End-to-end control for robot manipulation and grasping is emerging as an attractive alternative to traditional pipelined approaches. However, end-to- end methods tend to either be slow to train, exhibit little or no generalisability, or lack the ability to accomplish long-horizon or multi-stage tasks. In this paper, we show how two simple techniques can lead to end-to-end (image to velocity) execution of a multi-stage task, which is analogous to a simple tidying routine, without having seen a single real image. This involves locating, reaching for, and grasping a cube, then locating a basket and dropping the cube inside. To achieve this, robot trajectories are computed in a simulator, to collect a series of control velocities which accompli...
Personal robots that help disabled or elderly people in their activities of daily living need to be ...
Robots have been deployed in various fields of the industry, with the expectation of managing more t...
Recently, vision and learning made significant progress that could improve robot control policies fo...
Visuomotor control (VMC) is an effective means of achieving basic manipulation tasks such as pushing...
We propose a technique for multi-task learning from demonstration that trains the controller of a lo...
Learning visuomotor policies in simulation is much safer and cheaper than in the real world. However...
Much like humans, robots should have the ability to leverage knowledge from previously learned tasks...
Traditionally, robot manipulation tasks are solved by engineering solutions in a modular fashion ---...
Training visual control policies from scratch on a new robot typically requires generating large amo...
11 pagesManipulation tasks such as preparing a meal or assembling furniture remain highly challengin...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Electrically actuated robotic arms have been implemented to complete tasks which are repetitive, str...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
In this paper we introduce two methods of improving real-time object grasping performance from monoc...
Abstract — Robotic grasping of a target object without advance knowledge of its three-dimensional mo...
Personal robots that help disabled or elderly people in their activities of daily living need to be ...
Robots have been deployed in various fields of the industry, with the expectation of managing more t...
Recently, vision and learning made significant progress that could improve robot control policies fo...
Visuomotor control (VMC) is an effective means of achieving basic manipulation tasks such as pushing...
We propose a technique for multi-task learning from demonstration that trains the controller of a lo...
Learning visuomotor policies in simulation is much safer and cheaper than in the real world. However...
Much like humans, robots should have the ability to leverage knowledge from previously learned tasks...
Traditionally, robot manipulation tasks are solved by engineering solutions in a modular fashion ---...
Training visual control policies from scratch on a new robot typically requires generating large amo...
11 pagesManipulation tasks such as preparing a meal or assembling furniture remain highly challengin...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Electrically actuated robotic arms have been implemented to complete tasks which are repetitive, str...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
In this paper we introduce two methods of improving real-time object grasping performance from monoc...
Abstract — Robotic grasping of a target object without advance knowledge of its three-dimensional mo...
Personal robots that help disabled or elderly people in their activities of daily living need to be ...
Robots have been deployed in various fields of the industry, with the expectation of managing more t...
Recently, vision and learning made significant progress that could improve robot control policies fo...