Characteristic function based method for SVM classification of maneuvering over the horizon targets

A. Jalalirad, H. Amindavar, Rodney Lynn Kirlin
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引用次数: 2

Abstract

In this paper, we propose a new classification method based on characteristic function (CF) and support vector machine (SVM). In order to validate the new approach, we classify three groups of airborne over-the-horizon radar (OTHR) targets. Since signal models make the basis for analysis and enhancement of OTHR performance, choosing an appropriate model has always been a matter of concern. On the other hand, the returned signal from a maneuvering target is more often a multi-component signal with time-varying frequency, hence, we model the received signal as being comprised of a chirp faded by the radar cross section (RCS) plus Gaussian white noise and K-distributed (un)correlated clutter. Little work has been done on OTHR target classification. In order to assess the new classification approach based on CF, we compare our method with discriminant analysis (DA), decision tree (DT), and multi-layer Perceptron neural network (NN). It will be depicted through extensive simulations that the proposed CF and multi-phase SVM method's error in classifying airborne targets is about 3.5% less than existing classification methods'.
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基于特征函数的支持向量机水平目标机动分类方法
本文提出了一种基于特征函数(CF)和支持向量机(SVM)的分类方法。为了验证新方法的有效性,我们对三组机载超视距雷达(OTHR)目标进行了分类。信号模型是分析和提高OTHR性能的基础,因此选择合适的信号模型一直是人们关注的问题。另一方面,从机动目标返回的信号往往是一个时变频率的多分量信号,因此,我们将接收信号建模为由雷达横截面(RCS)衰减的啁啾加上高斯白噪声和k分布(非)相关杂波组成。对其他r目标分类的研究很少。为了评估基于CF的新分类方法,我们将该方法与判别分析(DA)、决策树(DT)和多层感知器神经网络(NN)进行了比较。通过大量的仿真表明,所提出的CF和多相SVM方法对机载目标的分类误差比现有的分类方法小3.5%左右。
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