In this paper, we address the problem of sampling-based motion planning under motion and measurement uncertainty with probabilistic guarantees. We generalize traditional sampling-based tree-based motion planning algorithms for deterministic systems and propose belief-$\mathcal{A}$, a framework that extends any kinodynamical tree-based planner to the belief space for linear (or linearizable) systems. We introduce appropriate sampling techniques and distance metrics for the belief space that preserve the probabilistic completeness and asymptotic optimality properties of the underlying planner. We demonstrate the efficacy of our approach for finding safe low-cost paths efficiently and asymptotically optimally in simulation, for both holonomic ...
We consider a chance-constrained multi-robot motion planning problem in the presence of Gaussian mot...
Abstract—When a mobile agent does not known its position perfectly, incorporating the predicted unce...
Kinodynamic motion planning addresses the problem of finding the control inputs to a dynamical syste...
Abstract. Belief space planning provides a principled framework to compute motion plans that explici...
We consider the partially observable control problem where it is potentially necessary to perform co...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
Abstract—In roadmap-based methods, such as the Probabilis-tic Roadmap Method (PRM) in deterministic ...
Abstract — We consider the partially observable control prob-lem where it is potentially necessary t...
We consider a chance-constrained multi-robot motion planning problem in the presence of Gaussian mot...
Abstract—When a mobile agent does not known its position perfectly, incorporating the predicted unce...
Kinodynamic motion planning addresses the problem of finding the control inputs to a dynamical syste...
Abstract. Belief space planning provides a principled framework to compute motion plans that explici...
We consider the partially observable control problem where it is potentially necessary to perform co...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
Abstract—In roadmap-based methods, such as the Probabilis-tic Roadmap Method (PRM) in deterministic ...
Abstract — We consider the partially observable control prob-lem where it is potentially necessary t...
We consider a chance-constrained multi-robot motion planning problem in the presence of Gaussian mot...
Abstract—When a mobile agent does not known its position perfectly, incorporating the predicted unce...
Kinodynamic motion planning addresses the problem of finding the control inputs to a dynamical syste...