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GIS-DRIVEN ANALYSES OF REMOTELY SENSED DATA FOR QUALITY ASSESSMENT OF EXISTING LAND COVER CLASSIFICATION

机译:GIS驱动的现有土地覆盖分类质量评估数据的遥感数据分析

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Automatization of processes for revision and updating existing GIS information is essential for the modern maintenance of spatial databases. The integration of remotely sensed multi-spectral data into the process of database revision is affected here by the implementation of GIS-driven analyses. The adoption of the GIS-driven principles, provide also an accurate geographical basis for a future supervised classification of the spectral data. The goal of the present research was to define and develop an automatic quality assessment method for the Land Cover classification layer of the Israeli National GIS database. During the experiments on multi-spectral remotely sensed data, effort was carried out in attempt to define "typical" spectral ranges as statistical maximum-likelihood criteria for the classification of each of the land cover phenomenon. These ranges were envisaged to characterize each of the land cover classification groups and to provide quantitative criteria for the definition of various groups of land cover type-classes. The definition of a typical-spectral-variance was executed on the basis of visual, multi-spectral and index bands of remotely sensed data. The decision whether existing GIS classification match the new image reality was made by statistical criteria of maximum likelihood for each investigated land cover type, according to the results of each and every spectral band. The study was based on multi-spectral data of the CASI airborne scanner and the space borne IKONOS data. Acquisition of the various types of information (spectral and spatial) was done according to the GIS-Driven approach of spectral data analyses that also permit the treatment of any spectral phenomena in a local coordinate system. The proposed method was developed on the basis of a study area (approx50 sq. km.) and was tested on a larger control area. Image reality and field verification (both by land and air) proved the method of GIS-Driven quality assessment to be a promising solution for a revising process of large core spatial Data Bases.
机译:为修改和更新现有的GIS信息流程自动化是现代维修空间数据库是必不可少的。遥感多光谱数据整合到数据库的修订过程是通过GIS驱动分析的执行这里的影响。的GIS驱动原理的采用,也提供为未来的精确地理基础监督光谱数据的分类。本研究的目的是确定和制定以色列国家地理信息系统数据库的土地覆盖分类层的自动质量评价方法。在关于多光谱遥感数据的实验中,努力尝试进行以限定“典型”的光谱范围为每个的土地覆盖现象的分类统计的最大似然准则。这些范围被设想来表征每个土地覆盖分类组,并提供一种用于土地覆盖型类的各种基团的定义中的定量标准。一个典型的光谱方差的定义,遥感数据的视觉的,多光谱和索引频带的基础上执行。现有的GIS是否分类匹配新的图像的现实的决定是通过为每个考察土地覆盖型最大似然的统计标准进行,根据每个结果和每一个光谱带。该研究是基于CASI空降扫描器的多光谱数据和承载IKONOS数据的空间。的各种类型的信息(光谱和空间)的采集是根据光谱数据的分析还允许在局部坐标系的任何光谱现象的治疗的GIS的驱动方式进行。所提出的方法被研究区域的基础上发展起来(approx50平方公里)和较大的控制区域中进行测试。图像的现实和现场验证(均由陆地和空中)被证明GIS驱动质量评估的方法是用于大芯空间数据碱基的修改处理的有前途的解决方案。

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