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A Generalizable Model-and-Data Driven Approach for Open-Set RFF Authentication

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arxiv 2108.04436 v1 pith:FA2YJ2RM submitted 2021-08-10 cs.LG cs.ITmath.IT

A Generalizable Model-and-Data Driven Approach for Open-Set RFF Authentication

classification cs.LG cs.ITmath.IT
keywords discriminationmethodsproposeddevicesframeworkauthenticationbetterdata-driven
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Radio-frequency fingerprints~(RFFs) are promising solutions for realizing low-cost physical layer authentication. Machine learning-based methods have been proposed for RFF extraction and discrimination. However, most existing methods are designed for the closed-set scenario where the set of devices is remains unchanged. These methods can not be generalized to the RFF discrimination of unknown devices. To enable the discrimination of RFF from both known and unknown devices, we propose a new end-to-end deep learning framework for extracting RFFs from raw received signals. The proposed framework comprises a novel preprocessing module, called neural synchronization~(NS), which incorporates the data-driven learning with signal processing priors as an inductive bias from communication-model based processing. Compared to traditional carrier synchronization techniques, which are static, this module estimates offsets by two learnable deep neural networks jointly trained by the RFF extractor. Additionally, a hypersphere representation is proposed to further improve the discrimination of RFF. Theoretical analysis shows that such a data-and-model framework can better optimize the mutual information between device identity and the RFF, which naturally leads to better performance. Experimental results verify that the proposed RFF significantly outperforms purely data-driven DNN-design and existing handcrafted RFF methods in terms of both discrimination and network generalizability.

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