- Akademik Platform Mühendislik ve Fen Bilimleri Dergisi
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- AI-Embedded UAV System for Detecting and Pursuing Unwanted UAVs
AI-Embedded UAV System for Detecting and Pursuing Unwanted UAVs
Authors : Ali Furkan Kamanli
Pages : 1-13
Doi:10.21541/apjess.1349856
View : 44 | Download : 29
Publication Date : 2024-01-31
Article Type : Research
Abstract :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.Keywords : deep learning, object detection, ROS, aerial vehicle, LSTM, UAV