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Multi-time frequency analysis and classification of a micro-drone carrying payloads using multistatic radar

机译:使用多晶雷达的微无人机携带有效载荷的多时间频率分析和分类

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This article presents an analysis of three multi-domain transformations applied to radar data of a micro-drone operating in an open field, with a payload (between 200 and 600 g) and without a payload. Inferring the presence of a drone attempting to transport a payload beyond its normal operating conditions is a key enabler in prospective low altitude airspace security systems. Two scenarios of operation were explored, the first with the drone hovering and the second with the drone flying. Both were accomplished through real experimental trials, undertaken with the multistatic radar, NetRAD. The images generated as a result of the domain transformations were fed into a pretrained convolutional neural network (CNN), known as AlexNet and were treated as a six-class classification problem. Very promising accuracies were obtained, with on average 95.1% for the case of the drone hovering and 96.6% for the case of the drone flying. The activations that these variety of images triggered within the CNN were then visualised to better understand the specific features that the network was learning and distinguishing between, in order to successfully achieve classification.
机译:本文介绍了应用于在开放场中操作的微无人机的雷达数据的三个多域变换的分析,有效载荷(在200到600克之间),没有有效载荷。推断尝试将有效载荷运输超出其正常操作条件的无人机的存在是预期低空空位安全系统中的关键推动者。探索了两种操作场景,首先是无人机徘徊,第二个与寄生虫飞行。两者都是通过与多乐雷达,Netrad进行的真实实验试验完成的。由于域变换而产生的图像被馈送到普拉雷雷卷积神经网络(CNN)中,称为AlexNet,并且被视为六级分类问题。获得了非常有前途的准确性,平均为无人机徘徊的情况下平均为95.1%,而无人驾驶案例的案例为96.6%。然后,在CNN内触发的这些各种图像的激活是可视化的,以更好地了解网络在学习和区分之间的特定特征,以便成功实现分类。

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