MNF和SVM在遥感影像计算机分类中的应用
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国家重点基础研究发展计划(2007CB407203)


Application of MNF and SVM in Classificationof Remote Sensed Image
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    摘要:

    由于黄土高原地形复杂,单纯采用监督分离变换MNF(Minimum Noise Fraction)变换得到的4个去除噪声波段、归一化植督分类方法很难获得理想的精度,以延安市区为实验区,以TM遥感图像的最小噪声被指数NDVI和该地域的DEM作为数据源,采用支持向量机SVM(Support Vector Machine)的方法对研究区土地利用与覆盖状况进行分类,获得了较理想的分类结果。

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    The classification accuracy is unsatisfactory in the complicated terrain area of the Loess Plateau when the single supervised classification is used in remote sensing. The paper discusses the extraction of classification information of Yan. an City and nearby area from a TM image and deals w ith the image classification based on the SVM method integrating the information of M NF,NDVI,and DEM.In comparison with Max-imum Likelihood and SVM method of single spectrum, results showed that the objects with the same spectrum are distinguished by using DEM in image classification. Compared with the traditional classification method, the classification based on the information of DEM and multiple bands supported with the SVM method can acquire hig her classification effect.

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纪娜,李锐,李静. MNF和SVM在遥感影像计算机分类中的应用[J].水土保持通报,2009,(6):153-158

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  • 收稿日期:2009-03-03
  • 最后修改日期:2009-05-07
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  • 在线发布日期: 2014-11-26
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