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Main Authors: Semenyuk, Vladislav, Kurmashev, Ildar, Lupidi, Alberto, Alyoshin, Dmitriy, Kurmasheva, Liliya, Cantelli-Forti, Alessandro
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.05985
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author Semenyuk, Vladislav
Kurmashev, Ildar
Lupidi, Alberto
Alyoshin, Dmitriy
Kurmasheva, Liliya
Cantelli-Forti, Alessandro
author_facet Semenyuk, Vladislav
Kurmashev, Ildar
Lupidi, Alberto
Alyoshin, Dmitriy
Kurmasheva, Liliya
Cantelli-Forti, Alessandro
contents This review provides a detailed analysis of the advancements in unmanned aerial vehicle (UAV) detection and classification systems from 2020 to today. It covers various detection methodologies such as radar, radio frequency, optical, and acoustic sensors, and emphasizes their integration via sophisticated sensor fusion techniques. The fundamental technologies driving UAV detection and classification are thoroughly examined, with a focus on their accuracy and range. Additionally, the paper discusses the latest innovations in artificial intelligence and machine learning, illustrating their impact on improving the accuracy and efficiency of these systems. The review concludes by predicting further technological developments in UAV detection, which are expected to enhance both performance and reliability.
format Preprint
id arxiv_https___arxiv_org_abs_2409_05985
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Advance and Refinement: The Evolution of UAV Detection and Classification Technologies
Semenyuk, Vladislav
Kurmashev, Ildar
Lupidi, Alberto
Alyoshin, Dmitriy
Kurmasheva, Liliya
Cantelli-Forti, Alessandro
Computer Vision and Pattern Recognition
Signal Processing
This review provides a detailed analysis of the advancements in unmanned aerial vehicle (UAV) detection and classification systems from 2020 to today. It covers various detection methodologies such as radar, radio frequency, optical, and acoustic sensors, and emphasizes their integration via sophisticated sensor fusion techniques. The fundamental technologies driving UAV detection and classification are thoroughly examined, with a focus on their accuracy and range. Additionally, the paper discusses the latest innovations in artificial intelligence and machine learning, illustrating their impact on improving the accuracy and efficiency of these systems. The review concludes by predicting further technological developments in UAV detection, which are expected to enhance both performance and reliability.
title Advance and Refinement: The Evolution of UAV Detection and Classification Technologies
topic Computer Vision and Pattern Recognition
Signal Processing
url https://arxiv.org/abs/2409.05985