Abstract—Many motion planning problems in robotics are high dimensional planning problems. While sampling-based motion planning algorithms handle the high dimensionality very well, the solution qualities are often hard to control due to the inherent randomization. In addition, they suffer severely when the configuration space has several ‘narrow passages’. Search-based planners on the other hand typically provide good solution qualities and are not affected by narrow passages. However, in the absence of a good heuristic or when there are deep local minima in the heuristic, they suffer from the curse of dimensionality. In this work, our primary contribution is a method for dynamically generating heuristics, in addition to the original heuris...
Algorithms such as RRT (Rapidly exploring random tree), A* and their variants have been widely used ...
In its original formulation, the motion planning problem considers the search of a robot path from a...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Heuristic searches such as A* search are a popular means of finding least-cost plans due to their ge...
Heuristic searches such as A* search are a popular means of finding least-cost plans due to their ge...
Autonomous mobile robots must be able to plan quickly and stay reactive to the world around them. Cu...
In many robot motion planning problems such as manipulation planning for a personal robot in a kitch...
Robots are being employed not only for assembly tasks, but also in domains like healthcare, mining, ...
Many robotic tasks, such as mobile manipulation, often require interaction with unstructured environ...
Sampling-based search has been shown effective in motion planning, a hard continuous state-space pro...
Heuristic searches such as A* search are a popular means of finding least-cost plans due to their ge...
We present a novel heuristic search framework, called Multi-Heuristic A * (MHA*), that simultaneousl...
Robust robot motion planning in dynamic environments requires that actions be selected under real-ti...
The motion planning problem means the computation of a collision-free motion for a movable object am...
The performance of heuristic search based planners depends heavily on the quality of the heuristic f...
Algorithms such as RRT (Rapidly exploring random tree), A* and their variants have been widely used ...
In its original formulation, the motion planning problem considers the search of a robot path from a...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Heuristic searches such as A* search are a popular means of finding least-cost plans due to their ge...
Heuristic searches such as A* search are a popular means of finding least-cost plans due to their ge...
Autonomous mobile robots must be able to plan quickly and stay reactive to the world around them. Cu...
In many robot motion planning problems such as manipulation planning for a personal robot in a kitch...
Robots are being employed not only for assembly tasks, but also in domains like healthcare, mining, ...
Many robotic tasks, such as mobile manipulation, often require interaction with unstructured environ...
Sampling-based search has been shown effective in motion planning, a hard continuous state-space pro...
Heuristic searches such as A* search are a popular means of finding least-cost plans due to their ge...
We present a novel heuristic search framework, called Multi-Heuristic A * (MHA*), that simultaneousl...
Robust robot motion planning in dynamic environments requires that actions be selected under real-ti...
The motion planning problem means the computation of a collision-free motion for a movable object am...
The performance of heuristic search based planners depends heavily on the quality of the heuristic f...
Algorithms such as RRT (Rapidly exploring random tree), A* and their variants have been widely used ...
In its original formulation, the motion planning problem considers the search of a robot path from a...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...