Learning from Demonstration (LfD) is a family of methods used to teach robots specific tasks. It is used to assist them with the increasing difficulty of performing manipulation tasks in a scalable manner. The state-of-the-art in collaborative robots allows for simple LfD approaches that can handle limited parameter changes of a task. These methods however typically approach the problem from a control perspective and therefore are tied to specific robot platforms. In contrast, this paper proposes a novel motion planning approach that combines the benefits of LfD approaches with generic motion planning that can provide robustness to the planning process as well as scaling task learning both in number of tasks and number of robot platforms. S...
The objective of this work is to augment the basic abilities of a robot by learning to use sensorim...
Robot motion planning is a field that encompasses many different problems and algorithms. From the t...
We formalize the problem of adapting a demonstrated trajectory to a new start and goal configuration...
Learning from demonstration (LfD) enables a robot to emulate natural human movement instead of merel...
Learning motions from human demonstrations provides an intuitive way for non-expert users to teach t...
Trajectory optimization is an essential tool for motion planning under multiple constraints of robo...
Abstract. Today, robots are already able to solve specific tasks in lab-oratory environments. Since ...
Robots that operate in natural human environments must be capable of handling uncertain dynamics and...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
Learning from Demonstration (LfD) aims to learn versatile skills from human demonstrations. The fiel...
This paper describes the trajectory learning component of a programming by demonstration (PbD) syste...
Robot motion planning is one of the central problems in robotics, and has received considerable amou...
Several approaches have been proposed to assist humans in co-manipulation and teleoperation tasks gi...
Human intelligence has appealed to the robotics community for a long time; specifically, a person\u2...
State-of-the-art robotics research has been progressively focusing on autonomous robots that can op...
The objective of this work is to augment the basic abilities of a robot by learning to use sensorim...
Robot motion planning is a field that encompasses many different problems and algorithms. From the t...
We formalize the problem of adapting a demonstrated trajectory to a new start and goal configuration...
Learning from demonstration (LfD) enables a robot to emulate natural human movement instead of merel...
Learning motions from human demonstrations provides an intuitive way for non-expert users to teach t...
Trajectory optimization is an essential tool for motion planning under multiple constraints of robo...
Abstract. Today, robots are already able to solve specific tasks in lab-oratory environments. Since ...
Robots that operate in natural human environments must be capable of handling uncertain dynamics and...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
Learning from Demonstration (LfD) aims to learn versatile skills from human demonstrations. The fiel...
This paper describes the trajectory learning component of a programming by demonstration (PbD) syste...
Robot motion planning is one of the central problems in robotics, and has received considerable amou...
Several approaches have been proposed to assist humans in co-manipulation and teleoperation tasks gi...
Human intelligence has appealed to the robotics community for a long time; specifically, a person\u2...
State-of-the-art robotics research has been progressively focusing on autonomous robots that can op...
The objective of this work is to augment the basic abilities of a robot by learning to use sensorim...
Robot motion planning is a field that encompasses many different problems and algorithms. From the t...
We formalize the problem of adapting a demonstrated trajectory to a new start and goal configuration...