This paper presents a strategy for planning robot motions in dynamic, uncertain environments (DUEs). Successful and efficient robot operation in such environments requires reasoning about the future evolution and uncertainties of the states of the moving agents and obstacles. A novel procedure to account for future information gathering (and the quality of that information) in the planning process is presented. To approximately solve the stochastic dynamic programming problem that is associated with DUE planning, we present a partially closed-loop receding horizon control algorithm whose solution integrates prediction, estimation, and planning while also accounting for chance constraints that arise from the uncertain locations of the robot ...
Historically, robots have successfully performed various tasks in isolated areas by following prepro...
Historically, robots have successfully performed various tasks in isolated areas by following prepro...
Robots must plan and execute tasks in the presence of uncertainty. Uncertainty arises from sensing ...
This paper presents a strategy for planning robot motions in dynamic, uncertain environments (DUEs)....
This paper presents a strategy for planning robot motions in dynamic, cluttered, and uncertain envir...
This paper presents a strategy for planning robot motions in dynamic, cluttered, and uncertain envir...
The primary contribution of this dissertation is the presentation of a dynamic game-theoretic framew...
The primary contribution of this dissertation is the presentation of a dynamic game-theoretic framew...
We present a framework for analyzing and computing motion plans for a robot that operates in an envi...
This thesis is concerned with trajectory generation for robots in dynamic environments with relative...
This thesis is concerned with trajectory generation for robots in dynamic environments with relative...
Robots must successfully plan and execute tasks in the presence of uncertainty. Uncertainty arises...
Modeling robot motion planning with uncertainty in a Bayesian framework leads to a computationally i...
Safe autonomous operation of dynamical systems has become one of the most important research problem...
Safe autonomous operation of dynamical systems has become one of the most important research problem...
Historically, robots have successfully performed various tasks in isolated areas by following prepro...
Historically, robots have successfully performed various tasks in isolated areas by following prepro...
Robots must plan and execute tasks in the presence of uncertainty. Uncertainty arises from sensing ...
This paper presents a strategy for planning robot motions in dynamic, uncertain environments (DUEs)....
This paper presents a strategy for planning robot motions in dynamic, cluttered, and uncertain envir...
This paper presents a strategy for planning robot motions in dynamic, cluttered, and uncertain envir...
The primary contribution of this dissertation is the presentation of a dynamic game-theoretic framew...
The primary contribution of this dissertation is the presentation of a dynamic game-theoretic framew...
We present a framework for analyzing and computing motion plans for a robot that operates in an envi...
This thesis is concerned with trajectory generation for robots in dynamic environments with relative...
This thesis is concerned with trajectory generation for robots in dynamic environments with relative...
Robots must successfully plan and execute tasks in the presence of uncertainty. Uncertainty arises...
Modeling robot motion planning with uncertainty in a Bayesian framework leads to a computationally i...
Safe autonomous operation of dynamical systems has become one of the most important research problem...
Safe autonomous operation of dynamical systems has become one of the most important research problem...
Historically, robots have successfully performed various tasks in isolated areas by following prepro...
Historically, robots have successfully performed various tasks in isolated areas by following prepro...
Robots must plan and execute tasks in the presence of uncertainty. Uncertainty arises from sensing ...