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Deep Learning-Based Approach for Low Probability of Intercept Radar Signal Detection and Classification

机译:基于深度学习的拦截雷达信号检测概率的方法和分类

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摘要

Detection and classification of Low Probability of Interception (LPI) radar signals is one of the most important challenges in electronic warfare (EW), since there are limited methods for identifying these type of signals. In this paper, a radar waveform automatic identification system for detecting and classifying LPI radar is studied, and accordingly we propose a method based on deep learning networks to detect and classify LPI radar waveforms. To this end, the GoogLeNet architecture as one of the well-known convolutional neural networks (CNN) is utilized. We employ the Short Time Fourier Transform (STFT) for time-frequency analysis in order to construct the entry image for proposed method 1,2 (improved the GoogLeNet and AlexNet networks) to recognize offline training and online recognition. After the training procedure with the supervised data sets the proposed method 1,2 can detect and classify nine modulation types of LPI radar, including LFM, poly-phase (P1, P2, P3, P4) and poly-time (T1, T2, T3, T4) waveforms. The numerical results for proposed method 1, show considerable accuracies up to 98.7% at the SNR level of -15 dB, which outperforms the existing methods.
机译:拦截低概率(LPI)雷达信号的检测和分类是电子战(EW)中最重要的挑战之一,因为有限的方法来识别这些类型的信号。本文研究了用于检测和分类LPI雷达的雷达波形自动识别系统,因此我们提出了一种基于深度学习网络来检测和分类LPI雷达波形的方法。为此,利用作为众所周知的卷积神经网络(CNN)之一的Googlenet架构。我们采用短时间傅里叶变换(STFT)进行时频分析,以便构建所提出的方法1,2(改进Googlenet和AlexNet网络)以识别离线培训和在线识别的进入图像。在具有监督数据设置的培训过程之后,所提出的方法1,2可以检测和分类九种调制类型的LPI雷达,包括LFM,多相(P1,P2,P3,P4)和多时间(T1,T2, T3,T4)波形。所提出的方法1的数值结果表明,在-15dB的SNR水平下显示出相当大的精度高达98.7%,这优于现有方法。

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