Chen Kuiyu, Zhang Shuning, Zhu Lingzhi, Chen Si, Zhao Huichang
School of Electronic and Optical Engineering, Nanjing University of Science and Technology, Xiao Ling Wei200#, Nanjing 210094, China.
Sensors (Basel). 2021 Jan 10;21(2):449. doi: 10.3390/s21020449.
Automatically recognizing the modulation of radar signals is a necessary survival technique in electronic intelligence systems. In order to avoid the complex process of the feature extracting and realize the intelligent modulation recognition of various radar signals under low signal-to-noise ratios (SNRs), this paper proposes a method based on intrapulse signatures of radar signals using adaptive singular value reconstruction (ASVR) and deep residual learning. Firstly, the time-frequency spectrums of radar signals under low SNRs are improved after ASVR denoising processing. Secondly, a series of image processing techniques, including binarizing and morphologic filtering, are applied to suppress the background noise in the time-frequency distribution images (TFDIs). Thirdly, the training process of the residual network is achieved using TFDIs, and classification under various conditions is realized using the new-trained network. Simulation results show that, for eight kinds of modulation signals, the proposed approach still achieves an overall probability of successful recognition of 94.1% when the SNR is only -8 dB. Outstanding performance proves the superiority and robustness of the proposed method.
自动识别雷达信号的调制方式是电子情报系统中一项必要的生存技术。为了避免复杂的特征提取过程,并实现低信噪比(SNR)下各种雷达信号的智能调制识别,本文提出了一种基于雷达信号脉内特征的方法,该方法采用自适应奇异值重构(ASVR)和深度残差学习。首先,经过ASVR去噪处理后,低信噪比下雷达信号的时频谱得到改善。其次,应用包括二值化和形态学滤波在内的一系列图像处理技术,以抑制时频分布图像(TFDI)中的背景噪声。第三,使用TFDI实现残差网络的训练过程,并使用新训练的网络实现各种条件下的分类。仿真结果表明,对于八种调制信号,当SNR仅为-8 dB时,所提方法仍实现了94.1%的总体成功识别概率。出色的性能证明了所提方法的优越性和鲁棒性。