实现对蜂群内无人机的可靠识别和跟踪

IF 3.1 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Intelligent & Robotic Systems Pub Date : 2024-06-05 DOI:10.1007/s10846-024-02115-1
Nisha Kumari, Kevin Lee, Jan Carlo Barca, Chathurika Ranaweera
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引用次数: 0

摘要

无人机群由多架无人机组成,可以完成单个无人机无法完成的任务,如搜索和回收或大面积监视。无人机群的内部结构通常由多架自主运行的无人机组成。通过对无人机群和单个无人机进行可靠的探测和跟踪,可以更好地了解无人机群的行为和动向。加深对无人机行为的了解,可以更好地协调、避免碰撞,并对蜂群中的单个无人机进行性能监控。本文介绍的研究提出了一种基于深度学习的方法,利用立体视觉相机实时可靠地检测和跟踪蜂群中的单个无人机。这项研究背后的动机是需要更深入地了解蜂群动态,从而改进蜂群中单个无人机的协调、避免碰撞和性能监控。所提出的解决方案提供了一个精确的跟踪系统,并考虑到了无人机高度密集的动态行为。在各种配置的稀疏和密集网络中对该方法进行了评估。通过实施一系列对比实验,分析了所提解决方案的准确性和效率,实验结果表明在探测和跟踪蜂群中的无人机方面具有合理的准确性。
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Towards Reliable Identification and Tracking of Drones Within a Swarm

Drone swarms consist of multiple drones that can achieve tasks that individual drones can not, such as search and recovery or surveillance over a large area. A swarm’s internal structure typically consists of multiple drones operating autonomously. Reliable detection and tracking of swarms and individual drones allow a greater understanding of the behaviour and movement of a swarm. Increased understanding of drone behaviour allows better coordination, collision avoidance, and performance monitoring of individual drones in the swarm. The research presented in this paper proposes a deep learning-based approach for reliable detection and tracking of individual drones within a swarm using stereo-vision cameras in real time. The motivation behind this research is in the need to gain a deeper understanding of swarm dynamics, enabling improved coordination, collision avoidance, and performance monitoring of individual drones within a swarm. The proposed solution provides a precise tracking system and considers the highly dense and dynamic behaviour of drones. The approach is evaluated in both sparse and dense networks in a variety of configurations. The accuracy and efficiency of the proposed solution have been analysed by implementing a series of comparative experiments that demonstrate reasonable accuracy in detecting and tracking drones within a swarm.

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来源期刊
Journal of Intelligent & Robotic Systems
Journal of Intelligent & Robotic Systems 工程技术-机器人学
CiteScore
7.00
自引率
9.10%
发文量
219
审稿时长
6 months
期刊介绍: The Journal of Intelligent and Robotic Systems bridges the gap between theory and practice in all areas of intelligent systems and robotics. It publishes original, peer reviewed contributions from initial concept and theory to prototyping to final product development and commercialization. On the theoretical side, the journal features papers focusing on intelligent systems engineering, distributed intelligence systems, multi-level systems, intelligent control, multi-robot systems, cooperation and coordination of unmanned vehicle systems, etc. On the application side, the journal emphasizes autonomous systems, industrial robotic systems, multi-robot systems, aerial vehicles, mobile robot platforms, underwater robots, sensors, sensor-fusion, and sensor-based control. Readers will also find papers on real applications of intelligent and robotic systems (e.g., mechatronics, manufacturing, biomedical, underwater, humanoid, mobile/legged robot and space applications, etc.).
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