间序列分析的统计程序,即使用黄土(STL)的季节性和趋势分解,通过将观察分解成三个可分离时间序列组件(即趋势,季节性,和剩下的)。基于时间序列模型,可以对短期未来充满置信度量,并且通过将模型预测与观察到的NTL亮度进行比较,可以在像素级别检测显着的变化。我们将这种方法应用于波多黎各地区,以检测和评估飓风IRMA和玛丽亚造成的损害,并在灾难后监测恢复。我们的研究结果表明,由于飓风的损害和一般经济下降,该方法成功地捕获了NTL亮度的变化。此外,我们还发现在删除季节性和余数组成部分后,NTL图像的时间序列可以更准确地反映波多黎各的经济状况的时间趋势。

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