安徽农业科学2017,Vol.45Issue(1) :4-7.

喀斯特地区土地分类方法研究

Reseach on the Method of Land Classification in Karst Area

何朝霞
安徽农业科学2017,Vol.45Issue(1) :4-7.

喀斯特地区土地分类方法研究

Reseach on the Method of Land Classification in Karst Area

何朝霞1
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作者信息

  • 1. 长江大学工程技术学院,湖北荆州434023
  • 折叠

摘要

[目的]寻找喀斯特地区土地最优分类方法.[方法]选取覆盖柳州市的美国陆地卫星的Landsat-5TM数字影像(2011年),采用最大似然、神经网络和支持向量机(SVM)3种分类方法,对研究区域的土地进行分类,比较分类后的混淆矩阵,分别求出3种分类结果的总体正确率和Kappa系数.[结果]3种分类方法的总体正确率都在90%以上,Kappa系数也较高;SVM分类方法的总体分类正确率和Kappa系数最高,优于神经网络、最大似然法分类.[结论]SVM分类方法可提高喀斯特地区土地利用信息遥感分类的精度,为后期有效地动态监测喀斯特地区土地利用的变化奠定了基础.

Abstract

[Objective] The aim was to find out the optimal method of land classification in Karst area.[Method] Based on American Landsat 5 (2011) digital images covering Liuzhou City,the maximum likelihood,neural network and support vector machine (SVM) classification methods were studied.Three methods were used to classify the land,the confusion matrix was compared after classification,overall accuracy and Kappa coefficient of classification results were calculated.[Result] The overall accuracy of three classification methods was over 90%,the Kappa coefficient was higher.The overall classification accuracy and the Kappa coefficient of SVM classification method were all the highest,better than the neural network and maximum likelihood.[Conclusion] The SVM method can improve the accuracy of land classification in Karst area,and it is effectively to dynamic ally monitor the change of land used in karst area.

关键词

最大似然/神经网络/支持向量机/土地分类/精度

Key words

Maximum likelihood/Neural network/Support vector machine/Land classification/Accuracy

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基金项目

湖北省教育厅2016年度科学研究计划指导性项目(B2016443)

出版年

2017
安徽农业科学
安徽省农业科学院

安徽农业科学

影响因子:0.413
ISSN:0517-6611
参考文献量6
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