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A MANOVA-BASED AND OBJECT-ORIENTED STATISTICAL METHOD FOR EXTRACTION OF IMPERVIOUS SURFACE AREA

机译:一种基于Manova和面向对象的统计方法,用于提取不透水表面积

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Impervious surface area (ISA), one of the consequences of suburban sprawl, has emerged as a key indicator to explain and predict ecosystem health in relationship to watershed management. Quantifying precisely the spatial locations and distributions of ISA is essential for environmental monitoring and management. Classification of high spatial resolution remote sensing data is an important step towards obtaining ISA information. In this study, we developed a Multivariate Analysis of Variance (MANOVA)-based classification algorithm for the purpose of extracting ISA information from high spatial resolution remote sensing data. This classification algorithm took account the variability in both the training objects and the objects to be classified, as well as the correlations among different spectral bands in high spatial resolution remote sensing data. We tested the algorithm using three types of high spatial resolution imageries including true color Orthophoto, QuickBird-2 and IKONOS satellite imagery data. Based on this algorithm, we extracted ISA from the high spatial resolution orthophoto data for the state of Rhode Island. The result indicates that 10percent of the state land are covered by the ISA. Ten towns have ISA percentage over 20percent. Twelve towns have ISA percentage between 10percent and 20percent. Only sixteen towns in the state have ISA percentage less than 10percent. The distribution patterns indicate that the ISA are mainly concentrated along the coastal lines in the southern and the eastern sections of the state. The extracted information of ISA provides the most updated and precise information for coastal and watershed management, as well as for environmental monitoring and modeling.
机译:不透水的表面积(ISA)是郊区蔓延的后果之一,它成为解释和预测与流域管理的关系中的生态系统健康的关键指标。恰恰是衡量ISA的空间位置和分布对于环境监测和管理至关重要。高空间分辨率遥感数据的分类是获得ISA信息的重要步骤。在这项研究中,我们开发了基于高空间分辨率遥感数据的ISA信息的基于方差(MANOVA)的分类算法的多元分析。该分类算法考虑了训练对象和要分类的对象的可变性,以及高空间分辨率遥感数据中的不同光谱带之间的相关性。我们使用三种类型的高空间分辨率成像仪测试了算法,包括真彩色orthophoto,Quickbird-2和ikonos卫星图像数据。基于该算法,我们从罗德岛状态的高空间分辨率数据中提取了ISA。结果表明,ISA涵盖了州土地的10平方。十个城镇有ISA百分比超过20平方。十二个城镇在10平方和20岁之间有ISA百分比。州只有十六个城镇的ISA百分比小于10。分布模式表明,ISA主要集中在南部的沿海线和国家的东部。 ISA的提取信息为沿海和流域管理提供了最新的更新和精确的信息,以及环境监测和建模。

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