Mobile robots are increasingly being deployed in the real world in response to a heightened demand for applications such as transportation, delivery and inspection. The motion planning systems for these robots are expected to have consistent performance across the wide range of scenarios that they encounter. While state-of-the-art planners, with provable worst-case guarantees, can be employed to solve these planning problems, their finite time performance varies across scenarios. This thesis proposes that the planning module for a robot must adapt its search strategy to the distribution of planning problems encountered to achieve real-time performance. We address three principal challenges of this problem. Firstly, we show that even when th...
This thesis describes a predictive sampling-based algorithm for real-time robot motion planning to r...
For a mobile robot that performs online model learning, the learning rate is a function of the robot...
Many robotic tasks, such as mobile manipulation, often require interaction with unstructured environ...
<p>Mobile robots are increasingly being deployed in the real world in response to a heightened deman...
In robotics, path planning refers to finding a short. collision-free path from an initial robot conf...
In many robot motion planning problems such as manipulation planning for a personal robot in a kitch...
To address the need for a fast path planner, we present a learning algorithm that improves path plan...
Autonomous mobile robots must be able to plan quickly and stay reactive to the world around them. Cu...
Robot motion planning is one of the central problems in robotics, and has received considerable amou...
Emerging applications involving a high degree of uncertainty, dynamics, variability and unpredictabi...
Sampling-based methods have emerged as a promising technique for solving robot motion-planning probl...
Autonomous robotic systems are becoming widespread in the form of self-driving cars, drones, and eve...
Kinodynamic motion planners allow robots to perform complex manipulation tasks under dynamics constr...
In the real world, robots operate with imperfect sensors providing uncertain and incomplete informat...
We present a framework for analyzing and computing motion plans for a robot that operates in an envi...
This thesis describes a predictive sampling-based algorithm for real-time robot motion planning to r...
For a mobile robot that performs online model learning, the learning rate is a function of the robot...
Many robotic tasks, such as mobile manipulation, often require interaction with unstructured environ...
<p>Mobile robots are increasingly being deployed in the real world in response to a heightened deman...
In robotics, path planning refers to finding a short. collision-free path from an initial robot conf...
In many robot motion planning problems such as manipulation planning for a personal robot in a kitch...
To address the need for a fast path planner, we present a learning algorithm that improves path plan...
Autonomous mobile robots must be able to plan quickly and stay reactive to the world around them. Cu...
Robot motion planning is one of the central problems in robotics, and has received considerable amou...
Emerging applications involving a high degree of uncertainty, dynamics, variability and unpredictabi...
Sampling-based methods have emerged as a promising technique for solving robot motion-planning probl...
Autonomous robotic systems are becoming widespread in the form of self-driving cars, drones, and eve...
Kinodynamic motion planners allow robots to perform complex manipulation tasks under dynamics constr...
In the real world, robots operate with imperfect sensors providing uncertain and incomplete informat...
We present a framework for analyzing and computing motion plans for a robot that operates in an envi...
This thesis describes a predictive sampling-based algorithm for real-time robot motion planning to r...
For a mobile robot that performs online model learning, the learning rate is a function of the robot...
Many robotic tasks, such as mobile manipulation, often require interaction with unstructured environ...