人工智能嵌入式无人机系统,用于检测和追捕不受欢迎的无人机

Ali Furkan Kamanlı
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摘要

近年来,无人驾驶飞行器(UAV)平台在民用和军用领域的使用激增,凸显了人工智能(AI)嵌入式无人机系统在未来的关键作用。本研究介绍了自主无人机(Vechür-SIHA),这是一种新型的人工智能嵌入式无人机系统,设计用于在飞行过程中实时检测和跟踪其他无人机。利用先进的物体检测算法和基于 LSTM 的跟踪机制,我们的系统在无人机检测方面达到了令人印象深刻的 80% 的准确率,即使在不同背景和恶劣天气等具有挑战性的条件下也是如此。我们的系统能够同时跟踪视场内的多架无人机,飞行时间长达 35 分钟,非常适合需要持续跟踪无人机的长时间任务。此外,它还能在空中锁定和跟踪其他无人机长达 4-10 秒而不会失去联系,这一功能在安全应用方面具有巨大潜力。这项研究标志着对人工智能嵌入式无人机系统开发的重大贡献,对搜救行动、边境安全和森林防火等不同领域具有广泛影响。这些成果为今后的研究奠定了坚实的基础,促进了针对不同应用的类似系统的开发,最终提高了无人机操作的效率和安全性。本文介绍的无人机实时探测和跟踪新方法有望推动无人机技术及其各种应用的创新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-Embedded UAV System for Detecting and Pursuing Unwanted UAVs
In recent years, the use of unmanned aerial vehicle (UAV) platforms in civil and military applications has surged, highlighting the critical role of artificial intelligence (AI) embedded UAV systems in the future. This study introduces the Autonomous Drone (Vechür-SIHA), a novel AI-embedded UAV system designed for real-time detection and tracking of other UAVs during flight sequences. Leveraging advanced object detection algorithms and an LSTM-based tracking mechanism, our system achieves an impressive 80% accuracy in drone detection, even in challenging conditions like varying backgrounds and adverse weather. Our system boasts the capability to simultaneously track multiple drones within its field of view, maintaining flight for up to 35 minutes, making it ideal for extended missions that require continuous UAV tracking. Moreover, it can lock onto and track other UAVs in mid-air for durations of 4-10 seconds without losing contact, a feature with significant potential for security applications. This research marks a substantial contribution to the development of AI-embedded UAV systems, with broad implications across diverse domains such as search and rescue operations, border security, and forest fire prevention. These results provide a solid foundation for future research, fostering the creation of similar systems tailored to different applications, ultimately enhancing the efficiency and safety of UAV operations. The novel approach to real-time UAV detection and tracking presented here holds promise for driving innovations in UAV technology and its diverse applications.
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