Target recognition with adaptive waveforms in cognitive radar using practical target RCS responses

Q. Tan, R. Romero, D. Jenn
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引用次数: 16

Abstract

In this paper, we utilize high-fidelity electromagnetic-simulated RCS responses in a cognitive radar (CRr) platform performing target recognition. Previous works used arbitrarily generated target responses consisting of a few frequency resonances which are distinct across different targets. However, realistic target responses contain rich frequency components characterized by physical scattering centers of the target. It is therefore imperative to build on prior works by considering practical target responses. We utilize an improved waveform design technique known as probability-weighted energy (PWE) over classical spectral variance methods such as probability-weighted spectral variance (PWSV). Our results showed an improvement in classification performance of SNR and mutual information (MI)-based waveforms used in conjunction with PWE and PWSV update methods over receiver-adaptive wideband pulsed waveform using a CRr platform. In this work, we also consider a more complex case where the target's azimuth angle has some deviation such that the response from that target is not deterministic but rather from an ensemble of different responses as dictated by aspect angle uncertainty.
基于实际目标RCS响应的认知雷达自适应波形目标识别
在本文中,我们利用高保真电磁模拟RCS响应在认知雷达(CRr)平台执行目标识别。以前的研究使用了由几个频率共振组成的任意生成的目标响应,这些频率共振在不同的目标上是不同的。然而,现实的目标响应包含丰富的频率分量,其特征是目标的物理散射中心。因此,必须在先前工作的基础上,考虑实际的目标反应。我们利用一种改进的波形设计技术,即概率加权能量(PWE),而不是经典的谱方差方法,如概率加权谱方差(PWSV)。我们的研究结果表明,在CRr平台上,结合PWE和PWSV更新方法,基于信噪比和互信息(MI)的波形在接收机自适应宽带脉冲波形上的分类性能有所提高。在这项工作中,我们还考虑了一个更复杂的情况,即目标的方位角有一些偏差,使得该目标的响应不是确定性的,而是来自不同响应的集合,这是由向角不确定性决定的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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