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Multi-representation domain attentive contrastive learning based unsupervised automatic modulation recognition

Yu Li, Xiaoran Shi, Haoyue Tan, Zhenxi Zhang, Xinyao Yang, Feng Zhou

2025Nature Communications11 citationsDOIOpen Access PDF

Abstract

The rapid advancement of B5G/6G and wireless technologies, combined with rising end-user numbers, has intensified radio spectrum congestion. Automatic modulation recognition, crucial for spectrum sensing in cognitive radio, traditionally relies on supervised methods requiring extensive labeled data. However, acquiring reliable labels is challenging. Here, we propose an unsupervised framework, Multi-Representation Domain Attentive Contrastive Learning, which extracts high-quality signal features from unlabeled data via cross-domain contrastive learning. Inter-domain and intra-domain contrastive mechanisms enhance mutual modulation feature extraction across domains while preserving source domain self-information. The domain attention module dynamically selects representation domains at the feature level, improving adaptability. The experiments through public datasets show that the proposed method outperforms existing modulation recognition methods and can be extended to accommodate various representation domains. This study bridges the gap between unsupervised and supervised learning for radio signals, advancing Internet of Things and cognitive radio development. Authors introduce an unsupervised framework for automatic modulation recognition. By using multi-domain signal representation and contrastive learning, it extracts high-quality features from unlabelled data, outperforming existing methods and reducing the need for labelled samples in wireless communications.

Topics & Concepts

Computer scienceRepresentation (politics)Domain (mathematical analysis)Artificial intelligenceNatural language processingModulation (music)Feature learningPattern recognition (psychology)Speech recognitionLawAestheticsPoliticsMathematicsPolitical scienceMathematical analysisPhilosophyWireless Signal Modulation ClassificationRadar Systems and Signal ProcessingAdvanced SAR Imaging Techniques
Multi-representation domain attentive contrastive learning based unsupervised automatic modulation recognition | Litcius