We describe an unsupervised on-line method for learning of manipulative actions that allows a robot to push an object connected to it with a rotational point contact to a desired point in image-space. By observing the results of its actions on the object's orientation in image-space, the system forms a predictive forward empirical model. This acquired model is used on-line for manipulation planning and control as it improves. Rather than explicitly inverting the forward model to achieve trajectory control, a stochastic action selection technique is used to select the most informative and promising actions, thereby integrating active perception and learning by combining on-line improvement, task directed exploration, and model exploitation. ...
This paper describes a method for robotic manipulation that uses direct image-space calculation of o...
Abstract — Robust robotic manipulation and perception re-mains a difficult challenge, in particular ...
Abstract: In this paper, we deal with the problem of learning by demonstration, task level learning ...
We describe an unsupervised on-line method for learning of manipulative actions that allows a robot ...
A Vision-Based Learning Method for Pushing Manipulation We describe an unsupervised on-line method f...
We introduce our approach, a new direction of robotics research that makes a robot learn to behave a...
We introduce our approach that makes a robot learn to behave adequately to accomplish a giv-en task ...
We introduce our approach that makes a robot learn to behave adequately to accomplish a given task a...
Online learning of vision-based robot control requires appropriate activation strategies during oper...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Learning complex behaviors through reinforcement learning is particularly challenging when reward is...
This paper presents a Robot Learning from Demonstration (RLfD) framework for teaching manipulation t...
Robots must successfully execute tasks in the presence of uncertainty. The main sources of uncertain...
Abstract — There are many situations in which an object that needs to be grasped is not graspable, b...
In a realistic mobile push-manipulation scenario, it becomes non-trivial and infeasible to build ana...
This paper describes a method for robotic manipulation that uses direct image-space calculation of o...
Abstract — Robust robotic manipulation and perception re-mains a difficult challenge, in particular ...
Abstract: In this paper, we deal with the problem of learning by demonstration, task level learning ...
We describe an unsupervised on-line method for learning of manipulative actions that allows a robot ...
A Vision-Based Learning Method for Pushing Manipulation We describe an unsupervised on-line method f...
We introduce our approach, a new direction of robotics research that makes a robot learn to behave a...
We introduce our approach that makes a robot learn to behave adequately to accomplish a giv-en task ...
We introduce our approach that makes a robot learn to behave adequately to accomplish a given task a...
Online learning of vision-based robot control requires appropriate activation strategies during oper...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Learning complex behaviors through reinforcement learning is particularly challenging when reward is...
This paper presents a Robot Learning from Demonstration (RLfD) framework for teaching manipulation t...
Robots must successfully execute tasks in the presence of uncertainty. The main sources of uncertain...
Abstract — There are many situations in which an object that needs to be grasped is not graspable, b...
In a realistic mobile push-manipulation scenario, it becomes non-trivial and infeasible to build ana...
This paper describes a method for robotic manipulation that uses direct image-space calculation of o...
Abstract — Robust robotic manipulation and perception re-mains a difficult challenge, in particular ...
Abstract: In this paper, we deal with the problem of learning by demonstration, task level learning ...