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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Few-Shot Specific Emitter Identification Using Asymmetric Masked Auto-Encoder
Zhisheng Yao,Xue Fu,Lantu Guo,Yu Wang,Yun Lin,Shengnan Shi,Guan Gui +6 more
TL;DR: This work proposes a few-shot SEI (FS-SEI) using asymmetric masked auto-encoder (AMAE) to solve the few- shot problem and achieves state-of-the-art identification performance compared to other supervised and unsupervised methods on the LoRa dataset and WiFi dataset.
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GLR-SEI: Green and Low Resource Specific Emitter Identification Based on Complex Networks and Fisher Pruning
TL;DR: This study proposes GLR-SEI, a novel deep learning-based Specific Emitter Identification method using complex networks and Fisher pruning, achieving a 0.7% reduction in recognition rate and 10.1% decrease in inference time while promoting green and low-carbon resource sustainability.
29
The Performance Analysis of Time Series Data Augmentation Technology for Small Sample Communication Device Recognition
01 Jun 2023
TL;DR: In this article , a complex neural network is designed to recognize the communication device based on the in-phase and quadrature time series, and several simple and effective methods of time series data augmentation are analyzed, which include noise disturbance, amplitude and time delay transformation, frequency offset, and phase shift transformation.
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LT-SEI: Long-Tailed Specific Emitter Identification Based on Decoupled Representation Learning in Low-Resource Scenarios
Haoran Zha,Hanhong Wang,Zhongming Feng,Zhenyu Xiang,Wenjun Yan,Yuanzhi He,Yun Lin +6 more
TL;DR: A novel long-tailed specific emitter identification (LT-SEI) method using decoupled representation (DR) learning that is assessed using aircraft Automatic Dependent Surveillance Broadcast (ADS-B) data collected in the real world and compared to state-of-the-art methods.
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