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基于支持向量机和无源特征的目标识别方法
引用本文:史豪杰,邢清华,沈继承.基于支持向量机和无源特征的目标识别方法[J].电光与控制,2009,16(2).
作者姓名:史豪杰  邢清华  沈继承
作者单位:空军工程大学导弹学院,陕西,三原,713800
摘    要:通过引入机栽雷达辐射这一无源特征.采用多类分类支持向量机进行类型识别,提出了一种更有效的目标识别方法.无源特征是有用信号和噪声的叠加.具有一定程度的不确定性,采用范数熵衡量无源特征,类间距较大,类内聚集性较强,还可以抑制噪声.支持向量机分类器结构简单、可获得全局最优、泛化能力强,多类分类支持向量机解决目标识别问题高效而且实用.实验证明,该方法明显地提高了目标识别的正确率.

关 键 词:目标识别  支持向量机  无源特征  范数熵

Airplane Recognition Based on SVM and Passive Features
SHI Haojie,XING Qinghua,SHEN Jicheng.Airplane Recognition Based on SVM and Passive Features[J].Electronics Optics & Control,2009,16(2).
Authors:SHI Haojie  XING Qinghua  SHEN Jicheng
Affiliation:Missile Institute;Air Force Engineering University;Sanyuan 713800;China
Abstract:An effective method is put forward for airplane recognition by introducing in the passive feature of airborne radar radiation and using the multi-class Supports Vector Machine(SVM)for type identification.Passive feature is a mixture of signal and noise,which is uncertain.Norm entropy is used to measure the passive features,which has strong aggregation inside one type.It can also restrain noise.SVM has good characteristics of simple structure,global optimum and strong generalization ability,and Multi-SVM is ...
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