基于CNN-LSTM双信道的通信信号调制识别方法

Yanjie Ren, Xiaogang Tang, Binquan Zhang, Junhao Feng, Minghui Gao
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引用次数: 0

摘要

针对基于深度学习的端到端调制识别方法识别率低、参数多的问题,提出了一种基于卷积神经网络(CNN)和长短期记忆(LSTM)网络相结合的CNN-LSTM双通道(DCNN-LSTM)调制识别方法。该方法首先利用CNN信道中的一维卷积和LSTM信道中IQ信号变换后的AP数据的时域特征提取IQ信号的频域特征;然后,通过连接操作和卷积层融合两个通道的特征。最后,该方法采用Global Average Pooling (GAP)代替Flatten,在不增加参数的情况下集成了向量的特征信息。实验结果表明,与CNN、LSTM和SCRNN相比,本文方法的参数个数分别减少了98.4%、77.8%和88.9%,识别率分别提高了9.7%、3.3%和0.4%。本文提出的方法对通信调制信号识别研究领域具有理论参考价值,对复杂环境下空间信号的智能分类研究具有工程参考意义。
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Modulation Recognition Method of Communication Signal Based on CNN-LSTM Dual Channel
Considering the problem of low recognition rate and a large number of parameters in end-to-end modulation recognition methods based on deep learning, a CNN-LSTM dual channel(DCNN-LSTM) modulation recognition method based on the combination of Convolutional Neural Network (CNN) and Long Short-Term Memory(LSTM) network is proposed in this paper. Firstly, the proposed method extracts the frequency domain features of the IQ signal using one-dimensional convolution in the CNN channel and the time-domain features of the transformed AP data of the IQ signal in the LSTM channel. Then, fusing the features of the two channels by the Concatenate operation and convolution layer. Finally, the method uses Global Average Pooling (GAP) instead of Flatten, which integrates the feature information of the vectors without additional parameters. Experimentally, the number of parameters of the proposed method is respectively reduced by 98.4%, 77.8%, and 88.9% compared with CNN, LSTM, and SCRNN, while the recognition rate is respectively improved by 9.7%, 3.3%, and 0.4%. The method proposed in this paper has theoretical reference value for the research field of communication modulation signal recognition, and engineering reference significance for the study of the intelligent classification of spatial signals in complex environments.
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