Yang Shubo, Luo Yang, Miao Wang, Ge Changhao, Sun Wenjian, Luo Chunbo
Glasgow College, University of Electronic Science and Technology of China, Chengdu 611731, China.
Yangtze Delta Region Institute (Huzhou), University of Electronic Science and Technology of China, Huzhou 313001, China.
Entropy (Basel). 2021 Dec 14;23(12):1678. doi: 10.3390/e23121678.
With the proliferation of Unmanned Aerial Vehicles (UAVs) to provide diverse critical services, such as surveillance, disaster management, and medicine delivery, the accurate detection of these small devices and the efficient classification of their flight modes are of paramount importance to guarantee their safe operation in our sky. Among the existing approaches, Radio Frequency (RF) based methods are less affected by complex environmental factors. The similarities between UAV RF signals and the diversity of frequency components make accurate detection and classification a particularly difficult task. To bridge this gap, we propose a joint Feature Engineering Generator (FEG) and Multi-Channel Deep Neural Network (MC-DNN) approach. Specifically, in FEG, data truncation and normalization separate different frequency components, the moving average filter reduces the outliers in the RF signal, and the concatenation fully exploits the details of the dataset. In addition, the multi-channel input in MC-DNN separates multiple frequency components and reduces the interference between them. A novel dataset that contains ten categories of RF signals from three types of UAVs is used to verify the effectiveness. Experiments show that the proposed method outperforms the state-of-the-art UAV detection and classification approaches in terms of 98.4% and F1 score of 98.3%.
随着无人机(UAV)的大量涌现以提供各种关键服务,如监视、灾害管理和药品配送,准确检测这些小型设备并有效分类其飞行模式对于确保它们在天空中的安全运行至关重要。在现有方法中,基于射频(RF)的方法受复杂环境因素的影响较小。无人机射频信号之间的相似性以及频率成分的多样性使得准确检测和分类成为一项特别困难的任务。为了弥补这一差距,我们提出了一种联合特征工程生成器(FEG)和多通道深度神经网络(MC-DNN)的方法。具体而言,在FEG中,数据截断和归一化分离不同的频率成分,移动平均滤波器减少射频信号中的异常值,而拼接充分利用数据集的细节。此外,MC-DNN中的多通道输入分离多个频率成分并减少它们之间的干扰。使用一个包含来自三种类型无人机的十类射频信号的新型数据集来验证有效性。实验表明,所提出的方法在准确率98.4%和F1分数98.3%方面优于当前最先进的无人机检测和分类方法。