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Radar high-resolution range profile recognition via geodesic weighted sparse representation

机译:通过测地线加权稀疏表示进行雷达高分辨率测距剖面识别

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摘要

One of the radar high-resolution range profile (HRRP) recognition issues is the target-aspect sensitivity. Both theoretical analysis and real-world data show that the HRRP shows a high correlation only in a very small aspect region. To overcome this problem, in traditional methods, the scattering centre model and averaged range profile are utilised. In this study, the authors present a graph-based semi-supervised method, called geodesic weighted sparse representation (GWSR), to overcome the target-aspect sensitivity problem. It is assumed that HRRP from different targets is located on different manifolds and the correlation information is utilised to separate these manifolds. In GWSR, the geodesic distance is calculated firstly and then the labelled HRRP is reconstructed by the geodesic weight. The nonlinear structure of HRRP can be transformed into a linear one through the reconstruction process. Then, the unlabelled HRRP is sparsely reconstructed and the sparse reconstruction weight can be utilised to estimate the label of the unlabelled HRRP from the given labels. Experiments on three kinds of ground target HRRPs with different backgrounds demonstrate the effectiveness of the authors' method.
机译:雷达高分辨率测距剖面(HRRP)识别问题之一是目标方面的灵敏度。理论分析和实际数据均表明,HRRP仅在很小的方面区域显示出高度相关性。为了克服这个问题,在传统方法中,使用了散射中心模型和平均范围轮廓。在这项研究中,作者提出了一种基于图的半监督方法,称为测地加权稀疏表示(GWSR),以克服目标-方面敏感性问题。假设来自不同目标的HRRP位于不同的歧管上,并且利用相关信息来分离这些歧管。在GWSR中,首先计算测地距离,然后通过测地权重重建标记的HRRP。 HRRP的非线性结构可以通过重构过程转化为线性结构。然后,对未标记的HRRP进行稀疏重构,并利用稀疏的重构权重从给定标签中估算未标记的HRRP的标签。在不同背景的三种地面目标HRRP上进行的实验证明了该方法的有效性。

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