Research on UAV Signal Classification Algorithm Based on Deep Learning

Yunsong Zhao
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Abstract

∗With the continuous development of Unmanned Aerial Vehicle (UAV) technology and its industry, the detection and recognition technology of UAV have attracted the attention of researchers. In this paper, the author focuses on the defects and deficiencies of traditional radar, visual and acoustic UAV detection technology. Considering that the UAV’s own radio communication signal can be used for detection, a UAV signal classification method based on deep learning is proposed. This algorithm can extract the characteristics of UAV Communication Law, so as to achieve the target classification. The experimental results show that the average recognition rate of UAV is 95% in the test, and the recognition rate of most types of UAVs is more than 98%. In addition, the classification rate for the flight attitudes of UAVs can reach more than 95%. Therefore, it can be concluded that the classification algorithm designed in this paper can effectively meet the needs of UAV detection and recognition in the actual scene.
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基于深度学习的无人机信号分类算法研究
随着无人机技术及其产业的不断发展,无人机的检测与识别技术引起了研究者的广泛关注。本文着重分析了传统雷达、视觉和声学无人机探测技术的缺陷和不足。考虑到无人机自身的无线电通信信号可用于检测,提出了一种基于深度学习的无人机信号分类方法。该算法可以提取无人机通信规律的特征,从而实现目标分类。实验结果表明,测试中无人机的平均识别率为95%,大多数型号无人机的识别率都在98%以上。此外,对无人机飞行姿态的分类率可达到95%以上。因此,可以得出结论,本文设计的分类算法可以有效地满足实际场景中无人机检测识别的需求。
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