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Mapping Regional Urban Extent Using NPP-VIIRS DNB and MODIS NDVI Data

机译:使用NPP-VIIRS DNB和MODIS NDVI数据绘制区域城市范围

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The accurate and timely monitoring of regional urban extent is helpful for analyzing urban sprawl and studying environmental issues related to urbanization. This paper proposes a classification scheme for large-scale urban extent mapping by combining the Day/Night Band of the Visible Infrared Imaging Radiometer Suite on the Suomi National Polar-orbiting Partnership Satellite (NPP-VIIRS DNB) and the Normalized Difference Vegetation Index from the Moderate Resolution Imaging Spectroradiometer products (MODIS NDVI). A Back Propagation (BP) neural network based one-class classification method, the Present-Unlabeled Learning (PUL) algorithm, is employed to classify images into urban and non-urban areas. Experiments are conducted in mainland China (excluding surrounding islands) to detect urban areas in 2012. Results show that the proposed model can successfully map urban area with a kappa of 0.842 on the pixel level. Most of the urban areas are identified with a producer’s accuracy of 79.63%, and only 10.42% the generated urban areas are misclassified with a user’s accuracy of 89.58%. At the city level, among 647 cities, only four county-level cities are omitted. To evaluate the effectiveness of the proposed scheme, three contrastive analyses are conducted: (1) comparing the urban map obtained in this paper with that generated by the Defense Meteorological Satellite Program/Operational Linescan System Nighttime Light Data (DMSP/OLS NLD) and MODIS NDVI and with that extracted from MCD12Q1 in MODIS products; (2) comparing the performance of the integration of NPP-VIIRS DNB and MODIS NDVI with single input data; and (3) comparing the classification method used in this paper (PUL) with a linear method (Large-scale Impervious Surface Index (LISI)). According to our analyses, the proposed classification scheme shows great potential to map regional urban extents in an effective and efficient manner.
机译:准确及时地监测区域城市范围有助于分析城市蔓延和研究与城市化有关的环境问题。本文结合Suomi国家极地轨道伙伴卫星(NPP-VIIRS DNB)上的可见红外成像辐射计套件的日/夜波段和来自该卫星的归一化植被指数,提出了一种大型城市范围制图的分类方案。中分辨率成像光谱仪产品(MODIS NDVI)。基于反向传播(BP)神经网络的一类分类方法,即当前无标签学习(PUL)算法,用于将图像分类为城市和非城市区域。在中国大陆(不包括周围的岛屿)进行的实验在2012年进行了城市区域检测。结果表明,该模型可以成功以像素级的kappa为0.842映射城市区域。识别出的大多数城市区域的生产者准确性为79.63%,只有10.42%的生成城市区域被错误分类,用户的准确性为89.58%。在城市一级,在647个城市中,只有四个县级城市被省略。为了评估该方案的有效性,进行了三个对比分析:(1)将本文中获得的城市地图与国防气象卫星计划/操作线扫描系统夜间光数据(DMSP / OLS NLD)和MODIS生成的城市地图进行比较NDVI以及从MODIS产品的MCD12Q1中提取的NDVI; (2)比较NPP-VIIRS DNB和MODIS NDVI与单输入数据的集成性能; (3)将本文使用的分类方法(PUL)与线性方法(大型不透水表面指数(LISI))进行比较。根据我们的分析,提出的分类方案显示出以有效和高效的方式绘制区域城市范围的巨大潜力。

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