Classification of Radar Targets via Distribution Matching of Late-Time Resonance Parameters

Mihail S. Georgiev;Aaron D. Pitcher;Timothy N. Davidson
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Abstract

A promising nonimagining approach to the classification of radar targets is to use the frequencies and attenuation rates of the resonant modes that present during a target’s late-time response (LTR) as features. Unfortunately, the estimation of these resonance parameters is rather sensitive to noise. However, we observe that when a large number of measurements of the LTR can be taken in a short time, the probability distribution of the estimates of the parameters can be estimated and then matched against a database of such distributions. That has the potential to reduce the sensitivity of the classification problem to noise. In this article, we develop a pragmatic approach to target classification using this distribution-matching approach and demonstrate its effectiveness through physical experiments. The proposed approach is shown to be highly robust to environmental clutter and somewhat robust to target orientation.
基于后时共振参数分布匹配的雷达目标分类
一种很有前途的非想象雷达目标分类方法是使用目标晚时响应(LTR)期间出现的谐振模式的频率和衰减率作为特征。不幸的是,这些共振参数的估计对噪声相当敏感。然而,我们观察到,当可以在短时间内对LTR进行大量测量时,可以估计参数估计的概率分布,然后与这些分布的数据库进行匹配。这有可能降低分类问题对噪声的敏感性。在本文中,我们利用这种分布匹配方法开发了一种实用的目标分类方法,并通过物理实验证明了其有效性。结果表明,该方法对环境杂波具有较高的鲁棒性,对目标定向具有一定的鲁棒性。
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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