VINCENT, Chidike, HIRSCH, Laurence, UL HASAN, Najam, FERNANDES, Caren, CRAINIC, Adriana, ZASADA-JAMES, Jonathan and BALDWIN, James (2025). Real-Time Edge Intelligence in UAV for Search-and-Rescue: Onboard Energy-Efficient Video Summarisation with Reduced Data Transmission. In: IOT '25: Proceedings of the 15th International Conference on the Internet of Things. ACM, 52-58. [Book Section]
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Hirsch-Real-timeEdgeIntelligence(VoR).pdf - Published Version
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Hirsch-Real-timeEdgeIntelligence(VoR).pdf - Published Version
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Abstract
Rapid detection of individuals in search and rescue (SAR) operations is critical for minimising casualties and enabling effective relief coordination. Unmanned aerial vehicles (UAVs) provide real-time situational awareness, but continuous high-resolution video transmission causes bandwidth constraints, delays decisions, and drains onboard energy. This paper introduces a modular UAV system for energy-efficient onboard video summarisation tailored for SAR. The system integrates lightweight YOLOv5n object detection and histogram-based keyframe extraction on a Raspberry Pi 4, transmitting only critical frames to ground teams. Built with off-the-shelf components, the UAV optimises weight and power while supporting on-device edge processing. The results show significant reductions in energy consumption and data transmission compared to full-video processing, maintaining high detection accuracy. This adaptable, low-power framework enhances mission duration and decision-making speed, offering a scalable solution for bandwidth constrained, energy-aware aerial monitoring in disaster response scenarios.
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