The open nature of wireless communications renders unmanned aerial vehicle (UAV) communications vulnerable to impersonation attacks, under which malicious UAVs can impersonate authorized ones with stolen digital certificates. Traditional fingerprint-based UAV authentication approaches rely on a single modality of sensory data gathered from a single layer of the network model, resulting in unreliable authentication experiences, particularly when UAVs are mobile and in an open-world environment. To transcend these limitations, this paper proposes SecureLink, a UAV authentication system that is among the first to employ cross-layer information for enhancing the efficiency and reliability of UAV authentication. Instead of using single modalities, SecureLink fuses physical-layer radio frequency (RF) fingerprints and application-layer micro-electromechanical system (MEMS) fingerprints into reliable UAV identifiers via multimodal fusion. SecureLink first aligns fingerprints from channel state information measurements and telemetry data, such as feedback readings of onboard accelerometers, gyroscopes, and barometers. Then, an attention-based neural network is devised for in-depth feature fusion. Next, the fused features are trained by a multi-similarity loss and fed into a one-class support vector machine for open-world authentication. We extensively implement our SecureLink using three different types of UAVs and evaluate it in different environments. With only six additional data frames, SecureLink achieves a closed-world accuracy of 98.61% and an open-world accuracy of 97.54% with two impersonating UAVs, outperforming the existing approaches in authentication robustness and communication overheads. Finally, our datasets collected from these experiments are available on GitHub: https://github.com/PhyGroup/SecureLink\_data.
翻译:无线通信的开放性使得无人机通信易受伪装攻击,恶意无人机可利用窃取的数字证书伪装成授权无人机。传统的基于指纹的无人机认证方法依赖于从网络模型单一层收集的单一模态传感数据,导致认证可靠性不足,尤其在无人机处于移动状态和开放世界环境中时。为突破这些限制,本文提出SecureLink,一种率先采用跨层信息以提升无人机认证效率和可靠性的认证系统。SecureLink不依赖单一模态,而是通过多模态融合将物理层射频指纹与应用层微机电系统指纹融合为可靠的无人机标识符。SecureLink首先对齐来自信道状态信息测量和遥测数据的指纹,例如机载加速度计、陀螺仪和气压计的反馈读数。随后,设计了一种基于注意力的神经网络进行深度特征融合。接着,融合后的特征通过多相似度损失函数进行训练,并输入至一类支持向量机以进行开放世界认证。我们使用三种不同类型的无人机广泛实现了SecureLink,并在不同环境中进行了评估。仅需额外六个数据帧,SecureLink在封闭世界环境中达到98.61%的准确率,在存在两个伪装无人机的开放世界环境中达到97.54%的准确率,在认证鲁棒性和通信开销方面均优于现有方法。最后,我们从这些实验中收集的数据集已在GitHub上公开:https://github.com/PhyGroup/SecureLink_data。