Ka波段无人机的微多普勒分析与分类

L. Fuhrmann, O. Biallawons, J. Klare, R. Panhuber, R. Klenke, J. Ender
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引用次数: 41

摘要

最近的关键实例表明,由于小型无人机对民用安全构成严重威胁,需要一种有效的检测和分类方法。本文介绍了Ka波段单通道连续波系统的雷达测量结果,旨在通过详细的微多普勒分析对无人机进行分类。对不同尺寸的四轴飞行器、八轴飞行器、直升机、固定翼飞机等具有大量不同轨迹和飞行参数的无人机进行了高灵敏度测量。我们的分析是基于不同的时频变换(短时傅里叶变换,节奏速度,倒图),然后是不同的特征提取方法,包括奇异值分解。我们针对两种不同的情况提出了基于支持向量机算法的第一个分类结果:(i)根据一组模拟飞鸟数据将测量的无人机作为人造物体进行全局分类,以及(ii)对不同类型无人机进行分类和表征。在后一种情况下,我们还提取了转子数、转速和转子叶片长度等参数。我们的第一个结果表明非常好的分类准确率在96%到100%之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Micro-Doppler analysis and classification of UAVs at Ka band
Recent critical instances have demonstrated the demand for an effective way of detecting and classifying small Unmanned Aerial Vehicles (UAVs) as they pose a serious threat in civil security. We present results of radar measurements with a one channel continuous wave system at Ka band aiming at classifying UAVs through a detailed micro-Doppler analysis. High-sensitivity measurements of different UAVs (quadcopters of different size, octocopter, helicopter, fixed-wing plane) with a large number of different trajectories and flight parameters were obtained. Our analysis is based on different time-frequency transforms (Short-Time Fourier Transform, Cadence Velocity, Cepstrogram), followed by different feature extraction methods including a singular value decomposition. We present first classification results based on a Support Vector Machine algorithm for two different cases: (i) a global classification of the measured UAVs as man-made objects against a set of simulated flying bird data, and (ii) classification and characterization of different types of UAVs. In the latter case we also extract parameters such as number of rotors, rotation rate and rotor blade length. Our first results indicate very good classification accuracies ranging between 96% and 100 %.
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