Model-Driven Learning-Based Physical Layer Authentication for Mobile Wi-Fi Devices
arXiv cs.LG / 3/23/2026
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Key Points
- The paper proposes a learning-based physical layer authentication (PLA) scheme for mobile Wi-Fi devices that blends hypothesis testing with deep learning, resulting in LiteNP-Net.
- LiteNP-Net is a lightweight neural network driven by the Neyman-Pearson detector, designed to approach NP detector performance without requiring prior knowledge of channel statistics.
- The authors validate the approach with extensive simulations and a real-world Wi-Fi IoT testbed, showing LiteNP-Net outperforms conventional correlation-based methods and Siamese-based PLA.
- The work addresses the practicality vs. optimality trade-off in PLA by integrating conditional statistical models into the NP framework and delivering a deployable learning-based solution.
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