AbstractReal-time heuristic search methods interleave planning and plan executions and plan only in the part of the domain around the current state of the agents. So far, real-time heuristic search methods have mostly been applied to deterministic planning tasks. In this article, we argue that real-time heuristic search methods can efficiently solve nondeterministic planning tasks. We introduce Min-Max Learning Real-Time A∗ (Min-Max LRTA∗), a real-time heuristic search method that generalizes Korf's LRTA∗ to nondeterministic domains, and apply it to robot-navigation tasks in mazes, where the robots know the maze but do not know their initial position and orientation (pose). These planning tasks can be modeled as planning tasks in nondetermi...
Abstract—Many motion planning problems in robotics are high dimensional planning problems. While sam...
Recently, real-time planning has been actively studied for solving problems in uncertain and dy-nami...
Real-time heuristic search methods, such as LRTA*, are used by situated agents in applications that ...
AbstractReal-time heuristic search methods interleave planning and plan executions and plan only in ...
Autonomous robotic systems are becoming widespread in the form of self-driving cars, drones, and eve...
Real-time search methods are suited for tasks in which the agent is interacting with an initially un...
Autonomous mobile robots must be able to plan quickly and stay reactive to the world around them. Cu...
Real-time agent-centered heuristic search is a well-studied problem where an agent that can only rea...
Real-time agent-centered heuristic search is a well-studied problem where an agent that can only rea...
We focus on relatively low dimensional robot motion planning problems, such as planning for navigati...
Learning Real-Time A* (LRTA*) is a popular control method that interleaves planning and plan executi...
In many robot motion planning problems such as manipulation planning for a personal robot in a kitch...
Robust robot motion planning in dynamic environments requires that actions be selected under real-ti...
Many systems, such as mobile robots, need to be controlled in real time. Real-time heuristic search ...
Real-time heuristic search algorithms satisfy a constant bound on the amount of planning per action,...
Abstract—Many motion planning problems in robotics are high dimensional planning problems. While sam...
Recently, real-time planning has been actively studied for solving problems in uncertain and dy-nami...
Real-time heuristic search methods, such as LRTA*, are used by situated agents in applications that ...
AbstractReal-time heuristic search methods interleave planning and plan executions and plan only in ...
Autonomous robotic systems are becoming widespread in the form of self-driving cars, drones, and eve...
Real-time search methods are suited for tasks in which the agent is interacting with an initially un...
Autonomous mobile robots must be able to plan quickly and stay reactive to the world around them. Cu...
Real-time agent-centered heuristic search is a well-studied problem where an agent that can only rea...
Real-time agent-centered heuristic search is a well-studied problem where an agent that can only rea...
We focus on relatively low dimensional robot motion planning problems, such as planning for navigati...
Learning Real-Time A* (LRTA*) is a popular control method that interleaves planning and plan executi...
In many robot motion planning problems such as manipulation planning for a personal robot in a kitch...
Robust robot motion planning in dynamic environments requires that actions be selected under real-ti...
Many systems, such as mobile robots, need to be controlled in real time. Real-time heuristic search ...
Real-time heuristic search algorithms satisfy a constant bound on the amount of planning per action,...
Abstract—Many motion planning problems in robotics are high dimensional planning problems. While sam...
Recently, real-time planning has been actively studied for solving problems in uncertain and dy-nami...
Real-time heuristic search methods, such as LRTA*, are used by situated agents in applications that ...