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基于支持向量机无限集成学习方法的遥感图像分类
引用本文:杨娜,秦志远,张俊.基于支持向量机无限集成学习方法的遥感图像分类[J].测绘科学,2013,38(1):47-50.
作者姓名:杨娜  秦志远  张俊
作者单位:1. 信息工程大学测绘学院,郑州450052;65015部队,辽宁大连116023
2. 信息工程大学测绘学院,郑州,450052
3. 65015部队,辽宁大连,116023
摘    要:基于支持向量机的无限集成学习方法(SVM-based IEL)是机器学习领域新兴起的一种集成学习方法。本文将SVM-based IEL引入遥感图像的分类领域,并同时将SVM、Bagging、AdaBoost和SVM-based IEL等方法应用于遥感图像分类。实验表明:Bagging方法可以提高遥感图像的分类精度,而AdaBoost却降低了遥感图像的分类精度;同时,与SVM、有限集成的学习方法相比,SVM-based IEL方法具有可以显著地提高遥感图像的分类精度、分类效率的优势。

关 键 词:集成学习  装袋集成学习  提升集成学习  支持向量机

Remotely sensed imagery classification by SVM-based Infinite Ensemble Learning method
YANG Na,QIN Zhi-yuan,ZHANG Jun.Remotely sensed imagery classification by SVM-based Infinite Ensemble Learning method[J].Science of Surveying and Mapping,2013,38(1):47-50.
Authors:YANG Na  QIN Zhi-yuan  ZHANG Jun
Institution:②(①School of Geomatics,Information Engineering University,Zhengzhou 450052,China;②Troops 65015,Liaoning Dalian 116023,China)
Abstract:Support-vector-machines-based Infinite Ensemble Learning method(SVM-based IEL) is one of the ensemble learning methods in the field of machine learning.In this paper,the SVM-based IEL was applied to the classification of remotely sensed imagery besides classic ensemble learning methods such as Bagging,AdaBoost and SVM etc.SVM was taken as the base classifier in Bagging,AdaBoost.The experiments showed that the classic ensemble learning methods have different performances compared to SVM.In detail,the Bagging was capable of enhancing the classification accuracy but the AdaBoost was decreasing the classification accuracy.Furthermore,the experiments suggested that compared to SVM and classic ensemble learning methods,SVM-based IEL has many merits such as increasing both of the classification accuracy and classification efficiency.
Keywords:ensemble learning  Bagging  Boosting  Support Vector Machines
本文献已被 CNKI 万方数据 等数据库收录!
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