Breaking the Performance Gap of Fully and Semi-Supervised Learning in Electromagnetic Signature Recognition

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Date

2023

Authors

Wang, H.
Wang, Q.
Chen, L.
Fu, G.
Liu, X.
Dong, Z.
Panayırcı, Erdal

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Volume Title

Publisher

Institute of Electrical and Electronics Engineers Inc.

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Green Open Access

No

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Abstract

Intelligent electromagnetic signature recognition is one of the key technologies in Internet-of-Things (IoT) device connection, which can improve system security and speed up the authentication process. In practical scenarios, as the number of IoT devices increases, electromagnetic features such as fingerprint and modulation signals also increase substantially. However, since intelligent recognition technology, such as Automatic Modulation Classification (AMC), requires a large amount of labeled data to train the neural network classifier, it is challenging to collect so much labeled data. To address the performance degradation challenges with small training data, we propose an efficient semi-supervised electromagnetic recognition framework to break the performance gap with the fully supervised learning scheme. This framework can fully use the unlabeled electromagnetic data collected during the authentication process for self-training to improve the classifier’s performance. According to the idea of consistency regularization, we design a signal augmentation method and propose an ensemble pseudo-label design algorithm to improve confidence. Moreover, we perform a convex combination of electromagnetic features to smooth the model decision boundary while generalizing to unknown data distribution regions. Experimental results on the modulated data demonstrate the performance superiority of the proposed algorithm, i.e., use less than 5% of data with no more than 10% performance drop. IEEE

Description

Keywords

convex combination, Data models, electromagnetic signature recognition, Electromagnetics, ensemble pseudo-label, Feature extraction, Internet of Things, Modulation, Semi-supervised learning, Semisupervised learning, signal augmentation methods, Training, Classification (of information), Internet of things, Supervised learning, Augmentation methods, Convex combinations, Electromagnetic signature recognition, Electromagnetic signatures, Electromagnetics, Ensemble pseudo-label, Features extraction, Semi-supervised learning, Signal augmentation method, Signature recognition, Authentication, Modulation, Internet of things, Authentication, Classification (of information), electromagnetic signature recognition, Convex combinations, Internet of Things, Data models, Features extraction, Signature recognition, Electromagnetics, Augmentation methods, Electromagnetic signature recognition, convex combination, Signal augmentation method, Ensemble pseudo-label, ensemble pseudo-label, Semi-supervised learning, signal augmentation methods, Feature extraction, Training, Semisupervised learning, Electromagnetic signatures, Supervised learning

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WoS Q

Q1

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Q1
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OpenCitations Citation Count
1

Source

IEEE Internet of Things Journal

Volume

11

Issue

Start Page

1

End Page

1
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Scopus : 3

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3

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