Experimental Study of Trajectory Features for the Recognition of Low-Flying Low-Speed Radar Targets Using Passive Coherent Radar Systems

V. Dao, A. Konovalov, M. H. Le
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Abstract

Introduction. Small unmanned aerial vehicles (UAVs) are a growing threat due to their possible use for illegal activities. Currently, passive coherent radar systems are widely used to detect, track and recognize moving targets, including small UAVs, which makes them a promising tool for use in modern airspace radar monitoring systems. At the same time, recognition of small UAVs becomes a challenging task due the possibility of confusing them with birds, particularly in maritime areas with large bird populations. In a search for new solutions to the problem of recognizing small UAVs, trajectory features can be used.Aim. To analyze differences between the trajectory features of low-flying low-speed targets in order to verify the possibility of their use for recognition purposes.Materials and methods. Real radar measurements of UAVs and birds obtained by a passive coherent radar system were used. Specific characteristics of the trajectory parameters of target classes were built using computer statistical modeling in the MatLab environment. Differences in the movement trajectory of targets were established by comparative analysis.Results. Significant differences between the flight path of UAVs and birds were found. Specific features of the trajectory of small aerial targets of each type were investigated. On the basis of radar measurement, graphs of the characteristic trajectory parameters of UAVs and birds were plotted. The conducted comparative analysis allowed identification of the characteristics of the flight path of each target type in each movement segment. Trajectory features that can be used for recognition purposes were identified.Conclusion. The practical significance of the proposed trajectory features and the possibility of their implementation in the development of an algorithm for recognizing low-flying low-speed radar targets using passive coherent radar systems was established. The knowledge of differences between the flight path of UAVs and birds can improve the quality of the UAV recognition problem.
无源相干雷达识别低空低速雷达目标的弹道特征实验研究
介绍。小型无人驾驶飞行器(uav)因其可能被用于非法活动而日益成为威胁。目前,无源相干雷达系统被广泛用于探测、跟踪和识别运动目标,包括小型无人机,这使其成为现代空域雷达监测系统中很有前途的工具。与此同时,识别小型无人机成为一项具有挑战性的任务,因为它们可能与鸟类混淆,特别是在鸟类数量众多的海域。在寻找小型无人机识别问题的新解决方案时,可以利用轨迹特征。分析低空低速目标的弹道特征差异,验证其用于识别的可能性。材料和方法。利用无源相干雷达系统获得的无人机和鸟类的真实雷达测量数据。在MatLab环境下,利用计算机统计建模建立了目标类弹道参数的具体特征。通过对比分析,确定了目标运动轨迹的差异。发现无人机与鸟类的飞行路径存在显著差异。研究了各类型小型空中目标的弹道特征。在雷达测量的基础上,绘制了无人机和鸟类的特征轨迹参数图。通过对比分析,确定了每个运动段中每种目标类型的飞行轨迹特征。确定了可用于识别目的的轨迹特征。建立了所提出的轨迹特征在无源相干雷达低空低速目标识别算法开发中的实际意义和实现的可能性。了解无人机与鸟类的飞行路径差异可以提高无人机识别问题的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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