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A Radar Target Recognition Method Based on Nonparametric Feature Analysis and Backward Cloud Model

机译:基于非参数特征分析和后向云模型的雷达目标识别方法

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When applying Parameter Discriminant Analysis (PDA) in extracting features of radar target High-Resolution Range Profile (HRRP),the construction of scatter matrices relies on the assumption that HRRPs in all classes satisfy the Gaussian distribution with the same covariance matrix.However,the distribution of HRRP is actually complex.In order to tackle this problem,a radar target recognition approach based on nonparametric feature analysis and back cloud model is proposed in this paper.Compared with PDA,nonparametric feature analysis (NFA) estimates the contribution of the K nearest neighbors (KNN) points to calculate the between-class scatter matrix.NFA makes use of class boundary information and relaxes the requirement of Gaussian distribution assumption in PDA.Moreover,back cloud model better describes the complex distribution of the HRRP NFA subspace due to the representation of signal's randomness and fuzziness.Simulation results based on a HRRP dataset of five aircraft models demonstrate the effectiveness of the proposed approach.
机译:在将参数判别分析(PDA)应用于雷达目标高分辨率距离剖面(HRRP)的特征提取中时,散射矩阵的构建依赖于所有类别的HRRP都满足高斯分布且具有相同协方差矩阵的假设。为了解决这个问题,本文提出了一种基于非参数特征分析和后云模型的雷达目标识别方法。与PDA相比,非参数特征分析(NFA)估计了KRP的贡献。最近邻(KNN)点来计算类间散布矩阵。NFA利用类边界信息并放宽了PDA中高斯分布假设的要求。此外,后云模型更好地描述了HRRP NFA子空间的复杂分布,原因是基于五个飞机模型演示的HRRP数据集的仿真结果证明所提出方法的有效性。

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