2024
DOI: 10.1155/int/4366040
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SFCNN: Separation and Fusion Convolutional Neural Network for Radio Frequency Fingerprint Identification

Shiyuan Wang,
Rugui Yao,
Xiaoya Zuo
et al.

Abstract: The unique fingerprints of radio frequency (RF) devices play a critical role in enhancing wireless security, optimizing spectrum management, and facilitating device authentication through accurate identification. However, high‐accuracy identification models for radio frequency fingerprint (RFF) often come with a significant number of parameters and complexity, making them less practical for real‐world deployment. To address this challenge, our research presents a deep convolutional neural network (CNN)–based a… Show more

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