Integrated Microwave Radar and Camera for Object Identification
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Abstract
The rapid proliferation of unmanned aerial vehicles (UAVs) in both civilian and military sectors has introduced substantial challenges to surveillance, defense, and public safety systems. Small-scale drones, in particular, are difficult to detect due to their low radar cross-sections, silent flight capability, and ability to operate at low altitudes. Conventional single- layer detection techniques based solely on radar, acoustic sensing, or vision-based approaches often fail to deliver reliable accuracy across varying operational environments. To address these limitations, this paper presents a dual-layer UAV detection and neutralization framework that integrates low-cost microwave radar with artificial intelligence (AI)- driven computer vision. The primary detection layer employs an microwave radar module, enabling continuous 360° motion detection and real-time tracking of aerial targets. The secondary layer leverages deep learning-based computer vision, specifically a YOLO (You Only Look Once) architecture, to classify and confirm UAVs while distinguishing them from non-threatening aerial objects. Upon classification of a potential threat, the system activates a laser-based neutralization mechanism and concurrently transmits alerts to security operators for situational awareness.
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