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基于时频融合的深度学习调制识别算法
李辉,龚晓峰,雒瑞森
0
(四川大学 电气工程学院,成都 610065)
摘要:
自动调制识别(Automatic Modulation Recognition,AMR) 能够在缺少先验信息的条件下,识别出接收信号的调制类型,在非合作通信中起着至关重要的作用。为提高调制识别的准确率,提出了一种基于时频融合的深度学习调制识别算法。该算法将调制信号的时频图作为网络的输入,使用一维卷积分别提取信号的时频特征,并通过计算时频维度上的权重来突出重要的时频信息,使网络学习到更具区分度的时频特征。为了充分利用时频特征之间的互补性和相关性,使用了基于压缩和激励网络(Squeeze-and-Excitation Network,SENet)的时频特征融合策略。利用该网络对11种调制类型进行识别,实现了最高92.5%的识别准确率;在0 dB以上时,平均识别准确率达到90.87%,优于其他的深度学习算法。
关键词:  非合作通信  自动调制识别  深度学习  时频融合
DOI:10.20079/j.issn.1001-893x.220529001
基金项目:四川省重点研发计划项目(2020YFG0051);校企合作项目(19H1121,21H1445)
A Deep Learning Modulation Recognition Algorithm Based on Time-Frequency Fusion
LI Hui,GONG Xiaofeng,LUO Ruisen
(College of Electrical Engineering,Sichuan University,Chengdu 610065,China)
Abstract:
Automatic modulation recognition(AMR) can identify the modulation type of the received signal without a priori information,and plays a vital role in non-cooperative communication.In order to improve the accuracy of modulation recognition,a deep learning modulation recognition algorithm based on time-frequency fusion is proposed.The algorithm takes the time-frequency diagram of the modulated signal as the input of the network,uses one-dimensional convolution to extract the time-frequency characteristics of the signal respectively,and highlights the important time-frequency information by calculating the weight in the time-frequency dimension,so that the network can learn more differentiated time-frequency features.In order to make full use of the complementarity and correlation between time-frequency features,a time-frequency feature fusion strategy based on Squeeze-and-Excitation Network(SENet) is used.Using this network,11 modulation types are recognized,and the recognition accuracy is up to 92.5%.Above 0 dB,the average recognition accuracy reaches 90.87%,which is better than that of other deep learning algorithms.
Key words:  non-cooperative communication  automatic modulation recognition  deep learning  time-frequency fusion