ROLGMAJul 19, 2021

A Multi-UAV System for Exploration and Target Finding in Cluttered and GPS-Denied Environments

arXiv:2107.08834v120 citations
Originality Incremental advance
AI Analysis

This addresses search and rescue and remote sensing applications in challenging environments like indoor spaces or canyons, but it is incremental as it builds on existing multi-UAV and probabilistic methods.

The paper tackles the problem of cooperative exploration and target finding by multiple UAVs in GPS-denied, cluttered environments, showing improvements in time-cost, area surveyed, and success rates in simulations.

The use of multi-rotor Unmanned Aerial Vehicles (UAVs) for search and rescue as well as remote sensing is rapidly increasing. Multi-rotor UAVs, however, have limited endurance. The range of UAV applications can be widened if teams of multiple UAVs are used. We propose a framework for a team of UAVs to cooperatively explore and find a target in complex GPS-denied environments with obstacles. The team of UAVs autonomously navigates, explores, detects, and finds the target in a cluttered environment with a known map. Examples of such environments include indoor scenarios, urban or natural canyons, caves, and tunnels, where the GPS signal is limited or blocked. The framework is based on a probabilistic decentralised Partially Observable Markov Decision Process which accounts for the uncertainties in sensing and the environment. The team can cooperate efficiently, with each UAV sharing only limited processed observations and their locations during the mission. The system is simulated using the Robotic Operating System and Gazebo. Performance of the system with an increasing number of UAVs in several indoor scenarios with obstacles is tested. Results indicate that the proposed multi-UAV system has improvements in terms of time-cost, the proportion of search area surveyed, as well as successful rates for search and rescue missions.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes