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A Parallel Neural Network-based Scheme for Radar Emitter Recognition

机译:基于雷达发射极识别的并行神经网络方案

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Passive radar systems are used in the military for intelligence gathering, threat detection and as a support to electronic attack systems. Therefore, radar emitter recognition is a crucial task of reconnaissance systems for accurately identification of hostile threats. However, this problem is challenging due to the complicated noisy electromagnetic environment as well as the increasing complexity of modern radar signals. In this paper, we introduce a novel deep neural network-based scheme, named ParallelNet for the recognition of different radar types. In our approach, I/Q samples and radar pulse features extracted from received wideband signal are inputs of two parallel sub-neural networks. The outputs of sub-networks are subsequently combined to deduce the classification result. We realize extensive simulations to show that ParallelNet achieves an outstanding performance in terms of recognition accuracy and robustness in severely noisy conditions.
机译:被动雷达系统用于军队进行智能收集,威胁检测和电子攻击系统的支持。因此,雷达发射极识别是侦察系统的关键任务,以准确识别敌对威胁。然而,由于复杂的电磁环境以及现代雷达信号的增加,这个问题是挑战。在本文中,我们介绍了一种新颖的基于神经网络的基于网络的方案,命名并行网络,用于识别不同的雷达类型。在我们的方法中,从接收的宽带信号提取的I / Q样本和雷达脉冲特征是两个并行子神经网络的输入。随后将子网的输出组合以推导出分类结果。我们实现了广泛的模拟,以表明并行网络在严重嘈杂的条件下在识别准确性和鲁棒性方面实现了出色的性能。

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