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基于KPCA与KFDA的SAR图像舰船目标识别
引用本文:刘磊,孟祥伟,于柯远.基于KPCA与KFDA的SAR图像舰船目标识别[J].舰船科学技术,2017,39(7).
作者姓名:刘磊  孟祥伟  于柯远
作者单位:海军航空工程学院 电子与信息工程系,山东 烟台,264001
基金项目:国家自然科学基金资助项目
摘    要:针对SAR图像中舰船目标识别的问题,提出了基于核主成分分析(Kernel Principal Component Analysis,KPCA)和核Fisher判别分析(Kernel Fisher Discriminate Analysis,KFDA)相结合的舰船目标识别算法.用核主成分分析的方法对实测的SAR舰船目标数据进行特征降维,再结合核Fisher判别分析法对降维后的样本数据进行多类别分类.将该方法用于对实测的四类舰船目标进行识别,平均识别率可达91.25%.实验结果表明,核主成分分析与核Fisher判别分析相结合的方法可提取目标的有效特征,在较低特征维数情况下获得较高的目标正确识别率.

关 键 词:SAR图像  目标识别  特征提取  核主成分分析  核Fisher判别分析

Ship targets recognition in SAR images based on KPCA and KFDA
LIU Lei,MENG Xiang-wei,YU Ke-yuan.Ship targets recognition in SAR images based on KPCA and KFDA[J].Ship Science and Technology,2017,39(7).
Authors:LIU Lei  MENG Xiang-wei  YU Ke-yuan
Abstract:Ship targets recognition algorithm combining Kernel Principal Component Analysis (KPCA) and Kernel Fisher Discriminate Analysis (KFDA) was proposed to deal with the problem of ship targets recognition in SAR images. Firstly, KPCA algorithm was used to transform the sample data of high dimension space to low dimension space to reduce the dimension. Then, the processed samples were recognized according to KFDA algorithm. The method is applied for re-cognizing fourth-class ship targets and the average recognition arrives at 91.25%. The result showed that the combination of KPCA and KFDA can effectively eliminate the interaction between sample variable indicators. It is an effective method for SAR images feature extraction and target recognition.
Keywords:SAR images  ship targets recognition  features extraction  kernel principal component analysis (KPCA)  kernel fisher discriminate analysis(KFDA)
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