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Robust statistics for classification of remote sensing data

机译:遥感数据分类的强大统计数据

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The classification of remote sensing data from Landsat 7 satellite is considered, and an area under investigation is Jakarta Province. The supervised land classification is done with two processes: the training sites and classification process. A robust computationally efficient approach is applied for training site to deal with the large remote sensing data set of Jakarta. The objective of this paper is to introduce the depth function for robust estimation of a multivariate location parameter minimizing vector variance for classification of green space at Jakarta Province.
机译:考虑了Landsat 7卫星的遥感数据的分类,并在调查中是雅加达省。受监督的土地分类是用两个过程进行的:培训网站和分类过程。适用于培训站点来处理雅加达的大型遥感数据集的培训站点。本文的目的是引入对多元定位参数的鲁棒估计的深度功能,最小化雅加达省绿色空间分类的矢量方差。

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