Virtual electromagnetic environment modeling based data augmentation for drone signal identification

Hanshuo Zhang , Tao Li , Yongzhao Li , Zhijin Wen
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Abstract

Radio frequency (RF)-based drone identification technologies have the advantages of long effective distances and low environmental dependence, which has become indispensable for drone surveillance systems. However, since drones operate in unlicensed frequency bands, a large number of co-frequency devices exist in these bands, which brings a great challenge to traditional signal identification methods. Deep learning techniques provide a new approach to complete end-to-end signal identification by directly learning the distribution of RF data. In such scenarios, due to the complexity and high dynamics of the electromagnetic environments, a massive amount of data that can reflect the various propagation conditions of drone signals is necessary for a robust neural network (NN) for identifying drones. In reality, signal acquisition and labeling that meet the above requirements are too costly to implement. Therefore, we propose a virtual electromagnetic environment modeling based data augmentation (DA) method to improve the diversity of drone signal data. The DA method focuses on simulating the spectrograms of drone signals transmitted in real-world environments and randomly generates extra training data in each training epoch. Furthermore, considering the limited processing capability of RF receivers, we modify the original YOLOv5s model to a more lightweight version. Without losing the identification performance, more hardware-friendly designs are applied and the number of parameters decreases about 10-fold. For performance evaluation, we utilized a universal software radio peripheral (USRP) X310 platform to collect RF signals of four drones in an anechoic chamber and a practical wireless scenario. Experiment results reveal that the NN trained with augmented data performs as well as that trained with practical data in the complex electromagnetic environment.

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基于虚拟电磁环境建模的无人机信号识别数据增强
基于射频(RF)的无人机识别技术具有有效距离远、环境依赖性低等优点,已成为无人机监控系统不可或缺的一部分。然而,由于无人机在未经许可的频段内运行,这些频段内存在大量的共频设备,这给传统的信号识别方法带来了很大的挑战。深度学习技术通过直接学习射频数据的分布,提供了一种完成端到端信号识别的新方法。在这种情况下,由于电磁环境的复杂性和高动态性,能够反映无人机信号各种传播条件的大量数据是鲁棒神经网络(NN)识别无人机的必要条件。在现实中,满足上述要求的信号采集和标记成本过高,难以实现。为此,我们提出了一种基于虚拟电磁环境建模的数据增强(DA)方法来提高无人机信号数据的多样性。该方法侧重于模拟无人机信号在真实环境中传输的频谱图,并在每个训练历元随机生成额外的训练数据。此外,考虑到射频接收器的有限处理能力,我们将原来的YOLOv5s模型修改为更轻量化的版本。在不损失识别性能的情况下,采用了更加硬件友好的设计,参数数量减少了约10倍。为了进行性能评估,我们利用通用软件无线电外设(USRP) X310平台在消声室和实际无线场景中收集了四架无人机的射频信号。实验结果表明,在复杂的电磁环境下,用增强数据训练的神经网络的性能与用实际数据训练的神经网络相当。
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