PLA for Drone RID Frames via Motion Estimation and Consistency Verification
Jie Li, Jing Li, Lu Lv, Zhanyu Ju, Fengkui Gong

TL;DR
This paper introduces a novel physical-layer authentication method for drone Remote ID frames that combines wireless sensing, motion estimation, and consistency checks to improve security against spoofing and replay attacks.
Contribution
It develops a multi-faceted PLA algorithm utilizing motion estimation, wireless sensing, and adaptive fusion, enhancing drone RID frame authentication under complex flight scenarios.
Findings
Significantly improves authentication reliability and robustness.
Outperforms existing RF feature-based schemes.
Effective under realistic wireless impairments and complex maneuvers.
Abstract
Drone Remote Identification (RID) plays a critical role in low-altitude airspace supervision, yet its broadcast nature and lack of cryptographic protection make it vulnerable to spoofing and replay attacks. In this paper, we propose a consistency verification-based physical-layer authentication (PLA) algorithm for drone RID frames. A RID-aware sensing and decoding module is first developed to extract communication-derived sensing parameters, including angle-of-arrival, Doppler shift, average channel gain, and the number of transmit antennas, together with the identity and motion-related information decoded from previously authenticated RID frames. Rather than fusing all heterogeneous information into a single representation, different types of information are selectively utilized according to their physical relevance and reliability. Specifically, real-time wireless sensing parameter…
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Taxonomy
TopicsUAV Applications and Optimization · Air Traffic Management and Optimization · Indoor and Outdoor Localization Technologies
