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首页> 外文期刊>Applied Computational Electromagnetics Society journal >Radar Target Recognition by Machine Learning of K-Nearest Neighbors Regression on Angular Diversity RCS
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Radar Target Recognition by Machine Learning of K-Nearest Neighbors Regression on Angular Diversity RCS

机译:雷达目标通过机器学习对角分集rcs的回归机器学习

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In this paper, the radar target recognition is given by machine learning of K-NN (K-nearest neighbors) regression on angular diversity RCS (radar cross section). The bistatic RCS of a target at a fixed elevation angle and different azimuth angles are collected to constitute an angular diversity RCS vector. Such angular diversity RCS vectors are chosen as features to identify the target. Different RCS vectors are collected and processed by the K-NN regression. The machine learning belongs to the scope of artificial intelligence, which has attracted the attention of researchers all over the world. In this study, the K-NN rule is extended to achieve regression and is then applied to radar target recognition. With the use of K-NN regression, the radar target recognition is very simple, efficient, and accurate. Numerical simulation results show that our target recognition scheme is not only accurate, but also has good ability to tolerate random fluctuations.
机译:在本文中,雷达目标识别由在角分集RCS(雷达横截面)上的K-NN(k最近邻居)回归的机器学习给出。收集以固定仰角和不同方位角的目标的双晶RCS被收集以构成角度分集RCS向量。选择这种角度分集RCS向量作为特征以识别目标。通过K-NN回归收集和处理不同的RCS载体。机器学习属于人工智能的范围,这引起了世界各地的研究人员的注意。在这项研究中,K-NN规则扩展到实现回归,然后应用于雷达目标识别。随着K-NN回归的使用,雷达目标识别非常简单,高效,准确。数值模拟结果表明,我们的目标识别方案不仅准确,而且还具有耐受随机波动的良好能力。

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