A Search and Detection Autonomous Drone System: from Design to
Implementation
- URL: http://arxiv.org/abs/2211.15866v1
- Date: Tue, 29 Nov 2022 01:44:29 GMT
- Title: A Search and Detection Autonomous Drone System: from Design to
Implementation
- Authors: Mohammadjavad Khosravi, Rushiv Arora, Saeede Enayati, and Hossein
Pishro-Nik
- Abstract summary: Search efficiency in terms of the amount of time spent to find the target is crucial in wildfire detection.
Two algorithms are proposed: Path planning and target detection.
It is shown that the proposed algorithm significantly decreases the average time of the mission.
- Score: 7.760962597460447
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Utilizing autonomous drones or unmanned aerial vehicles (UAVs) has shown
great advantages over preceding methods in support of urgent scenarios such as
search and rescue (SAR) and wildfire detection. In these operations, search
efficiency in terms of the amount of time spent to find the target is crucial
since with the passing of time the survivability of the missing person
decreases or wildfire management becomes more difficult with disastrous
consequences. In this work, it is considered a scenario where a drone is
intended to search and detect a missing person (e.g., a hiker or a mountaineer)
or a potential fire spot in a given area. In order to obtain the shortest path
to the target, a general framework is provided to model the problem of target
detection when the target's location is probabilistically known. To this end,
two algorithms are proposed: Path planning and target detection. The path
planning algorithm is based on Bayesian inference and the target detection is
accomplished by means of a residual neural network (ResNet) trained on the
image dataset captured by the drone as well as existing pictures and datasets
on the web. Through simulation and experiment, the proposed path planning
algorithm is compared with two benchmark algorithms. It is shown that the
proposed algorithm significantly decreases the average time of the mission.
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