The Drone-vs-Bird Detection Grand Challenge at ICASSP 2023: A Review of Methods and Results

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE open journal of signal processing Pub Date : 2024-03-19 DOI:10.1109/OJSP.2024.3379073
Angelo Coluccia;Alessio Fascista;Lars Sommer;Arne Schumann;Anastasios Dimou;Dimitrios Zarpalas
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Abstract

This paper presents the 6th edition of the “Drone-vs-Bird” detection challenge, jointly organized with the WOSDETC workshop within the IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) 2023. The main objective of the challenge is to advance the current state-of-the-art in detecting the presence of one or more Unmanned Aerial Vehicles (UAVs) in real video scenes, while facing challenging conditions such as moving cameras, disturbing environmental factors, and the presence of birds flying in the foreground. For this purpose, a video dataset was provided for training the proposed solutions, and a separate test dataset was released a few days before the challenge deadline to assess their performance. The dataset has continually expanded over consecutive installments of the Drone-vs-Bird challenge and remains openly available to the research community, for non-commercial purposes. The challenge attracted novel signal processing solutions, mainly based on deep learning algorithms. The paper illustrates the results achieved by the teams that successfully participated in the 2023 challenge, offering a concise overview of the state-of-the-art in the field of drone detection using video signal processing. Additionally, the paper provides valuable insights into potential directions for future research, building upon the main pros and limitations of the solutions presented by the participating teams.
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2023 年国际航空科学与技术会议上的无人机与鸟类探测大挑战:方法和结果回顾
本文介绍了第六届 "无人机对鸟 "检测挑战赛,该挑战赛是在 2023 年电气和电子工程师学会声学、语音和信号处理(ICASSP)国际会议期间与 WOSDETC 研讨会联合举办的。该挑战赛的主要目的是,在面临摄像机移动、环境因素干扰和前景有鸟类飞行等挑战性条件时,推进当前最先进的技术,检测真实视频场景中是否存在一个或多个无人飞行器(UAV)。为此,我们提供了一个视频数据集来训练所提出的解决方案,并在挑战赛截止日期前几天发布了一个单独的测试数据集来评估其性能。该数据集在连续几届无人机对鸟挑战赛中不断扩大,并一直向研究界开放,用于非商业目的。挑战赛吸引了主要基于深度学习算法的新型信号处理解决方案。本文介绍了成功参加 2023 年挑战赛的团队所取得的成果,简明扼要地概述了利用视频信号处理技术检测无人机领域的最新进展。此外,论文还以参赛团队所展示的解决方案的主要优点和局限性为基础,为未来研究的潜在方向提供了有价值的见解。
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22 weeks
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