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

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This study introduces an unsupervised method for automatic modulation recognition in radio signals, overcoming the need for labeled data. The approach enhances spectrum sensing for cognitive radio and the Internet of Things.

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Area of Science:

  • Electrical Engineering
  • Computer Science
  • Signal Processing

Background:

  • Radio spectrum congestion is increasing due to advancements in 5G/6G wireless technologies and user growth.
  • Automatic modulation recognition (AMR) is vital for spectrum sensing in cognitive radio but typically requires supervised learning with extensive labeled data, which is difficult to obtain.
  • Existing methods face challenges in acquiring reliable labels for supervised AMR.

Purpose of the Study:

  • To propose an unsupervised framework for AMR that eliminates the need for labeled data.
  • To extract high-quality signal features from unlabeled data using cross-domain contrastive learning.
  • To enhance the adaptability and performance of AMR in dynamic wireless environments.

Main Methods:

  • Developed a Multi-Representation Domain Attentive Contrastive Learning framework.
  • Employed inter-domain and intra-domain contrastive learning to improve feature extraction across different signal representations.
  • Integrated a domain attention module for dynamic selection of feature representation domains.

Main Results:

  • The proposed unsupervised method achieved superior performance compared to existing AMR techniques on public datasets.
  • The framework demonstrated effectiveness in extracting high-quality signal features from unlabeled data.
  • The method showed adaptability and could be extended to various representation domains.

Conclusions:

  • The study presents a significant advancement in unsupervised learning for radio signal processing.
  • The proposed framework effectively bridges the gap between unsupervised and supervised learning for AMR.
  • This work contributes to the development of the Internet of Things and cognitive radio technologies by improving spectrum sensing capabilities.