<p>Acting under uncertainty is a fundamental challenge for any decision maker in the real world. As uncertainty is often the culprit of failure, many prior works attempt to reduce the problem to one with a known state. However, this fails to account for a key property of acting under uncertainty: we can often gain utility while uncertain. This thesis presents methods that utilize this property in two domains: active information gathering and shared autonomy. For active information gathering, we present a general framework for reducing uncertainty just enough to make a decision. To do so, we formulate the Decision Region Determination (DRD) problem, modelling how uncertainty impedes decision making. We present two methods for solving this pr...
Planning under uncertainty is a central topic at the intersection of disciplines such as artificial ...
When making decisions under uncertainty, the optimal choices are often difficult to discern, especia...
In real-time planning, an agent must select the next action to take within a fixed time bound. Many ...
Acting under uncertainty is a fundamental challenge for any decision maker in the real world. As unc...
In shared autonomy, user input and robot autonomy are combined to control a robot to achieve a goal....
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
PhD thesisOver the past several decades, technologies for remote sensing and exploration have be- co...
Many robotic tasks, such as mobile manipulation, often require interaction with unstructured environ...
The ever-increasing presence of autonomy in our lives calls for immediate and significant investment...
In the real world, robots operate with imperfect sensors providing uncertain and incomplete informat...
We are captivated by the promise of autonomous systems in our everyday life. However, ensuring that ...
AbstractIn this paper we discuss a class of tasks in which to study planning under uncertainty. We a...
Robots must perform tasks efficiently and reli- ably while acting under uncertainty. One way to achi...
There has been a growing interest in intelligent assis-tants for a variety of applications from orga...
Because the physical world is complex, ambiguous, and unpredictable, autonomous agents must be engin...
Planning under uncertainty is a central topic at the intersection of disciplines such as artificial ...
When making decisions under uncertainty, the optimal choices are often difficult to discern, especia...
In real-time planning, an agent must select the next action to take within a fixed time bound. Many ...
Acting under uncertainty is a fundamental challenge for any decision maker in the real world. As unc...
In shared autonomy, user input and robot autonomy are combined to control a robot to achieve a goal....
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
PhD thesisOver the past several decades, technologies for remote sensing and exploration have be- co...
Many robotic tasks, such as mobile manipulation, often require interaction with unstructured environ...
The ever-increasing presence of autonomy in our lives calls for immediate and significant investment...
In the real world, robots operate with imperfect sensors providing uncertain and incomplete informat...
We are captivated by the promise of autonomous systems in our everyday life. However, ensuring that ...
AbstractIn this paper we discuss a class of tasks in which to study planning under uncertainty. We a...
Robots must perform tasks efficiently and reli- ably while acting under uncertainty. One way to achi...
There has been a growing interest in intelligent assis-tants for a variety of applications from orga...
Because the physical world is complex, ambiguous, and unpredictable, autonomous agents must be engin...
Planning under uncertainty is a central topic at the intersection of disciplines such as artificial ...
When making decisions under uncertainty, the optimal choices are often difficult to discern, especia...
In real-time planning, an agent must select the next action to take within a fixed time bound. Many ...