A robust modulation classification method using convolutional neural networks

被引:0
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作者
Siyang Zhou
Zhendong Yin
Zhilu Wu
Yunfei Chen
Nan Zhao
Zhutian Yang
机构
[1] School of Electronics and Information Engineering,
[2] Harbin Institute of Technology,undefined
[3] School of Engineering,undefined
[4] University of Warwick,undefined
[5] School of Information and Communication Engineering,undefined
[6] Dalian University of Technology,undefined
关键词
Robust automatic modulation classification; Convolutional neural networks; Deep learning; Feature learning;
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摘要
Automatic modulation classification (AMC) is a core technique in noncooperative communication systems. In particular, feature-based (FB) AMC algorithms have been widely studied. Current FB AMC methods are commonly designed for a limited set of modulation and lack of generalization ability; to tackle this challenge, a robust AMC method using convolutional neural networks (CNN) is proposed in this paper. In total, 15 different modulation types are considered. The proposed method can classify the received signal directly without feature extracion, and it can automatically learn features from the received signals. The features learned by the CNN are presented and analyzed. The robust features of the received signals in a specific SNR range are studied. The accuracy of classification using CNN is shown to be remarkable, particularly for low SNRs. The generalization ability of robust features is also proven to be excellent using the support vector machine (SVM). Finally, to help us better understand the process of feature learning, some outputs of intermediate layers of the CNN are visualized.
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