In this paper, a motion segmentation algorithm design is presented with the goal of segmenting a learned trajectory from demonstration such that each segment is locally maximally different from its neighbors. This segmentation is then exploited to appropriately scale (dilate/squeeze and/or rotate) a nominal trajectory learned from a few demonstrations on a fixed experimental setup such that it is applicable to different experimental settings without expanding the dataset and/or retraining the robot. The algorithm is computationally efficient in the sense that it allows facile transition between different environments. Experimental results using the Baxter robotic platform showcase the ability of the algorithm to accurately transfer a feedin...
Abstract. Today, robots are already able to solve specific tasks in lab-oratory environments. Since ...
The paper describes and formalizes the concepts and assumptions involved in Learning from Demonstrat...
Programming robots often involves expert knowledge in both the robot itself and the task to execute....
Abstract — Robot learning from demonstration presents sev-eral challenges. Given a task demonstratio...
Learning by demonstration is a natural approach that can be used to transfer knowledge from humans t...
Learning motions from human demonstrations provides an intuitive way for non-expert users to teach t...
Learning from Demonstration (LfD) aims to learn versatile skills from human demonstrations. The fiel...
We propose an approach to control learning from demonstration that first segments demonstration traj...
Learning from demonstration (LfD) enables a robot to emulate natural human movement instead of merel...
The paper describes and formalizes the concepts and assumptions involved in Learning from Demonstrat...
In this paper, we present new Learning from Demonstration ((LfD) - based algorithm that generalizes ...
Transferring skills to robots by demonstrations has been extensively researched for decades. However...
The objective of this thesis is to teach a Baxter robot to learn certain arm trajectories. The robo...
Robots excel in manufacturing facilities because the tasks are repetitive and do not change. However...
Moving away from repetitive tasks, robots nowadays demand versatile skills that adapt to different s...
Abstract. Today, robots are already able to solve specific tasks in lab-oratory environments. Since ...
The paper describes and formalizes the concepts and assumptions involved in Learning from Demonstrat...
Programming robots often involves expert knowledge in both the robot itself and the task to execute....
Abstract — Robot learning from demonstration presents sev-eral challenges. Given a task demonstratio...
Learning by demonstration is a natural approach that can be used to transfer knowledge from humans t...
Learning motions from human demonstrations provides an intuitive way for non-expert users to teach t...
Learning from Demonstration (LfD) aims to learn versatile skills from human demonstrations. The fiel...
We propose an approach to control learning from demonstration that first segments demonstration traj...
Learning from demonstration (LfD) enables a robot to emulate natural human movement instead of merel...
The paper describes and formalizes the concepts and assumptions involved in Learning from Demonstrat...
In this paper, we present new Learning from Demonstration ((LfD) - based algorithm that generalizes ...
Transferring skills to robots by demonstrations has been extensively researched for decades. However...
The objective of this thesis is to teach a Baxter robot to learn certain arm trajectories. The robo...
Robots excel in manufacturing facilities because the tasks are repetitive and do not change. However...
Moving away from repetitive tasks, robots nowadays demand versatile skills that adapt to different s...
Abstract. Today, robots are already able to solve specific tasks in lab-oratory environments. Since ...
The paper describes and formalizes the concepts and assumptions involved in Learning from Demonstrat...
Programming robots often involves expert knowledge in both the robot itself and the task to execute....