Proceedings Article10.1109/icct59356.2023.10419774
Automatic Modulation Classification Based on Complex-Valued Convolutional Neural Network and Semi-Supervised Learning
Congguang Liu,Zhuoran Cai,Baojie Zhang +2 more
- 20 Oct 2023
pp 241-246
TL;DR: The proposed CCNN model is capable of extracting features from the real and imaginary parts of complex-valued signals, thereby improving the classification accuracy, and the CCNN-SSL is validated on the RML2016.10A and RML2016.10B datasets, demonstrating the superiority of the proposed approach.
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Abstract: In recent years, with the rapid development of 5G and intelligent communication, the proliferation of wireless terminal devices has led to the scarcity of spectrum resources. Cognitive radio, as a key technology for spectrum regulation and management, plays a crucial role in automatic modulation classification, which is an essential part of cognitive radio. Therefore, automatic modulation classification techniques have become increasingly important. This paper proposes an automatic modulation classification method based on Complex-Valued Convolutional Neural Network and Semi-Supervised Learning (CCNN-SSL). Deep learning has been a hot research topic in recent years, and its remarkable performance in image recognition has been widely recognized. It has also been found that applying deep learning to signal modulation classification achieves promising results. However, existing deep learning methods for modulation classification are primarily based on fully supervised learning, relying on a large amount of annotated data for neural network training. In practical signal recognition tasks, annotating a significant amount of data is costly. The proposed method effectively addresses this issue, and the CCNN model is capable of extracting features from the real and imaginary parts of complex-valued signals, thereby improving the classification accuracy. The performance of CCNN-SSL is validated on the RML2016.10A and RML2016.10B datasets, demonstrating the superiority of the proposed approach.
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References
Modulation Classification Based on Signal Constellation Diagrams and Deep Learning
Shengliang Peng,Hanyu Jiang,Huaxia Wang,Hathal Alwageed,Yu Zhou,Marjan Mazrouei Sebdani,Yu-Dong Yao +6 more
TL;DR: This paper develops several methods to represent modulated signals in data formats with gridlike topologies for the CNN and demonstrates the significant performance advantage and application feasibility of the DL-based approach for modulation classification.
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Radio Machine Learning Dataset Generation with GNU Radio
Timothy J. O'Shea,Nathan West +1 more
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TL;DR: The critical importance of good datasets for model learning, testing, and evaluation is discussed and several public open source synthetic datasets for various radio machine learning tasks are introduced.
Deep architectures for modulation recognition
Nathan West,Timothy J. O'Shea +1 more
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TL;DR: In this article, the authors survey the latest advances in machine learning with deep neural networks by applying them to the task of radio modulation recognition and show that ratio modulation recognition is not limited by network depth and further work should focus on improving learned synchronization and equalization.
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Contour Stella Image and Deep Learning for Signal Recognition in the Physical Layer
TL;DR: The investigation validates that CSI is a promising method to bridge the gap between signal recognition and DL, and develops a framework to transform complex-valued signal waveforms into images with statistical significance, termed contour stellar image (CSI), which can convey deep level statistical information from the raw wireless signal waves while being represented in an image data format.
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Semi-supervised Learning with Generative Adversarial Networks on Digital Signal Mod-ulation Classification
TL;DR: Generative Adversarial Networks (GANs) are extended to the semi-supervised learning to show it is a method can be used to create a more data-efficient classifier.
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