Hindemith L, Bruns O, Noller AM, Hemion N, Schneider S, Vollmer A-L. Interactive Robot Task Learning: Human Teaching Proficiency with Different Feedback Approaches. IEEE Transactions on Cognitive and Developmental Systems. 2022:1-1.The deployment of versatile robot systems in diverse environments requires intuitive approaches for humans to flexibly teach them new skills. In our present work, we investigate different user feedback types to teach a real robot a new movement skill. We compare feedback as star ratings on an absolute scale for single roll-outs versus preference-based feedback for pairwise comparisons with respective optimization algorithms (i.e., a variation of co-variance matrix adaptation -evolution strategy (CMA-ES) and rando...
Abstract In this paper, we present a human-robot teaching framework that uses “vir-tual ” games as a...
Though demonstration-based approaches have been successfully applied to learning a variety of robot ...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...
Enabling users to teach their robots new tasks at home is a major challenge for research in personal...
<p>Enabling users to teach their robots new tasks at home is a major challenge for research in perso...
Subjective appreciation and performance evaluation of a robot by users are two important dimensions ...
Subjective appreciation and performance evaluation of a robot by users are two important dimensions ...
Generalizing the operation of robots in dynamical environments regardless of the task complexity is ...
Humans can leverage physical interaction to teach robot arms. This physical interaction takes multip...
Subjective appreciation and performance evaluation of a robot by users are two important dimensions...
Robots are extending their presence in domestic environments every day, it being more common to see ...
Vollmer A-L, Hemion NJ. A User Study on Robot Skill Learning Without a Cost Function: Optimization o...
The ability to learn new tasks by sequencing already known skills is an important requirement for fu...
Abstract — In order to be useful in real-world situations, it is critical to allow non-technical use...
Though demonstration-based approaches have been successfully applied to learning a variety of robot ...
Abstract In this paper, we present a human-robot teaching framework that uses “vir-tual ” games as a...
Though demonstration-based approaches have been successfully applied to learning a variety of robot ...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...
Enabling users to teach their robots new tasks at home is a major challenge for research in personal...
<p>Enabling users to teach their robots new tasks at home is a major challenge for research in perso...
Subjective appreciation and performance evaluation of a robot by users are two important dimensions ...
Subjective appreciation and performance evaluation of a robot by users are two important dimensions ...
Generalizing the operation of robots in dynamical environments regardless of the task complexity is ...
Humans can leverage physical interaction to teach robot arms. This physical interaction takes multip...
Subjective appreciation and performance evaluation of a robot by users are two important dimensions...
Robots are extending their presence in domestic environments every day, it being more common to see ...
Vollmer A-L, Hemion NJ. A User Study on Robot Skill Learning Without a Cost Function: Optimization o...
The ability to learn new tasks by sequencing already known skills is an important requirement for fu...
Abstract — In order to be useful in real-world situations, it is critical to allow non-technical use...
Though demonstration-based approaches have been successfully applied to learning a variety of robot ...
Abstract In this paper, we present a human-robot teaching framework that uses “vir-tual ” games as a...
Though demonstration-based approaches have been successfully applied to learning a variety of robot ...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...