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Deep Learning for Radar Signal Detection in Electronic Warfare Systems

机译:电子战系统中雷达信号检测深度学习

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Detection of radar signals is the initial step for passive systems. Since these systems do not have prior information about received signal, application of matched filter and general likelihood ratio tests are infeasible. In this paper, we propose a new method for detecting received pulses automatically with no restriction of having intentional modulation or pulse on pulse situation. Our method utilizes a cognitive detector incorporating bidirectional long-short term memory based deep denoising autoencoders. Moreover, a novel loss function for detection is developed. Performance of the proposed method is compared to two well known detectors, namely: energy detector and time-frequency domain detector. Qualitative experiments show that the proposed method is able to detect presence of a signal with low probability of false alarm and it outperforms the other methods in all signal-to-noise ratio cases.
机译:雷达信号的检测是被动系统的初始步骤。由于这些系统没有关于接收信号的先前信息,因此匹配过滤器和一般似然比测试的应用是不可行的。在本文中,我们提出了一种用于自动检测接收脉冲的新方法,没有限制在脉冲情况下具有故意调制或脉冲。我们的方法利用了一种具有基于双向的深度去噪自动化器的双向长短短期存储器的认知探测器。此外,开发了用于检测的新型损失功能。将所提出的方法的性能与两个众所周知的检测器进行比较,即:能量检测器和时频域检测器。定性实验表明,所提出的方法能够检测具有误报概率低的信号的存在,并且在所有信噪比情况下,它越优于其他方法。

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