Experimental validation of UAV search and detection system in real wilderness environment
Stella Dumen\v{c}i\'c, Luka Lan\v{c}a, Karlo Jakac, Stefan Ivi\'c

TL;DR
This paper presents an experimental validation of an autonomous UAV search system in a real wilderness environment, combining probabilistic search modeling, heat equation-driven control, and computer vision for effective SAR missions.
Contribution
It introduces a novel integrated framework for UAV-based search and detection validated through real-world experiments in a challenging environment.
Findings
Detection model aligns with real-world results
UAV control achieves uniform search coverage
Probabilistic framework effectively guides search efforts
Abstract
Search and rescue (SAR) missions require reliable search methods to locate survivors, especially in challenging or inaccessible environments. This is why introducing unmanned aerial vehicles (UAVs) can be of great help to enhance the efficiency of SAR missions while simultaneously increasing the safety of everyone involved in the mission. Motivated by this, we design and experiment with autonomous UAV search for humans in a Mediterranean karst environment. The UAVs are directed using Heat equation-driven area coverage (HEDAC) ergodic control method according to known probability density and detection function. The implemented sensing framework consists of a probabilistic search model, motion control system, and computer vision object detection. It enables calculation of the probability of the target being detected in the SAR mission, and this paper focuses on experimental validation of…
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