太赫兹科学与电子信息学报, 2021, 19 (4): 562, 网络出版: 2021-09-17   

复杂电磁环境下基于信号时频图像的调制识别

Modulation recognition algorithm based on signal time-frequency images in complex electromagnetic environment
作者单位
中国电波传播研究所, 山东青岛 266107
摘要
为解决调制识别研究中较少考虑到不同信号的特征之间联系性的问题, 搭建了卷积神经网络(CNN)来提取信号的彩色时频图对应的特征, 并利用时频变换的分析方法, 将一维信号处理成彩色时频图, 通过卷积神经网络架构提取图像特征; 同时为了提升算法在低信噪比下的分类识别准确率, 对时频图像的纹理特征进行了特征提取, 将提取到的纹理特征与卷积神经网络中提取到的特征进行特征融合。仿真实验结果表明, 采用的时频卷积神经网络( TF–CNN)和TF–Resnet网络框架能够达到高精确度信号自动调制识别分类的目的。
Abstract
In complex communication environment, the connection between the characteristics of different signals is seldom considered in modulation recognition. A Convolutional Neural Network(CNN) is built to extract the characteristics of the time-frequency images of signals. Time-frequency transform is employed to process the one-dimensional signal into images, and image features are extracted through CNN. In order to improve the classification and recognition accuracy of the algorithm under low SNR, the texture features are also extracted from the images, and they are fused with the features extracted from the CNN. The simulation results show that the Time–Frequency Convolution Neural Network(TF–CNN) and TF–Resnet framework can achieve signal automatic modulation recognition and classification.
参考文献

[1] 张天骐,范聪聪,葛宛营,等.基于 ICA和特征提取的 MIMO信号调制识别算法[J]. 电子与信息学报, 2020,42(9):2208-2215. (ZHANG Tianqi,FAN Congcong,GE Wanying,et al. MIMO signal modulation recognition algorithm based on ICA and feature extraction[J]. Journal of Electronics & Information Technology, 2020,42(9):2208-2215.)

[2] HAZZA A,SHOAIB M,ALSHEBEILI S A. An overview of feature-based methods for digital modulation classification[C]// International Conference on Communications,Signal Processing,and their Applications(ICCSPA). Sharjah,United Arab Emirates: IEEE, 2013:1-6.

[3] PENG S,JIANG H,WANG H. Modulation classification based on signal constellation diagrams and deep learning[J]. IEEE Transactions on Neural Networks and Learning Systems, 2018,30(3):718-727.

[4] RAYMUNDO A A,AKHTAR M Z,FELIPE S J. Feature pooling of modulation spectrum features for improved speech emotion recognition in the wild[J]. IEEE Transactions on Affective Computing, 2018,12(1):177-188.

[5] 周鑫,何晓新,郑昌文.基于图像深度学习的无线电信号识别[J].通信学报, 2019,40(7):114-125. (ZHOU Xin,HE Xiao xin,ZHENG Changwen. Radio signal recognition based on image deep learning[J]. Journal on Communications, 2019,40(7):114-125.)

[6] LI X,DONG F,ZHANG S,et al. A survey on deep learning techniques in wireless signal recognition[J]. Wireless Communications and Mobile Computing, 2019(179):1-12.

[7] 刘明骞,李建英,李兵兵,等.认知无线电 Underlay模式下 MQAM信号的调制识别[J]. 西安交通大学学报, 2018,52(2): 52-57. (LIU Mingqian,LI Jianying,LI Bingbing,et al. Modulation identification of MQAM signals in Underlay cognitive radios[J]. Journal of Xi'an Jiaotong University, 2018,52(2):52-57.)

[8] 查雄,彭华,秦鑫,等.基于多端卷积神经网络的调制识别方法[J].通信学报, 2019,40(11):30-37. (ZHA Xiong,PENG Hua,QIN Xin,et al. Modulation recognition method based on multi-inputs convolution neural network[J]. Journal on Communications, 2019,40(11):30-37.)

[9] MANSOURI M,BAKLOUTI R,HARKAT M F,et al. Kernel generalized likelihood ratio test for fault detection of biological systems[J]. IEEE Transactions on Nanobioscience, 2018,17(4):498-506.

[10] 郭立民,寇韵涵,陈涛.基于栈式稀疏自编码器的低信噪比下低截获概率雷达信号调制类型识别[J].电子与信息学 报, 2018,40(4):875-881. (GUO Limin,KOU Yunhan,CHEN Tao. Low probability of intercept radar signal recognition based on stacked sparse auto-encoder[J]. Journal of Electronics & Information Technology, 2018,40(4):875-881.)

[11] KANEKO T,TAKAKI S,KAMEOKA H,et al. Generative adversarial network-based postfilter for STFT spectrograms[C]// IEEE International Conference on Acoustics. Stockholm,Sweden:IEEE, 2017:3389-3393.

[12] WANG G,CHEN S,HUANG J,et al. Radar signal sorting and recognition based on transferred deep learning[J]. Computer Science and Application, 2019,9(9):1761-1778.

[13] WANG D,ZHANG M,LI Z,et al. Modulation format recognition and OSNR estimation using CNN-based deep learning[J]. IEEE Photonics Technology Letters, 2017,29(19):1667-1670.

李雨倩, 刘玉超, 郭兰图. 复杂电磁环境下基于信号时频图像的调制识别[J]. 太赫兹科学与电子信息学报, 2021, 19(4): 562. LI Yuqian, LIU Yuchao, GUO Lantu. Modulation recognition algorithm based on signal time-frequency images in complex electromagnetic environment[J]. Journal of terahertz science and electronic information technology, 2021, 19(4): 562.

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