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ESTIMATING IMPERVIOUS SURFACE FOR THE URBAN AREA EXPANSION: EXAMPLES FROM CHANGCHUN, NORTHEAST CHINA

机译:估算城市地区的不透水表面扩张:来自中国东北的长春的例子

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As a developing country, China is now undergoing a quick process of urbanization. Therefore, understanding and managing the urban environment is a prerequisite for addressing sustainability, which is an increasingly important issue need a range of discipline to cope with. This paper explored extraction of impervious surface information from Landsat ETM+data with the integration of fraction images from linear spectral mixture analysis based upon Ridd's vegetation-impervious surface-soil (V-I-S) model. A new approach for urban land-use classification, based on the combined use of impervious surface and spectral mixture analysis (SMA) were applied in this paper. The minimum noise fraction transform (MNF) procedure was applied to transform the six reflective bands into a new coordinate set to select the four endmebers, e.g. high-albedo surface, low-albedo surface, soil and vegetation.. Results showed that the integration of faction images improved urban impervious surface estimation. The impervious surface in the urban area were derived from high-albedo surface and low-albedo surface. Accuracy assessment indicated that the root-mean-square error is less than 10.2% for the impervious surface image. The main factors that affect the accuracy are the reflectance variation caused by atmospheric factors, sun-sensor-target geometry. How to deal with these factors to minimize reflectance variation will be the future study topics. Also water body and shade were not addressed in this paper, which also need to be considered in the future study.
机译:作为一个发展中国家,中国现在正在进行一个快速的城市化过程。因此,理解和管理城市环境是解决可持续性的先决条件,这是一个越来越重要的问题需要一系列纪律来应付。本文探讨了利用基于RIDD的植被的不透水表面 - 土壤(V-I-S)模型的线性光谱混合分析的分数图像的馏分图像的缺失表面信息的提取。本文施用了一种基于渗透表面和光谱混合物分析(SMA)的结合使用的城市土地使用分类方法。应用最小噪声分数变换(MNF)过程以将六个反射带转换为新的坐标设置,以选择四个终端器,例如, High-Albedo表面,低级表面,土壤和植被。结果表明,派系图像的整合改善了城市不透水的表面估计。城市地区的不透水表面源自高反玻璃表面和低反玻璃表面。精度评估表明,对于不透水表面图像,根均方误差小于10.2%。影响精度的主要因素是由大气因素,太阳传感器 - 目标几何形状引起的反射变化。如何应对这些因素,以最大限度地减少反思变异将是未来的学习主题。此篇论文还没有解决水体和阴影,这也需要在未来的研究中考虑。

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