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Normalization of time series DMSP-OLS nighttime light images for urban growth analysis with Pseudo Invariant Features

机译:具有伪不变特征的用于城市增长分析的时间序列DMSP-OLS夜间光图像的标准化

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摘要

Previous studies demonstrated that DMSP-OLS stable nighttime light data are useful data source for delineating urban areas. However, the nighttime light data acquired in different years are not directly comparable, due to the variations in atmospheric condition from year to year and the periodic change in satellite sensor. This makes it difficult to use the time series nighttime light data for urban growth analysis. This paper presents a novel technique for normalizing time series DMSP/OLS nighttime light data and deriving urban detection threshold using Pseudo Invariant Features (PIFs). Our technique consists of three steps: (1) estimate an optimal threshold value for urban area detection for a reference year, when high resolution image data are available for some local areas. (2) Based on the irreversible nature of urbanization process, determine a set of PIFs, which are deemed as urban areas and did not exhibit significant change in nighttime light condition during the study period. (3) Normalize the time series DMSP-OLS data sets based on the PIFs and linear regression, determine optimal threshold values for urban area detection for all years based on the reference year threshold value, and extract urban areas accordingly. This technique was successfully applied to time series DMSP-OLS nighttime light images of the Central Liaoning region in China. Patterns of this urban agglomeration's spatial-temporal evolution from 2000 to 2010 were mapped and analyzed. The reliability and spatial accuracy of this technique were evaluated with multitemporal Landsat TM images. The technique was proved accurate and effective
机译:先前的研究表明,DMSP-OLS稳定的夜间灯光数据对于勾勒城市地区是有用的数据来源。但是,由于每年的大气条件不同以及卫星传感器的周期性变化,因此不同年份获取的夜间光数据不能直接进行比较。这使得很难将时间序列夜间光照数据用于城市增长分析。本文提出了一种新的技术,用于对时间序列DMSP / OLS夜间光数据进行标准化,并使用伪不变特征(PIF)推导城市检测阈值。我们的技术包括三个步骤:(1)当高分辨率图像数据可用于某些局部区域时,估计参考年份的最佳市区检测阈值。 (2)根据城市化过程的不可逆性,确定一组PIF,这些PIF被视为城市区域,并且在研究期间夜间照明条件没有显着变化。 (3)基于PIF和线性回归对时间序列DMSP-OLS数据集进行归一化,根据参考年阈值确定所有年份的最佳市区检测阈值,并相应地提取市区。该技术已成功应用于中国辽宁中部地区的时间序列DMSP-OLS夜间光图像。绘制并分析了2000年至2010年该城市群的时空演变模式。该技术的可靠性和空间准确性已通过多时相Landsat TM图像进行了评估。该技术被证明是准确有效的

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