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Extraction of micro-doppler characteristics of drones using high-resolution time-frequency transforms

机译:利用高分辨率时频变换提取无人机微量多普勒特性

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摘要

The demand for detecting and tracking drones has increased for reasons of surveillance and security. Radar is one of the promising methods in this regard. The recognition and identification of drones using a radar system requires the extraction of their unique micro-Doppler signatures produced by their rotating blades. Because of the blades' rapid rotation speed, difficulties are inherent in visualizing clear micro-Doppler signatures in a conventional joint time-frequency analysis such as the short-time Fourier transform. In this paper, we propose the use of high-resolution transform techniques to visualize the micro-Doppler signatures of drones in a spectrogram. The techniques used include Wigner-Ville distribution, smoothed pseudo-Wigner-Ville distribution, and short-time MUltiple SIgnal Classification (MUSIC) algorithm. In particular, the latter, which had never previously been applied to drones, is suggested to visualize the details of micro-Doppler signatures. We measured three drones using a continuous-wave radar, and performances of these algorithms were compared using data collected from the drones. We could observe that the short-time MUSIC method showed the clearest spectrogram for identifying micro-Doppler signatures. This study can potentially be useful in the field of drone classification.
机译:出于监测和安全的原因,对检测和跟踪无人机的需求增加。雷达是这方面有希望的方法之一。使用雷达系统的识别和识别无人机需要提取由其旋转刀片产生的独特微多普勒签名。由于叶片的快速旋转速度,在传统的关节时频分析中可视化清晰的微多普勒签名在诸如短时傅里叶变换的诸如短时间傅里叶变换中的难度。在本文中,我们提出了使用高分辨率变换技术来可视化频谱图中无人机的微多普勒签名。所用技术包括Wigner-Ville分布,平滑伪Wigner-Ville分布,以及短时多信号分类(音乐)算法。特别是,建议在从未应用于无人机的后者可视化微多普勒签名的细节。我们使用连续波雷达测量三个无人机,并使用从无人机收集的数据进行比较这些算法的性能。我们可以观察到,短时间音乐方法显示了用于识别微多普勒签名的最明显的频谱图。该研究可能在无人机分类领域中有用。

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