This paper proposes a knowledge-and-data-driven graph neural network-based collaboration learning model for reliable aircraft recognition in a heterogeneous radar network. The aircraft recognizability analysis shows that: (1) the semantic feature of an aircraft is motion patterns driven by the kinetic characteristics, and (2) the grammatical features contained in the radar cross-section (RCS) signals present spatial-temporal-frequency (STF) diversity decided by both the electromagnetic radiation shape and motion pattern of the aircraft. Then a STF graph attention convolutional network (STFGACN) is developed to distill semantic features from the RCS signals received by the heterogeneous radar network. Extensive experiment results verify that the STFGACN outperforms the baseline methods in terms of detection accuracy, and ablation experiments are carried out to further show that the expansion of the information dimension can gain considerable benefits to perform robustly in the low signal-to-noise ratio region.
翻译:本文件提议了一个以知识和数据驱动的图形神经网络协作学习模型,以便在多式雷达网络中可靠识别飞机。航空器可识别性分析表明:(1) 航空器的语义特征是动能特征驱动的运动模式,(2) 雷达横截面信号中所含的语法特征是飞机的电磁辐射形状和运动模式决定的空间时空频率多样性。然后,开发了一个STF图解注意脉动网络(STFGACN),以便从多式雷达网络收到的RCS信号中提取语义特征。广泛的实验结果证实,STFGACN在探测准确性方面超过了基线方法,并进行了模拟实验,以进一步表明信息内容的扩展可大大有利于在低信号-噪音区域强有力地发挥作用。