Experimental validation of UAV search and detection system in real wilderness environment
Journal:
arXiv
Published Date:
Feb 24, 2025
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 proposed probabilistic
framework and UAV control. The uniform probability density to ensure the even
probability of finding the targets in the desired search area is achieved by
assigning suitably thought-out tasks to 78 volunteers. The detection model is
based on YOLO and trained with a previously collected ortho-photo image
database. The experimental search is carefully planned and conducted, while as
many parameters as possible are recorded. The thorough analysis consists of the
motion control system, object detection, and the search validation. The
assessment of the detection and search performance provides strong indication
that the designed detection model in the UAV control algorithm is aligned with
real-world results.