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Support Vector Machine based micro-Doppler signature classification of ground targets

机译:支持基于矢量机基微多普勒签名分类地面目标

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In this paper, design of a micro-Doppler signature classifier for NR-V3 Ground Surveillance Radar* is discussed. The classifier distinguishes between pedestrians, vehicles and no target (noise) classes. Feature vector inputs for the classifier are extracted by preprocessing the FFT spectrum of radar backscattered signal. Support Vector Machine (SVM) with Radial Basis Function (RBF) and Polynomial kernels is used for classification of feature vectors. The classifiers are trained and tested using data collected with NR-V3 radar. This technique achieves a classification accuracy of over 94%.
机译:本文讨论了NR-V3地面监视雷达*的微多普勒签名分类器的设计。分类器区分行人,车辆和没有目标(噪声)类。通过预处理雷达反向散射信号的FFT频谱来提取分类器的特征向量输入。支持向量机(SVM)具有径向基函数(RBF)和多项式内核用于特征向量的分类。使用与NR-V3雷达收集的数据进行培训并测试分类器。该技术实现了超过94%的分类精度。

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