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Radar Target Recognition based on KLLE and a KNRD Classifier

机译:基于KLLE和KNRD分类器的雷达目标识别

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This paper presents a radar target recognition method using kernel locally linear embedding (KLLE) and a kernel-based nonlinear representative and discriminative (KNRD) classifier. Locally linear embedding (LLE) is one of the representative manifold learning algorithms for dimensionality reduction. In this paper, LLE is extended by using kernel technique, which gives rises to the KLLE algorithm. A KNRD classifier is a combined version of a kernel-based nonlinear representor (KNR) and a kernel-based nonlinear discriminator (KND), two classifiers recently proposed for optimal representation and discrimination, respectively. KLLE is firstly utilized to reduce data dimension and extract features from a high resolution range profile (HRRP). Then, a KNRD classifier is employed for classification. Experimental results on measured profiles from three aircrafts indicate the relatively good recognition performance of the presented method.
机译:本文提出了一种基于核局部线性嵌入(KLLE)和基于核的非线性代表与判别(KNRD)分类器的雷达目标识别方法。局部线性嵌入(LLE)是用于降维的代表性流形学习算法之一。本文利用内核技术对LLE进行了扩展,从而提出了KLLE算法。 KNRD分类器是基于内核的非线性表示器(KNR)和基于内核的非线性鉴别器(KND)的组合版本,最近两个分类器分别提出了最佳的表示和区分方法。 KLLE首先用于减少数据尺寸并从高分辨率范围轮廓(HRRP)中提取特征。然后,使用KNRD分类器进行分类。在来自三架飞机的实测轮廓上的实验结果表明,该方法具有相对较好的识别性能。

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