We study the problem of information sampling of an ambient phenomenon using a group of mobile robots. Autonomous robots are being deployed for various applications such as precision agriculture, search-and-rescue, among others. These robots are usually equipped with sensors and tasked with collecting maximal information for further data processing and decision making. The studied problem is proved to be NP-Hard in the literature. To solve the stated problem approximately, we employ a multi-agent deep reinforcement learning framework and use the concepts of mean field games to potentially scale the solution to larger multi-robot systems. Simulation results show that our presented technique easily scales to 10 robots in a 19 × 19 grid environ...
Advances in robotic mobility and sensing technology have the potential to provide new capabilities i...
Information gathering (IG) algorithms aim to intelligently select the mobile robotic sensor actions ...
International audienceMultirobot systems have made tremendous progress in exploration and surveillan...
We study the problem of information sampling with a group of mobile robots from an unknown environme...
The multi-robot adaptive sampling problem aims at finding trajectories for a team of robots to effic...
Many tasks in the modern world involve collecting information, such as infrastructure inspection, se...
Multi-robot teams that intelligently gather information have the potential to transform industries a...
International audienceMultirobot systems have made tremendous progress in exploration and surveillan...
State-of-the-art multi-robot information gathering (MR-IG) algorithms often rely on a model that des...
This paper presents a scalable information theoretic approach to infer the state of an environment ...
The multi-robot system combines the characteristics and advantages of each component robot and can b...
Many tasks in the modern world involve collecting information, such as infrastructure inspection, se...
This dissertation addresses the near-optimal deployment problem of robot-sensory nodes in a spatiote...
This paper addresses the task of searching for an unknown number of static targets within a known ob...
This paper presents a distributed scalable multi-robot planning algorithm for informed sampling of q...
Advances in robotic mobility and sensing technology have the potential to provide new capabilities i...
Information gathering (IG) algorithms aim to intelligently select the mobile robotic sensor actions ...
International audienceMultirobot systems have made tremendous progress in exploration and surveillan...
We study the problem of information sampling with a group of mobile robots from an unknown environme...
The multi-robot adaptive sampling problem aims at finding trajectories for a team of robots to effic...
Many tasks in the modern world involve collecting information, such as infrastructure inspection, se...
Multi-robot teams that intelligently gather information have the potential to transform industries a...
International audienceMultirobot systems have made tremendous progress in exploration and surveillan...
State-of-the-art multi-robot information gathering (MR-IG) algorithms often rely on a model that des...
This paper presents a scalable information theoretic approach to infer the state of an environment ...
The multi-robot system combines the characteristics and advantages of each component robot and can b...
Many tasks in the modern world involve collecting information, such as infrastructure inspection, se...
This dissertation addresses the near-optimal deployment problem of robot-sensory nodes in a spatiote...
This paper addresses the task of searching for an unknown number of static targets within a known ob...
This paper presents a distributed scalable multi-robot planning algorithm for informed sampling of q...
Advances in robotic mobility and sensing technology have the potential to provide new capabilities i...
Information gathering (IG) algorithms aim to intelligently select the mobile robotic sensor actions ...
International audienceMultirobot systems have made tremendous progress in exploration and surveillan...