The proposed work presents a framework based on Graph Neural Networks (GNN) that abstracts the task to be executed and directly allows the robot to learn task-specific rules from synthetic demonstrations given through imitation learning. A graph representation of the state space is considered to encode the task-relevant entities as nodes for a Pick-and-Place task declined at different levels of difficulty. During training, the GNN-based policy learns the underlying rules of the manipulation task focusing on the structural relevance and the type of objects and goals, relying on an external primitive to move the robot to accomplish the task. The GNN-policy has been trained as a node-classification approach by looking at the different configur...
Learning by imitation represents a useful and promising alternative to program robots. The approach ...
Imitation learning has been recognized as a promising technique to teach robots advanced skills. It ...
Abstract. This paper presents an approach to the acquisition of basic robot manipulation skills, suc...
The proposed work presents a framework based on Graph Neural Networks (GNN) that abstracts the task ...
Abstract—In this paper, we present an approach that allows a robot to observe, generalize, and repro...
Mühlig M. A Whole Systems Approach to Robot Imitation Learning of Object Movement Skills. Bielefeld ...
Traditional imitation learning approaches usually collect demonstrations by teleoperation, kinesthet...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...
This paper presents the cognitive architecture Con-SCIS (conceptual space based cognitive imitation ...
Abstract- Imitation is a powerful learning tool that can be used by a robotic agent to socially lear...
Generalizable object manipulation skills are critical for intelligent and multi-functional robots to...
This project presents the design of a robot which can both imitate movement and learn them through a...
In order to interact with environments and appliances made for humans, robots should be able to mani...
<p>(a) through (f) illustrate the use of graphical models for learning state-transitions, action inf...
In recent years, the use of reinforcement learning and imitation learning to complete robot control ...
Learning by imitation represents a useful and promising alternative to program robots. The approach ...
Imitation learning has been recognized as a promising technique to teach robots advanced skills. It ...
Abstract. This paper presents an approach to the acquisition of basic robot manipulation skills, suc...
The proposed work presents a framework based on Graph Neural Networks (GNN) that abstracts the task ...
Abstract—In this paper, we present an approach that allows a robot to observe, generalize, and repro...
Mühlig M. A Whole Systems Approach to Robot Imitation Learning of Object Movement Skills. Bielefeld ...
Traditional imitation learning approaches usually collect demonstrations by teleoperation, kinesthet...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...
This paper presents the cognitive architecture Con-SCIS (conceptual space based cognitive imitation ...
Abstract- Imitation is a powerful learning tool that can be used by a robotic agent to socially lear...
Generalizable object manipulation skills are critical for intelligent and multi-functional robots to...
This project presents the design of a robot which can both imitate movement and learn them through a...
In order to interact with environments and appliances made for humans, robots should be able to mani...
<p>(a) through (f) illustrate the use of graphical models for learning state-transitions, action inf...
In recent years, the use of reinforcement learning and imitation learning to complete robot control ...
Learning by imitation represents a useful and promising alternative to program robots. The approach ...
Imitation learning has been recognized as a promising technique to teach robots advanced skills. It ...
Abstract. This paper presents an approach to the acquisition of basic robot manipulation skills, suc...