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Classification of small UAVs and birds by micro-Doppler signatures

机译:通过微型多普勒签名对小型无人机和鸟类进行分类

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摘要

The popularity of small unmanned aerial vehicles (UAVs) is increasing. Therefore, the importance of security systems able to detect and classify them is increasing as well. In this paper, we propose a new approach for UAVs classification using continuous wave radar or high pulse repetition frequency (PRF) pulse radars. We consider all steps of processing required to make a decision out of the raw radar data. Before the classification, the micro-Doppler signature is filtered and aligned to compensate the Doppler shift caused by the target's body motion. Then, classification features are extracted from the micro-Doppler signature in order to represent information about class at a lower dimension space. Eigenpairs extracted from the correlation matrix of the signature are used as informative features for classification. The proposed approach is verified on real radar measurements collected with X-band radar. Planes, quadrocopter, helicopters, and stationary rotors as well as birds are considered for classification. Moreover, a possibility of distinguishing different number of rotors is considered. The obtained results show the effectiveness of the proposed approach. It provides the capability of correct classification with a probability of around 92%.
机译:小型无人机(UAV)的普及正在增加。因此,能够检测和分类安全系统的重要性也在增加。在本文中,我们提出了一种使用连续波雷达或高脉冲重复频率(PRF)脉冲雷达对无人机进行分类的新方法。我们考虑根据原始雷达数据做出决策所需的所有处理步骤。在分类之前,对微多普勒信号进行过滤和对齐以补偿由目标身体运动引起的多普勒频移。然后,从微多普勒签名中提取分类特征,以便在较低维度空间上表示有关类别的信息。从签名的相关矩阵中提取的特征对被用作分类的信息特征。所提出的方法在X波段雷达收集的真实雷达测量结果上得到了验证。飞机,直升机,直升飞机,固定式旋翼以及鸟类均被考虑用于分类。此外,考虑了区分不同数量的转子的可能性。获得的结果表明了该方法的有效性。它提供正确分类的功能,概率约为92%。

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