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Spatial neighborhood classifiers

机译:空间邻域分类器

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摘要

Spatial data classification is a high-frequency spatial decision evaluation method. It can only choose according to experience frequently. When there were many spatial decision evaluation conditional attributes, such as hyperspectral image, it has obviously been lack of strong mathematics foundation. As an uncertainty mathematical method, Pawlak rough set can only dispose discrete data formerly, so we must discrete spatial continuous data when using this method, it would bring the profits and losses of the information in the transformation process. We used neighborhood rough set concept, and put forward a spatial continuous data classification method based on neighborhood rough set, when conditional attribute is continuous data and decision attribute is discrete data.
机译:空间数据分类是一种高频空间决策评估方法。它只能根据经验频繁选择。当有许多空间决策评估条件属性(例如高光谱图像)时,显然缺乏强大的数学基础。作为不确定性数学方法,Pawlak粗糙集以前只能处理离散数据,因此在使用此方法时必须离散空间连续数据,这会在转换过程中带来信息的收益和损失。当条件属性为连续数据,决策属性为离散数据时,我们采用邻域粗糙集的概念,提出一种基于邻域粗糙集的空间连续数据分类方法。

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