Game-theoretic motion planners are a powerful tool for the control of interactive multi-agent robot systems. Indeed, contrary to predict-then-plan paradigms, game-theoretic planners do not ignore the interactive nature of the problem, and simultaneously predict the behaviour of other agents while considering change in one's policy. This, however, comes at the expense of computational complexity, especially as the number of agents considered grows. In fact, planning with more than a handful of agents can quickly become intractable, disqualifying game-theoretic planners as possible candidates for large scale planning. In this paper, we propose a planning algorithm enabling the use of game-theoretic planners in robot systems with a large numbe...
Interactions between road agents present a significant challenge in trajectory prediction, especiall...
Abstract: It is well known that mathematical solutions for multi-agent planning problems are very di...
We extend the motion-planning-through-gadgets framework to several new scenarios involving various n...
In real-world planning problems, we must reason not only about our own goals, but about the goals of...
We begin a general theory for characterizing the computational complexity of motion planning of robo...
Abstract:- In multi-agent (multi-robot) environment each agent tries to reach its own goal and it im...
We extend the motion-planning-through-gadgets framework to several new scenarios involving various n...
The primary contribution of this dissertation is the presentation of a dynamic game-theoretic framew...
Autonomous Racing awards agents that react to opponents' behaviors with agile maneuvers towards prog...
Planning under social interactions with other agents is an essential problem for autonomous driving....
To minimize collision risks in the multi-agent path planning problem with stochastic transition dyna...
The problem of optimal planning under uncertainty in collaborative multi-agent domains is known to b...
This paper presents a scalable multi-robot motion planning algorithm called Conflict-Based Model Pre...
Although multi-robot systems have received substantial research attention in recent years, multi-rob...
Motion planning for autonomous robots in tight, interaction-rich, and mixed human-robot environments...
Interactions between road agents present a significant challenge in trajectory prediction, especiall...
Abstract: It is well known that mathematical solutions for multi-agent planning problems are very di...
We extend the motion-planning-through-gadgets framework to several new scenarios involving various n...
In real-world planning problems, we must reason not only about our own goals, but about the goals of...
We begin a general theory for characterizing the computational complexity of motion planning of robo...
Abstract:- In multi-agent (multi-robot) environment each agent tries to reach its own goal and it im...
We extend the motion-planning-through-gadgets framework to several new scenarios involving various n...
The primary contribution of this dissertation is the presentation of a dynamic game-theoretic framew...
Autonomous Racing awards agents that react to opponents' behaviors with agile maneuvers towards prog...
Planning under social interactions with other agents is an essential problem for autonomous driving....
To minimize collision risks in the multi-agent path planning problem with stochastic transition dyna...
The problem of optimal planning under uncertainty in collaborative multi-agent domains is known to b...
This paper presents a scalable multi-robot motion planning algorithm called Conflict-Based Model Pre...
Although multi-robot systems have received substantial research attention in recent years, multi-rob...
Motion planning for autonomous robots in tight, interaction-rich, and mixed human-robot environments...
Interactions between road agents present a significant challenge in trajectory prediction, especiall...
Abstract: It is well known that mathematical solutions for multi-agent planning problems are very di...
We extend the motion-planning-through-gadgets framework to several new scenarios involving various n...