Department of Computer Engineering, King Fahd University of Petroleum and Minerals, Dhahran 31261, Saudi Arabia.
Department of Information and Computer Science, King Fahd University of Petroleum and Minerals, Dhahran 31261, Saudi Arabia.
Sensors (Basel). 2021 Mar 10;21(6):1947. doi: 10.3390/s21061947.
Unmanned Aerial Vehicles (UAVs) are widely available in the current market to be used either for recreation as a hobby or to serve specific industrial requirements, such as agriculture and construction. However, illegitimate and criminal usage of UAVs is also on the rise which introduces their effective identification and detection as a research challenge. This paper proposes a novel machine learning-based for efficient identification and detection of UAVs. Specifically, an improved UAV identification and detection approach is presented using an ensemble learning based on the hierarchical concept, along with pre-processing and feature extraction stages for the Radio Frequency (RF) data. Filtering is applied on the RF signals in the detection approach to improve the output. This approach consists of four classifiers and they are working in a hierarchical way. The sample will pass the first classifier to check the availability of the UAV, and then it will specify the type of the detected UAV using the second classifier. The last two classifiers will handle the sample that is related to Bebop and AR to specify their mode. Evaluation of the proposed approach with publicly available dataset demonstrates better efficiency compared to existing detection systems in the literature. It has the ability to investigate whether a UAV is flying within the area or not, and it can directly identify the type of UAV and then the flight mode of the detected UAV with accuracy around 99%.
无人驾驶飞行器(UAV)在当前市场上广泛可用,可用于娱乐或满足特定的工业需求,如农业和建筑。然而,UAV 的非法和犯罪使用也在增加,这给其有效识别和检测带来了研究挑战。本文提出了一种基于机器学习的 UAV 高效识别和检测方法。具体来说,提出了一种基于分层概念的集成学习的改进的 UAV 识别和检测方法,以及针对射频(RF)数据的预处理和特征提取阶段。在检测方法中对 RF 信号进行滤波以提高输出。该方法由四个分类器组成,它们以分层方式工作。样本将通过第一个分类器检查 UAV 是否可用,然后第二个分类器将指定检测到的 UAV 的类型。最后两个分类器将处理与 Bebop 和 AR 相关的样本,以指定它们的模式。与文献中现有的检测系统相比,使用公开数据集评估所提出的方法证明了其更高的效率。它能够调查 UAV 是否在该区域内飞行,并能够直接识别 UAV 的类型,然后以约 99%的准确率识别检测到的 UAV 的飞行模式。