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Multi‐time frequency analysis and classification of a micro‐drone carrying payloads using multistatic radar
Author(s) -
Patel Jarez S.,
AlAmeri Caesar,
Fioranelli Francesco,
Anderson David
Publication year - 2019
Publication title -
the journal of engineering
Language(s) - English
Resource type - Journals
ISSN - 2051-3305
DOI - 10.1049/joe.2019.0551
Subject(s) - drone , payload (computing) , computer science , radar , convolutional neural network , artificial intelligence , key (lock) , real time computing , field (mathematics) , computer vision , telecommunications , computer security , mathematics , genetics , network packet , pure mathematics , biology
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.

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