Detection and Recognition of Drones Based on a Deep Convolutional Neural Network Using Visible Imagery

Samadzadegan, Farhad and Dadrass Javan, Farzaneh and Ashtari Mahini, Farnaz and Gholamshahi, Mehrnaz (2022) Detection and Recognition of Drones Based on a Deep Convolutional Neural Network Using Visible Imagery. Aerospace, 9 (1). p. 31. ISSN 2226-4310

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Abstract

Drones are becoming increasingly popular not only for recreational purposes but also in a variety of applications in engineering, disaster management, logistics, securing airports, and others. In addition to their useful applications, an alarming concern regarding physical infrastructure security, safety, and surveillance at airports has arisen due to the potential of their use in malicious activities. In recent years, there have been many reports of the unauthorized use of various types of drones at airports and the disruption of airline operations. To address this problem, this study proposes a novel deep learning-based method for the efficient detection and recognition of two types of drones and birds. Evaluation of the proposed approach with the prepared image dataset demonstrates better efficiency compared to existing detection systems in the literature. Furthermore, drones are often confused with birds because of their physical and behavioral similarity. The proposed method is not only able to detect the presence or absence of drones in an area but also to recognize and distinguish between two types of drones, as well as distinguish them from birds. The dataset used in this work to train the network consists of 10,000 visible images containing two types of drones as multirotors, helicopters, and also birds. The proposed deep learning method can directly detect and recognize two types of drones and distinguish them from birds with an accuracy of 83%, mAP of 84%, and IoU of 81%. The values of average recall, average accuracy, and average F1-score were also reported as 84%, 83%, and 83%, respectively, in three classes.

Item Type: Article
Subjects: Afro Asian Archive > Engineering
Depositing User: Unnamed user with email support@afroasianarchive.com
Date Deposited: 24 Mar 2023 09:38
Last Modified: 01 Aug 2024 09:39
URI: http://info.stmdigitallibrary.com/id/eprint/309

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