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Analytic Radar micro-Doppler Signatures Classification

机译:解析雷达微多普勒签名分类

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Due to its capability of capturing the kinematic properties of a target object, radar micro-Doppler signatures (m-DS) play an important role in radar target classification. This is particularly evident from the remarkable number of research papers published every year on m-DS for various applications. However, most of these works rely on the support vector machine (SVM) for target classification. It is well known that training an SVM is computationally expensive due to its nature of search to locate the supporting vectors. In this paper, the classifier learning problem is addressed by a total error rate (TER) minimization where an analytic solution is available. This largely reduces the search time in the learning phase. The analytically obtained TER solution is globally optimal with respect to the classification total error count rate. Moreover, our empirical results show that TER outperforms SVM in terms of classification accuracy and computational efficiency on a five-category radar classification problem.
机译:由于其具有捕获目标物体运动学特性的能力,因此雷达微多普勒信号(m-DS)在雷达目标分类中起着重要作用。从每年在m-DS上针对各种应用发表的大量研究论文中,这一点尤其明显。但是,大多数这些工作都依赖于支持向量机(SVM)进行目标分类。众所周知,训练SVM由于其搜索以定位支持向量的性质而在计算上是昂贵的。在本文中,分类器学习问题通过可利用解析解的总错误率(TER)最小化解决。这大大减少了学习阶段的搜索时间。相对于分类总错误计数率,通过分析获得的TER解是全局最优的。此外,我们的经验结果表明,在五类雷达分类问题上,TER在分类精度和计算效率方面均优于SVM。

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