The RRT??? algorithm has efficiently extended Rapidly-exploring Random Trees (RRTs) to endow it with asymptotic optimality. We propose Goal-Rooted Feedback Motion Trees (GR-FMTs) that honor state/input constraints and generate collision-free feedback policies. Given analytic solutions for optimal local steering, GR-FMTs obtain and realize safe, dynamically feasible, and asymptotically optimal trajectories toward goals. Second, for controllable linear systems with linear state/input constraints, we propose a fast method for local steering, based on polynomial basis functions and segmentation. GR-FMTs with the method obtain and realize trajectories that are collision-free, dynamically feasible under constraints, and asymptotically optimal wit...
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’...
We present a tree structure algorithm for optimal control problems with state constraints. We prove ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
The paper presents the simulation-based variant of the LQR-tree feedback-motion-planning approach. T...
Abstract — In this paper, we describe a planning and control approach in terms of sampling using Rap...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a Rapidly exploring Random Trees planning strategy (Poli-RRT*) that computes opt...
Incremental sampling-based motion planning algorithms such as the Rapidly-exploring Random Trees (RR...
This paper extends the RRT* algorithm, a recently developed but widely used sampling based optimal m...
This paper extends the RRT* algorithm, a recently developed but widely used sampling based optimal m...
The common theme of this dissertation is sampling-based motion planning with the two key contributio...
Sampling based methods resulted in feasible and effective motion planning algorithms for high dimens...
Rapidly-exploring random trees (RRTs) are widely used to solve large planning problems where the sco...
This paper summarizes our recent development of algorithms that construct feasible trajectories for ...
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’...
We present a tree structure algorithm for optimal control problems with state constraints. We prove ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
The paper presents the simulation-based variant of the LQR-tree feedback-motion-planning approach. T...
Abstract — In this paper, we describe a planning and control approach in terms of sampling using Rap...
This paper proposes a novel sampling-based motion planner, which integrates in Rapidly exploring Ran...
This paper proposes a Rapidly exploring Random Trees planning strategy (Poli-RRT*) that computes opt...
Incremental sampling-based motion planning algorithms such as the Rapidly-exploring Random Trees (RR...
This paper extends the RRT* algorithm, a recently developed but widely used sampling based optimal m...
This paper extends the RRT* algorithm, a recently developed but widely used sampling based optimal m...
The common theme of this dissertation is sampling-based motion planning with the two key contributio...
Sampling based methods resulted in feasible and effective motion planning algorithms for high dimens...
Rapidly-exploring random trees (RRTs) are widely used to solve large planning problems where the sco...
This paper summarizes our recent development of algorithms that construct feasible trajectories for ...
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’...
We present a tree structure algorithm for optimal control problems with state constraints. We prove ...