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Mixed accuracy of nighttime lights (NTL)-based urban land identification using thresholds: Evidence from a hierarchical analysis in Wuhan Metropolis, China

机译:使用阈值的夜间灯(NTL)的混合精度 - 基于阈值的城市土地识别:来自中国武汉大都市的分析的证据

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Identifying and monitoring urban land is essential for sprawl management. The use of nighttime lights (NTL) data has been reported as a suitable approach for identifying urban land across large regions, but the accuracy of urban land classification using these data is seldom discussed, particularly in small- and mid-sized cities. This paper provides a hierarchical framework for analyzing the accuracy of several DMSP/OLS- and NPP VIIRS-based NTL metrics at three nested levels (the overall Wuhan metropolis [WHM], nine cities comprising WHM, and 36 counties comprising the nine cities) using threshold approaches. Comparative analyses show mixed results, ranging [59.72%, 99.79%] and [0%, 83.96%] for map- and class-level accuracies, respectively, at the three nested levels. Moreover, NPP VIIRS is generally superior to DMSP/OLS for classifying urban land across the entire WHM and most cities/counties. Findings suggest map-level accuracy (over 95%) may be overinflated for certain NTL-based metrics, as the metrics produced relatively low class-level accuracies, around 60%. Pass time, spatial resolution of the data product, and certain situations (toll and railway stations, construction sites, less developed urban areas, and reflective surfaces near urban areas) are demonstrated as notable factors impacting NTL-based urban land identification. The findings from this study contribute to a better understanding of the appropriateness of using these metrics for urban land identification in different cities/scenarios and the development of more formalized frameworks for assessing applications in large-scale regions.
机译:识别和监测城市土地对于蔓延管理至关重要。夜间灯(NTL)数据的使用被报告为识别大型地区城市土地的合适方法,但使用这些数据的城市土地分类的准确性很少讨论,特别是在小型和中型城市。本文提供了一种分层框架,用于分析三个嵌套水平的几个DMSP / OLS和NPP VIIRS的NTL指标的准确性(武汉大都市[WHM],包括WHM的九个城市,以及包含九个城市的36个县)阈值方法。比较分析显示混合结果,范围为[59.72%,99.79%]和[0%,83.96%]分别在三个嵌套水平下分别用于地图和级别的精度。此外,NPP VIIR通常优于DMSP / OLS,用于对整个WHM和大多数城市/县进行分类城市土地。调查结果表明Map-Level精度(超过95%)可能会因某些基于NTL的指标而汇总,因为指标产生了相对低的级别精度,约为60%。通过时间,数据产品的空间分辨率以及某些情况(收费和火车站,建筑工地,较少发达的城市地区和城市地区的反射表面)被证明为影响基于NTL的城市土地识别的值得注意的因素。本研究的调查结果有助于更好地了解在不同城市/情景中使用这些指标的适当性,以及在大型地区评估申请的更正式化框架的发展。

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