LPI radar waveform recognition model based on multiple feature image and quasi-residual attention module

Zhe Li, Lihua Wu, Bin Xia, Lintao Song
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Abstract

Detecting and classifying the modulation type of the intercepted noisy LPI radar waveform has become a hot topic in the field of Electronic Countermeasures (ECM). In this paper, we propose a recognition model based on multiple feature images (MFI) and convolutional neural networks (CNN) with the quasi-residual attention module (QRAM). The core technologies of this model are divided into two parts. One is the MFI that combines the ambiguity function image (AFI) of the complete signal, covariance matrix image (CMI) of the reconstructed signal, and short-time Fourier transform image (STFTI) of the truncated signal into RGB color image in signal processing as the input for recognition network. The other is CNN with a QRAM recognition network, in which the input is sliced into two mappings called identity mapping and residual mapping to build the quasi-residual module, and the attention module is embedded in each mapping to denoise and enhance the feature. The performance of the MFI-QRAM model is demonstrated by recognizing 12 modulation types of the signals defined in this paper. The simulation experiments show that the model has strong robustness with the number of train sets and the variation of SNR. The overall probability of successful recognition (PSR) is 96.17% when the SNR is −6 dB.
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基于多特征图像和准延迟注意模块的 LPI 雷达波形识别模型
对截获的噪声 LPI 雷达波形的调制类型进行检测和分类已成为电子对抗(ECM)领域的一个热门话题。在本文中,我们提出了一种基于多特征图像(MFI)和卷积神经网络(CNN)与准残留注意模块(QRAM)的识别模型。该模型的核心技术分为两部分。一个是 MFI,它将完整信号的模糊函数图像(AFI)、重构信号的协方差矩阵图像(CMI)和截断信号的短时傅里叶变换图像(SFTI)组合成信号处理中的 RGB 彩色图像,作为识别网络的输入。另一种是带有 QRAM 识别网络的 CNN,其中输入被切成两个映射,称为身份映射和残差映射,以建立准残差模块,并在每个映射中嵌入注意力模块,以去噪和增强特征。通过识别本文定义的 12 种调制类型的信号,证明了 MFI-QRAM 模型的性能。模拟实验表明,该模型对训练集的数量和信噪比的变化具有很强的鲁棒性。当信噪比为 -6 dB 时,总体识别成功概率 (PSR) 为 96.17%。
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