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Hierarchical Reconstruction and Structural Waveform Analysis for Target Classification

机译:目标分类的层次重构和结构波形分析

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Classification of objects from scattered electromagnetic waves is a difficult problem, as it heavily depends on aspect angle. To minimize this dependency, distinguishable features can be used. In this paper, we propose a target identification method in the resonance scattering region using a novel structural feature set based on the scattered signal waveform. To obtain robustness at low signal-to-noise ratio (SNR), a multiscale approximation is used for distortion correction prior to the feature extraction. This is achieved by an overlapping grid hierarchical radial basis function (HRBF $_{mathrm {mathrm {OG}}})$ network topology, which is demonstrated to outperform existing HRBF techniques. The results obtained from the simulations and the measurements performed for various targets show high accuracy for classification with the proposed feature set, robustness through the use of HRBF at low SNR, and efficient computation in real time.
机译:从散射的电磁波对物体进行分类是一个难题,因为它很大程度上取决于纵横比。为了最小化这种依赖性,可以使用可区分的功能。本文提出了一种基于散射信号波形的新型结构特征集的共振散射区域目标识别方法。为了在低信噪比(SNR)下获得鲁棒性,在特征提取之前,将多尺度近似用于失真校正。这是通过重叠的网格层次结构径向基函数(HRBF $ _ {mathrm {mathrm {OG}}})$网络拓扑来实现的,已证明它优于现有的HRBF技术。从各种目标的仿真和测量获得的结果表明,使用建议的特征集进行分类的准确性很高,通过使用低SNR的HRBF可以实现鲁棒性,并且可以进行实时高效计算。

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