Evaluation of radar image processing efficiency based on intelligent analysis of processes

IF 0.2 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Visnyk NTUU KPI Seriia-Radiotekhnika Radioaparatobuduvannia Pub Date : 2021-12-24 DOI:10.30837/rt.2021.4.207.09
V. Zhyrnov, S. Solonskaya, I. Shubin
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Abstract

The paper presents results of development of the method and experimental studies of the system for automatic detection of radar signals of aerial objects and their recognition with the processing of real records in surveillance radars. The relevance of this work consists in creation of algorithms for automatic information processing to ensure effective detection of useful signals due to accumulation of signal (energy) and semantic information. The method is based on the definition of semantic components at the stage of formation and analysis of the symbolic model of signals from point and extended air objects. Signal information is described by the predicate function of process knowledge of the formation and analysis of a symbolic model of a burst of impulse signals from point-like mobile aircraft such as an airplane, a helicopter, a UAV, and from extended atmospheric formations such as angel-echoes, clouds. As a result of semantic analysis of symbolic images of signal marks, classification distinctive features of air objects were obtained. The semantic components of the decision-making algorithm, similar to the decision-making algorithms used by the operator, have been investigated. In the developed algorithm, signal information is described by a predicate function on the set of signal mark pulse amplitudes that have exceeded a certain threshold value. Recognizing of aerial objects is carried out by solving the developed equations of predicate operations. The verification of the developed method was carried out on real data obtained on a survey radar of the centimeter range (pulse duration was 1 μs, probing frequency wass 365 Hz, survey period was 10 s). Based on these data, the types of characteristic marks of radar signals are modeled. According to the results of the experiments, they were all correctly identified.
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基于过程智能分析的雷达图像处理效率评价
本文介绍了监控雷达对空中目标雷达信号的自动检测及实录处理识别系统的开发方法和实验研究成果。这项工作的相关性在于创建自动信息处理算法,以确保由于信号(能量)和语义信息的积累而有效检测有用的信号。该方法基于在形成阶段对语义成分的定义和对点和扩展空中物体信号符号模型的分析。信号信息通过过程知识的谓词函数来描述,并对来自点状移动飞行器(如飞机、直升机、无人机)和来自扩展的大气结构(如天使回波、云)的脉冲信号突发的符号模型进行分析。通过对信号标记符号图像的语义分析,得到了空中目标的分类特征。研究了决策算法的语义成分,类似于算子使用的决策算法。在所开发的算法中,信号信息由超过一定阈值的信号标记脉冲幅值集合上的谓词函数来描述。空中目标的识别是通过求解已开发的谓词运算方程来实现的。利用厘米级测量雷达(脉冲持续时间为1 μs,探测频率为365 Hz,测量周期为10 s)的实际数据对所提出的方法进行了验证,并在此基础上建立了雷达信号特征标记类型的模型。根据实验结果,它们都被正确地识别出来了。
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Visnyk NTUU KPI Seriia-Radiotekhnika Radioaparatobuduvannia
Visnyk NTUU KPI Seriia-Radiotekhnika Radioaparatobuduvannia ENGINEERING, ELECTRICAL & ELECTRONIC-
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