Human-robot collaboration seeks to have humans and robots closely interacting in everyday situations. For some tasks, physical contact between the user and the robot may occur, originating significant challenges at safety, cognition, perception and control levels, among others. This paper focuses on robot motion adaptation to parameters of a collaborative task, extraction of the desired robot behavior, and variable impedance control for human-safe interaction. We propose to teach a robot cooperative behaviors from demonstrations, which are probabilistically encoded by a task-parametrized formulation of a Gaussian mixture model. Such encoding is later used for specifying both the desired state of the robot, and an optimal feedback control la...
In human-robot collaborative transportation and sawing tasks, the human operator physically interact...
Human ability to coordinate one's actions with other individuals to perform a task together is fasci...
We present a framework for automatically learning human user models from joint-action demonstrations...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
One of the hallmarks of physical interaction between humans is haptic communication, i.e. an informa...
Designed to safely share the same workspace as humans and assist them in various tasks, the new coll...
Research in learning from demonstration has focused on transferring movements from humans to robots...
Human-robot synergy enables new developments in industrial and assistive robotics research. In recen...
Research in learning from demonstration has focused on transferring movements from humans to robots....
In the context of human-robot collaboration in close proximity, safety and comfort are the two impor...
One of the main challenges in Robotics is to develop robots that can interact with humans in a natur...
Abstract— This paper presents a novel human-like learning controller to interact with unknown envir...
Modern robotic systems are increasingly expected to interact with unstructured and unpredictable env...
In the last decades robots are expected to be of increasing intelligence to deal with a large range ...
Industry 4.0 is taking human-robot collaboration at the center of the production environment. Collab...
In human-robot collaborative transportation and sawing tasks, the human operator physically interact...
Human ability to coordinate one's actions with other individuals to perform a task together is fasci...
We present a framework for automatically learning human user models from joint-action demonstrations...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
One of the hallmarks of physical interaction between humans is haptic communication, i.e. an informa...
Designed to safely share the same workspace as humans and assist them in various tasks, the new coll...
Research in learning from demonstration has focused on transferring movements from humans to robots...
Human-robot synergy enables new developments in industrial and assistive robotics research. In recen...
Research in learning from demonstration has focused on transferring movements from humans to robots....
In the context of human-robot collaboration in close proximity, safety and comfort are the two impor...
One of the main challenges in Robotics is to develop robots that can interact with humans in a natur...
Abstract— This paper presents a novel human-like learning controller to interact with unknown envir...
Modern robotic systems are increasingly expected to interact with unstructured and unpredictable env...
In the last decades robots are expected to be of increasing intelligence to deal with a large range ...
Industry 4.0 is taking human-robot collaboration at the center of the production environment. Collab...
In human-robot collaborative transportation and sawing tasks, the human operator physically interact...
Human ability to coordinate one's actions with other individuals to perform a task together is fasci...
We present a framework for automatically learning human user models from joint-action demonstrations...