Path planning in robotics often requires finding high-quality solutions to continuously valued and/or high-dimensional problems. These problems are challenging and most planning algorithms instead solve simplified approximations. Popular approximations include graphs and random samples, as used by informed graph-based searches and anytime sampling-based planners, respectively. Informed graph-based searches, such as A*, traditionally use heuristics to search a priori graphs in order of potential solution quality. This makes their search efficient, but leaves their performance dependent on the chosen approximation. If the resolution of the chosen approximation is too low, then they may not find a (suitable) solution, but if it is too high, t...
Abstract—In this paper, we introduce initial work on an any-time optimal sampling-based planning alg...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
Rapidly exploring random trees (RRTs) have been proven to be efficient for planning in environments ...
Navigating uncontrolled dynamic environments is a major challenge in robotics. Success requires solv...
(BIT*), a planning algorithm based on unifying graph- and sampling-based planning techniques. By rec...
Path planning algorithms can solve the problem of finding paths through continuous spaces. This prob...
Path planning is an active area of research essential for many applications in robotics. Popular tec...
Abstract — Discrete and sampling-based methods have tradi-tionally been popular techniques for path ...
Informed sampling-based planning algorithms exploit problem knowledge for better search performance....
Path planners based on basic rapidly-exploring random trees (RRTs) are quick and efficient, and thus...
Abstract — Rapidly-exploring random trees (RRTs) are pop-ular in motion planning because they find s...
In modern approaches to path planning and robot motion planning, anytime almost-surely asymptoticall...
Anytime almost-surely asymptotically optimal planners, such as RRT∗, incrementally find paths to eve...
Optimal path planning is the problem of finding a valid sequence of states between a start and goal ...
Abstract — We present a sampling-based path planning and replanning algorithm that produces anytime ...
Abstract—In this paper, we introduce initial work on an any-time optimal sampling-based planning alg...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
Rapidly exploring random trees (RRTs) have been proven to be efficient for planning in environments ...
Navigating uncontrolled dynamic environments is a major challenge in robotics. Success requires solv...
(BIT*), a planning algorithm based on unifying graph- and sampling-based planning techniques. By rec...
Path planning algorithms can solve the problem of finding paths through continuous spaces. This prob...
Path planning is an active area of research essential for many applications in robotics. Popular tec...
Abstract — Discrete and sampling-based methods have tradi-tionally been popular techniques for path ...
Informed sampling-based planning algorithms exploit problem knowledge for better search performance....
Path planners based on basic rapidly-exploring random trees (RRTs) are quick and efficient, and thus...
Abstract — Rapidly-exploring random trees (RRTs) are pop-ular in motion planning because they find s...
In modern approaches to path planning and robot motion planning, anytime almost-surely asymptoticall...
Anytime almost-surely asymptotically optimal planners, such as RRT∗, incrementally find paths to eve...
Optimal path planning is the problem of finding a valid sequence of states between a start and goal ...
Abstract — We present a sampling-based path planning and replanning algorithm that produces anytime ...
Abstract—In this paper, we introduce initial work on an any-time optimal sampling-based planning alg...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
Rapidly exploring random trees (RRTs) have been proven to be efficient for planning in environments ...