DMPs are a common method for learning a control policy for a task from demonstration. This control policy consists of differential equations that can create a smooth trajectory to a new goal point. However, DMPs only have a limited ability to generalize the demonstration to new environments and solve problems such as obstacle avoidance. Moreover, standard DMP learning does not cope with the noise inherent to human demonstrations. Here, we propose an approach for robot learning from demonstration that can generalize noisy task demonstrations to a new goal point and to an environment with obstacles. This strategy for robot learning from demonstration results in a control policy that incorporates different types of learning from demonstra...
Most people's imagination about robots has been shaped by Hollywood movies or novels, resulting in t...
The work presented in this dissertation investigates techniques for robot Learning from Demonstratio...
The work presented in this dissertation investigates techniques for robot Learning from Demonstratio...
DMPs are a common method for learning a control policy for a task from demonstration. This control ...
DMPs are a common method for learning a control policy for a task from demonstration. This control ...
DMPs are a common method for learning a control policy for a task from demonstration. This control ...
Dynamic Movement Primitives (DMPs) are a common method for learning a control policy for a task from...
Human-robot interaction is a growing research domain; there are many approaches to robot design, dep...
The goal of robot learning from demonstration is to have a robot learn from watching a demonstration...
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...
The paper describes and formalizes the concepts and assumptions involved in Learning from Demonstrat...
The paper describes and formalizes the concepts and assumptions involved in Learning from Demonstrat...
This paper presents an attempt on incremental robot learning from demonstration. Based on previously...
Today robotics is one of the so-called exponential technologies. While the first robots were only us...
Most people's imagination about robots has been shaped by Hollywood movies or novels, resulting in t...
The work presented in this dissertation investigates techniques for robot Learning from Demonstratio...
The work presented in this dissertation investigates techniques for robot Learning from Demonstratio...
DMPs are a common method for learning a control policy for a task from demonstration. This control ...
DMPs are a common method for learning a control policy for a task from demonstration. This control ...
DMPs are a common method for learning a control policy for a task from demonstration. This control ...
Dynamic Movement Primitives (DMPs) are a common method for learning a control policy for a task from...
Human-robot interaction is a growing research domain; there are many approaches to robot design, dep...
The goal of robot learning from demonstration is to have a robot learn from watching a demonstration...
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...
The paper describes and formalizes the concepts and assumptions involved in Learning from Demonstrat...
The paper describes and formalizes the concepts and assumptions involved in Learning from Demonstrat...
This paper presents an attempt on incremental robot learning from demonstration. Based on previously...
Today robotics is one of the so-called exponential technologies. While the first robots were only us...
Most people's imagination about robots has been shaped by Hollywood movies or novels, resulting in t...
The work presented in this dissertation investigates techniques for robot Learning from Demonstratio...
The work presented in this dissertation investigates techniques for robot Learning from Demonstratio...