Deep learning (DL) applied to a device's radio-frequency fingerprint~(RFF) has attracted significant attention in physical-layer authentication due to its extraordinary classification performance. Conventional DL-RFF techniques are trained by adopting maximum likelihood estimation~(MLE). Although their discriminability has recently been extended to unknown devices in open-set scenarios, they still tend to overfit the channel statistics embedded in the training dataset. This restricts their practical applications as it is challenging to collect sufficient training data capturing the characteristics of all possible wireless channel environments. To address this challenge, we propose a DL framework of disentangled representation~(DR) learning that first learns to factor the signals into a device-relevant component and a device-irrelevant component via adversarial learning. Then, it shuffles these two parts within a dataset for implicit data augmentation, which imposes a strong regularization on RFF extractor learning to avoid the possible overfitting of device-irrelevant channel statistics, without collecting additional data from unknown channels. Experiments validate that the proposed approach, referred to as DR-based RFF, outperforms conventional methods in terms of generalizability to unknown devices even under unknown complicated propagation environments, e.g., dispersive multipath fading channels, even though all the training data are collected in a simple environment with dominated direct line-of-sight~(LoS) propagation paths.
翻译:深学习( DL) 应用到设备无线电频率指纹 ~ (RFF) 的深学习( DL) 因其特殊的分类性能,在物理层认证中引起极大关注。 常规 DL- RFF 技术通过采用最大概率估计 ~ (MLE) 来培训。 虽然其差异性最近已经扩大到开放设定情景中的未知设备, 但它们仍然倾向于过度适应嵌入培训数据集的频道统计数据。 这限制了它们的实际应用, 因为收集足够培训数据以捕捉所有可能的无线频道环境的特性。 为了应对这一挑战, 我们提议了一个 DL 框架, 以分解的演示 ~ (DRF) 学习, 以便首先通过对抗性学习将信号纳入与设备相关的组件和与设备相关的组件。 尽管它们之间的差异性能最近被扩展到一个数据集中隐含的数据增强的这两个部分, 这使得RFF 提取器学习以避免可能过度适应与设备相关的频道统计数据, 而没有从未知的频道收集到额外的数据。 为了验证拟议方法, 被称为 DR- eFF, 超越常规方法, 在普通路径中学习常规方法, 在普通的路径中, 将所有未知的路径中, 直导为不易传播环境 。