基于双svdd分类器的雷达高分辨率距离像识别

Long Li, Zheng Liu
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引用次数: 5

摘要

为了对高分辨率距离像雷达地面目标识别过程中的库外目标进行识别,本文提出了一种基于训练特征空间协方差分布的改进雷达地面目标分类器,即双svdd分类器。在训练阶段,在特征空间中构造双相关SVDD结构,并基于目标训练库的协方差获得多区域数据描述。该分类器将训练集划分为多个独立的相同均匀分布的区域。然后,基于支持向量和带有多区域数据描述的SVDD方法的区域径向来确定测试目标数据的类别。该方法不需要数据库外样本的模板,提高了目标识别的有效性。最后,基于实测数据的实验验证了该方法的识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radar high resolution range profile recognition via Dual-SVDD classifier
To identify the out-of-database targets in the process of radar ground target recognition with high resolution range profile, this paper proposes an improved radar ground target classifier based on the covariance distribution of the space of training features, namely Dual-SVDD classifier. In the training phase, a double correlate SVDD structure is constructed in feature space and a multi-region data description is obtained based on the covariance of target training database. The new classifier separates the training sets into several regions, which are independent identically uniform distributed. Then, the category determination of testing target data is based on the support vectors and the region radial of the SVDD method with the multi-region data description. This method can work without the template of out-of-database samples, which improves the effectiveness of target identification. Finally, the experiment based on the measured data verifies its excellent performance of identification.
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