Domain Generalization for Cross-Receiver Radio Frequency Fingerprint Identification
About
Radio Frequency Fingerprint Identification (RFFI) technology uniquely identifies emitters by analyzing unique distortions in the transmitted signal caused by non-ideal hardware. Recently, RFFI based on deep learning methods has gained popularity and is seen as a promising way to address the device authentication problem for Internet of Things (IoT) systems. However, in cross-receiver scenarios, where the RFFI model is trained over RF signals from some receivers but deployed at a new receiver, the alteration of receivers' characteristics would lead to data distribution shift and cause significant performance degradation at the new receiver. To address this problem, we first perform a theoretical analysis of the cross-receiver generalization error bound and propose a sufficient condition, named Separable Condition (SC), to minimize the classification error probability on the new receiver. Guided by the SC, a Receiver-Independent Emitter Identification (RIEI)model is devised to decouple the received signals into emitter-related features and receiver-related features and only the emitter-related features are used for identification. Furthermore, by leveraging federated learning, we also develop a FedRIEI model to eliminate the need for centralized collection of raw data from multiple receivers. Experiments on two real-world datasets demonstrate the superiority of our proposed methods over some baseline methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Radio Frequency Fingerprinting Identification | ManySig Day 1 1.0 (test) | Accuracy69.5 | 40 | |
| Transmitter Identification | WiSig (Day 3) | Accuracy72.11 | 20 | |
| Transmitter Identification | WiSig (Day 4) | Accuracy0.7091 | 20 | |
| Transmitter Identification | WiSig (Day 2) | Accuracy69.63 | 20 |