Reinforcement learning methods can achieve significant performance but require a large amount of training data collected on the same robotic platform. A policy trained with expensive data is rendered useless after making even a minor change to the robot hardware. In this paper, we address the challenging problem of adapting a policy, trained to perform a task, to a novel robotic hardware platform given only few demonstrations of robot motion trajectories on the target robot. We formulate it as a few-shot meta-learning problem where the goal is to find a meta-model that captures the common structure shared across different robotic platforms such that data-efficient adaptation can be performed. We achieve such adaptation by introducing a lear...
Thesis (Ph.D.)--University of Washington, 2020Informed and robust decision making in the face of unc...
Meta-reinforcement learning has the potential to enable artificial agents to master new skills with ...
Abstract—In real-world robotic applications, many factors, both at low-level (e.g., vision and motio...
Most policy search (PS) algorithms require thousands of training episodes to find an effective polic...
Most policy search algorithms require thousands of training episodes to find an effective policy, wh...
In this paper we explore few-shot imitation learning for control problems, which involves learning t...
Humans manage to adapt learned movements very quickly to new situations by generalizing learned beha...
Nowadays, industrial processes are vastly automated by means of robotic manipulators. In some cases,...
Many complex robot motor skills can be represented using elementary movements, and there exist effic...
Skills can often be performed in many different ways. In order to provide robots with human-like ada...
In many complex robot applications, such as grasping and manipulation, it is difficult to program de...
Learning from small data sets is critical in many practical applications where data col- lection is ...
The successful operation of mobile robots requires them to adapt rapidly to environmental changes. T...
In real-world robotic applications, many factors, both at low level (e.g., vision, motion control an...
Thesis (Ph.D.)--University of Washington, 2020Informed and robust decision making in the face of unc...
Meta-reinforcement learning has the potential to enable artificial agents to master new skills with ...
Abstract—In real-world robotic applications, many factors, both at low-level (e.g., vision and motio...
Most policy search (PS) algorithms require thousands of training episodes to find an effective polic...
Most policy search algorithms require thousands of training episodes to find an effective policy, wh...
In this paper we explore few-shot imitation learning for control problems, which involves learning t...
Humans manage to adapt learned movements very quickly to new situations by generalizing learned beha...
Nowadays, industrial processes are vastly automated by means of robotic manipulators. In some cases,...
Many complex robot motor skills can be represented using elementary movements, and there exist effic...
Skills can often be performed in many different ways. In order to provide robots with human-like ada...
In many complex robot applications, such as grasping and manipulation, it is difficult to program de...
Learning from small data sets is critical in many practical applications where data col- lection is ...
The successful operation of mobile robots requires them to adapt rapidly to environmental changes. T...
In real-world robotic applications, many factors, both at low level (e.g., vision, motion control an...
Thesis (Ph.D.)--University of Washington, 2020Informed and robust decision making in the face of unc...
Meta-reinforcement learning has the potential to enable artificial agents to master new skills with ...
Abstract—In real-world robotic applications, many factors, both at low-level (e.g., vision and motio...