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Methodology of classification and recognition of the radar emission sources based on Bayesian programming

机译:基于贝叶斯编程的雷达排放源的分类和识别方法

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摘要

This study considers the Bayesian programming methodology for recognition and classification of radio emission sources. A mathematical model of Bayesian programming proposes forming a family of probability distributions based on known parameters contained in a training sample (database). The correlations between the object classes have been estimated according discussed methodology. The received assessment has been used to separate procedures of recognition and classification of radar emission sources. The simulation of methodology has carried out for four parameters of radar signals (frequency range, pulse width, pulse repetition interval and radar rotation frequency) by used database with 346 classes and 16 types of radar. Based on the existing database of radar emission sources, it is possible to predict the probability of class recognition for the general population of objects, if its distribution is known. This study demonstrates the consistency of the Bayesian programming methodology for object identification in ELINT systems.
机译:本研究考虑了贝叶斯编程方法,用于识别和分类无线发射源。基于训练样本(数据库)中包含的已知参数,形成贝叶斯编程的数学模型提出形成一系列概率分布。根据讨论的方法估计了对象类之间的相关性。已接受的评估已被用于分开雷达排放来源的认可和分类程序。使用346类和16种雷达的使用数据库,对方法的四个参数进行了用于雷达信号(频率范围,脉冲宽度,脉冲重复间隔和雷达旋转频率)的仿真。基于雷达发射源的现有数据库,如果已知其分布,可以预测对象一般群体识别的概率。本研究展示了贝叶斯编程方法在闪光系统中对象识别的一致性。

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