LPI Radar Signals Intra-Pulse Modulation Recognition Based on CA-ShuffleNet

Ying Wen, Xudong Wang, Guiguang Xu, Fei Wang
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Abstract

Recently, radar signal recognition methods based on deep learning have achieved great success. However, these approaches still need to be improved due to the limitation of the number of parameters and computation complexity. This paper proposes an intra-pulse modulation recognition approach for low probability of intercept (LPI) radar signal based on time-frequency analysis (TFA) and lightweight convolutional neural network. Through TFA and image preprocessing, the time-frequency images (TFIs) of radar signals are extracted, noise interference is reduced and redundant frequency band is removed. In order to maintain resolution of images and enhance the ability of the network to extract channel and location information, we introduce dilated convolution and coordinate attention (CA) to ShuffleNetV2. And we proposed a joint loss function consisting of center loss and label smoothing loss to alleviate the overfitting problem and make samples cluster better. Simulation results show that the proposed approach can achieve an overall accuracy of recognition of 98.14% when the SNR is -8 dB.
基于CA-ShuffleNet的LPI雷达信号脉冲内调制识别
近年来,基于深度学习的雷达信号识别方法取得了很大的成功。然而,由于参数数量和计算复杂度的限制,这些方法仍有待改进。提出了一种基于时频分析(TFA)和轻量级卷积神经网络的低截获概率雷达信号脉冲内调制识别方法。通过TFA和图像预处理,提取雷达信号的时频图像,降低噪声干扰,去除冗余频段。为了保持图像的分辨率,增强网络提取通道和位置信息的能力,我们在ShuffleNetV2中引入了扩展卷积和协调注意(CA)。提出了一种由中心损失和标签平滑损失组成的联合损失函数来缓解过拟合问题,使样本更好地聚类。仿真结果表明,当信噪比为-8 dB时,该方法的总体识别准确率为98.14%。
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