Airborne Multi-function Radar Air-to-air Working Pattern Recognition Based on Bayes Inference and SVM

Jingwei Xiong, Jifei Pan, Yihong Zhuo, Linqing Guo
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引用次数: 1

Abstract

Traditional identification methods often depend on the validity of training data set and the rationality of parameter selection, which leads to the decrease of availability. A comprehensive recognition method based on Bayes reasoning and SVM classifier is proposed in this paper to address the difficulty of radar operating pattern recognition under non-cooperative confrontation and jamming pulse conditions. According to the tactical application characteristics and hierarchical structure of radar operation mode, a feature parameter extraction method based on CPI is constructed. And the pattern recognition rate Bayes inference algorithm is improved base on the SVM algorithm. Simulation results show that the accuracy of this method is improved by 1.37% on average, and is 98.28% and 92.79% respectively under cooperative and non-cooperative confrontation, which proves the effectiveness of the algorithm.
基于贝叶斯推理和支持向量机的机载多功能雷达对空工作模式识别
传统的识别方法往往依赖于训练数据集的有效性和参数选择的合理性,导致可用性降低。针对非合作对抗和干扰脉冲条件下雷达工作模式识别的困难,提出了一种基于贝叶斯推理和支持向量机分类器的综合识别方法。根据雷达作战模式的战术应用特点和分层结构,构造了一种基于CPI的特征参数提取方法。在支持向量机算法的基础上改进了模式识别率贝叶斯推理算法。仿真结果表明,该方法的准确率平均提高了1.37%,在合作对抗和非合作对抗下分别提高了98.28%和92.79%,证明了算法的有效性。
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