The exploration of unknown environments is a challenge in robotics. The proposed method approaches this problem by combining the Fast Marching Square path planning technique with the machine learning method called Gaussian processes (GP). The Fast Marching Square method is used to determine the most unexplored areas of the environment and to plan the path of the vehicle from the current position to the selected point. The GP model is used to obtain predictions about the unexplored regions of the environment based on the collected data so far during the exploration. The use of Unmanned Aerial Vehicles (UAVs) for exploration and surveillance has increased exponentially in the recent years, due to their sensor equipment capabilities and their ...
Unmanned autonomous vehicles, airborne or terrestrial, can be used to solve many varying tasks in va...
This paper studies the Fast Marching Square (FM2) method as a competitive path planner for UAV appl...
© Copyright 2019 IEEEThis paper presents a novel algorithm for three-dimensional UAS trajectory opti...
The exploration of unknown environments is a challenge in robotics. The proposed method approaches t...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
This research presents a novel approach for missions of coverage path planning (CPP) carried out by ...
Robots’ autonomy has been studied for decades in different environments, but only recently, thanks t...
Autonomous vehicles are becoming the platform of choice for large-scale exploration of environmental...
Exploring large, unknown, and unstructured environments is challenging for Unmanned Aerial Vehicles...
University of Technology Sydney. Faculty of Engineering and Information Technology.This thesis propo...
The ability of an autonomous Unmanned Aerial Vehicle (UAV) in an unknown environment is a prerequisi...
Autonomous exploration is an essential capability for mobile robots, as the majority of their applic...
Information gathering (IG) algorithms aim to intelligently select a mobile sensor actions required t...
Robotic platforms represent a new frontier for data acquisition in a wide range of monitoring and ex...
International audienceIn this work, developed in the framework of the SkyScanner project, we study t...
Unmanned autonomous vehicles, airborne or terrestrial, can be used to solve many varying tasks in va...
This paper studies the Fast Marching Square (FM2) method as a competitive path planner for UAV appl...
© Copyright 2019 IEEEThis paper presents a novel algorithm for three-dimensional UAS trajectory opti...
The exploration of unknown environments is a challenge in robotics. The proposed method approaches t...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
This research presents a novel approach for missions of coverage path planning (CPP) carried out by ...
Robots’ autonomy has been studied for decades in different environments, but only recently, thanks t...
Autonomous vehicles are becoming the platform of choice for large-scale exploration of environmental...
Exploring large, unknown, and unstructured environments is challenging for Unmanned Aerial Vehicles...
University of Technology Sydney. Faculty of Engineering and Information Technology.This thesis propo...
The ability of an autonomous Unmanned Aerial Vehicle (UAV) in an unknown environment is a prerequisi...
Autonomous exploration is an essential capability for mobile robots, as the majority of their applic...
Information gathering (IG) algorithms aim to intelligently select a mobile sensor actions required t...
Robotic platforms represent a new frontier for data acquisition in a wide range of monitoring and ex...
International audienceIn this work, developed in the framework of the SkyScanner project, we study t...
Unmanned autonomous vehicles, airborne or terrestrial, can be used to solve many varying tasks in va...
This paper studies the Fast Marching Square (FM2) method as a competitive path planner for UAV appl...
© Copyright 2019 IEEEThis paper presents a novel algorithm for three-dimensional UAS trajectory opti...