Semi-Supervised Specific Emitter Identification Method Using Metric-Adversarial Training
Xue Fu, Yang Peng, Yuchao Liu, Yun Lin, Guan Gui, Haris Gacanin,, Fumiyuki Adachi

TL;DR
This paper introduces a semi-supervised emitter identification method using metric-adversarial training that effectively leverages limited labeled data and large unlabeled datasets to improve identification accuracy of radio signals.
Contribution
The paper proposes a novel semi-supervised SEI approach combining metric learning with adversarial training, introducing pseudo labels into metric learning for enhanced feature discrimination.
Findings
Achieves 84.80% accuracy on ADS-B dataset with 10% labeled data
Achieves 80.70% accuracy on WiFi dataset with 10% labeled data
Outperforms existing state-of-the-art methods in emitter identification
Abstract
Specific emitter identification (SEI) plays an increasingly crucial and potential role in both military and civilian scenarios. It refers to a process to discriminate individual emitters from each other by analyzing extracted characteristics from given radio signals. Deep learning (DL) and deep neural networks (DNNs) can learn the hidden features of data and build the classifier automatically for decision making, which have been widely used in the SEI research. Considering the insufficiently labeled training samples and large unlabeled training samples, semi-supervised learning-based SEI (SS-SEI) methods have been proposed. However, there are few SS-SEI methods focusing on extracting the discriminative and generalized semantic features of radio signals. In this paper, we propose an SS-SEI method using metric-adversarial training (MAT). Specifically, pseudo labels are innovatively…
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Taxonomy
TopicsWireless Signal Modulation Classification · Full-Duplex Wireless Communications
