Learning motor skills from multiple demonstrations presents a number of challenges. One of those challenges is the occurrence of occlusions and lack of sensor coverage, which may corrupt part of the recorded data. Another issue is the variability in speed of execution of the demonstrations, which may require a way of finding the correspondence between the time steps of the different demonstrations. In this paper, an approach to learn motor skills is proposed that accounts both for spatial and temporal variability of movements. This approach, based on an Expectation-Maximization algorithm to learn Probabilistic Movement Primitives, also allows for learning motor skills from partially observed demonstrations, which may result from...
Learning motions from human demonstrations provides an intuitive way for non-expert users to teach t...
Motor Primitives (MPs) are a promising approach for the data-driven acquisition as well as for the ...
Movement primitives are concise movement representations that can be learned from human demonstratio...
Abstract—The task of physically assisting humans requires from robots the ability to adapt in many d...
Commanding an autonomous system through complex motions at a low level can be tedious or impractical...
We often establish contact with our environment at non-zero speed. Grabbing and pushing objects with...
Robots excel in manufacturing facilities because the tasks are repetitive and do not change. However...
International audienceRobots that can learn over time by interacting with non-technical users must b...
Dynamic Movement Primitives (DMPs) are a common method for learning a control policy for a task from...
Movement primitives are a well-established approach for encoding and executing movements. While the ...
We propose to build a system able to learn motor primitives from simultaneous demonstrations of seve...
A large body of research work has been done to enable robots to learn motor skills from human demons...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
Movement primitives are a well established approach for encoding and executing robot movements. Whi...
Humans have a remarkable way of learning, adapting and mastering new manipulation tasks. With the cu...
Learning motions from human demonstrations provides an intuitive way for non-expert users to teach t...
Motor Primitives (MPs) are a promising approach for the data-driven acquisition as well as for the ...
Movement primitives are concise movement representations that can be learned from human demonstratio...
Abstract—The task of physically assisting humans requires from robots the ability to adapt in many d...
Commanding an autonomous system through complex motions at a low level can be tedious or impractical...
We often establish contact with our environment at non-zero speed. Grabbing and pushing objects with...
Robots excel in manufacturing facilities because the tasks are repetitive and do not change. However...
International audienceRobots that can learn over time by interacting with non-technical users must b...
Dynamic Movement Primitives (DMPs) are a common method for learning a control policy for a task from...
Movement primitives are a well-established approach for encoding and executing movements. While the ...
We propose to build a system able to learn motor primitives from simultaneous demonstrations of seve...
A large body of research work has been done to enable robots to learn motor skills from human demons...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
Movement primitives are a well established approach for encoding and executing robot movements. Whi...
Humans have a remarkable way of learning, adapting and mastering new manipulation tasks. With the cu...
Learning motions from human demonstrations provides an intuitive way for non-expert users to teach t...
Motor Primitives (MPs) are a promising approach for the data-driven acquisition as well as for the ...
Movement primitives are concise movement representations that can be learned from human demonstratio...