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基于剪辑支持向量机的雷达目标识别方法
引用本文:冷家旭,黄惠明,龙方.基于剪辑支持向量机的雷达目标识别方法[J].舰船电子工程,2010,30(4):68-71,165.
作者姓名:冷家旭  黄惠明  龙方
作者单位:北京跟踪与通信技术研究所,北京,100094
摘    要:支持向量机(SVM)具有分类精度高、泛化能力强等优点,已成功应用在雷达目标识别领域。但其性能受多种因素影响。针对低信噪比、分类面混迭、参数选取等问题,文章提出剪辑SVM分类器,通过小波去噪、剪辑、矩阵相似度优选参数等手段有效抑制上述问题的影响。外场实测数据的仿真也表明剪辑SVM的性能优于传统SVM与最近邻分类器。

关 键 词:高分辨距离像  目标识别  支持向量机

Radar Targets Recognition Based on Edit Support Vector Machines
Leng Jiaxu Huang Huiming Long Fang.Radar Targets Recognition Based on Edit Support Vector Machines[J].Ship Electronic Engineering,2010,30(4):68-71,165.
Authors:Leng Jiaxu Huang Huiming Long Fang
Institution:Beijing Institute of Tracking and Telecommunications Technology;Beijing 100094
Abstract:Support vector machines has a high classification accuracy and strong generalization ability.It is successfully applied in the radar targets recognition.In view of problems such as low SNR,large training samples,classification face aliasing,parameter value choosing,this paper bring forward Edit-SVM classifier.We can restrain the problem mentioned before efficiently through wavelet de-noising,cluster,editing and matrix similarity optimization parameters.The acquired outfield data proved the performance of Ed...
Keywords:high resolution range profiles  targets recognition  support vector machines  
本文献已被 CNKI 维普 万方数据 等数据库收录!
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