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《中国工程科学》 >> 2010年 第12卷 第3期

基于Laplacian特征映射的被动毫米波目标识别

南京理工大学电子工程与光电技术学院,南京 210094

资助项目 :国防预研基金资助(9140A05070107BQ0204);国防预研项目资助(51305060303) 收稿日期: 2009-04-30 发布日期: 2010-03-10 09:40:48.000

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摘要

针对传统被动毫米波金属目标识别方法中特征提取、选择的缺点,采用Laplacian特征映射流形学习算法发现了金属目标回波信号短

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