Steffen JF, Oztop E, Ritter H. Structured Unsupervised Kernel Regression for Closed-Loop Motion Control. Presented at the 2010 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), Taipei, Taiwan.Transferring human skills to dextrous robots in an easy, fast and robust way is one of the key challenges that still have to be tackled in order to bring robots to our every-day life. However, many problems remain unsolved. In particular, researchers are seeking new paradigms along with efficient and robust task representations that facilitate adaptation to new contexts and provide a means to appropriately react to unforeseen situations. In this paper, we present a new method for robot behaviour synthesis, where intrinsic char...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
NOTWITHSTANDING the recent advancements of robotics research, nature still highly outperform robots ...
NOTWITHSTANDING the recent advancements of robotics research, nature still highly outperform robots ...
Steffen JF, Klanke S, Vijayakumar S, Ritter H. Realising Dextrous Manipulation with Structured Manif...
Abstract — Task learning from observations of non-expert human users will be a core feature of futur...
Steffen JF, Pardowitz M, Ritter H. Using Structured UKR Manifolds for Motion Classification and Segm...
Abstract — Dextrous manipulation based on techniques for non-linear dimension reduction and manifold...
We explore generic mechanisms to introduce structural hints into the method of Unsupervised Kernel ...
Dextrous manipulation based on techniques for non-linear dimension reduction and manifold learning ...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This paper introduces a machine learning based approach for closed loop kinematic control of continu...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
NOTWITHSTANDING the recent advancements of robotics research, nature still highly outperform robots ...
NOTWITHSTANDING the recent advancements of robotics research, nature still highly outperform robots ...
Steffen JF, Klanke S, Vijayakumar S, Ritter H. Realising Dextrous Manipulation with Structured Manif...
Abstract — Task learning from observations of non-expert human users will be a core feature of futur...
Steffen JF, Pardowitz M, Ritter H. Using Structured UKR Manifolds for Motion Classification and Segm...
Abstract — Dextrous manipulation based on techniques for non-linear dimension reduction and manifold...
We explore generic mechanisms to introduce structural hints into the method of Unsupervised Kernel ...
Dextrous manipulation based on techniques for non-linear dimension reduction and manifold learning ...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This paper introduces a machine learning based approach for closed loop kinematic control of continu...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
This article introduces a machine-learning-based approach for closed loop kinematic control of conti...
NOTWITHSTANDING the recent advancements of robotics research, nature still highly outperform robots ...
NOTWITHSTANDING the recent advancements of robotics research, nature still highly outperform robots ...