We explore generic mechanisms to introduce structural hints into the method of Unsupervised Kernel Regression (UKR) in order to learn representations of data sequences in a semi-supervised way. These new extensions are targeted at representing a dextrous manipulation task. We thus evaluate the effectiveness of the proposed mechanisms on appropriate toy data that mimic the characteristics of the aimed manipulation task and thereby provide means for a systematic evaluation
Steffen JF, Haschke R, Ritter H. Towards Dextrous Manipulation Using Manifolds. In: Intelligent Rob...
Many computer vision tasks may be expressed as the problem of learning a mapping between image space...
Steffen JF. Structured manifolds for motion production and segmentation : a structured Kernel Regres...
Steffen JF, Klanke S, Vijayakumar S, Ritter H. Towards Semi-supervised Manifold Learning: UKR with S...
Steffen JF, Klanke S, Vijayakumar S, Ritter H. Realising Dextrous Manipulation with Structured Manif...
Abstract — Dextrous manipulation based on techniques for non-linear dimension reduction and manifold...
Dextrous manipulation based on techniques for non-linear dimension reduction and manifold learning ...
Klanke S. Learning manifolds with the Parametrized Self-Organizing Map and Unsupervised Kernel Regre...
Steffen JF, Oztop E, Ritter H. Structured Unsupervised Kernel Regression for Closed-Loop Motion Cont...
By utilizing the label dependencies among both the labeled and unlabeled data, semi-supervised learn...
Abstract — Task learning from observations of non-expert human users will be a core feature of futur...
We propose a unified manifold learning framework for semi-supervised and unsupervised dimension redu...
Abstract. Inmanymachine learningproblems,high-dimensionaldatasets often lie on or near manifolds of ...
Steffen JF, Pardowitz M, Ritter H. Using Structured UKR Manifolds for Motion Classification and Segm...
Klanke S, Ritter H. Variants of unsupervised kernel regression: General cost functions. Neurocomputi...
Steffen JF, Haschke R, Ritter H. Towards Dextrous Manipulation Using Manifolds. In: Intelligent Rob...
Many computer vision tasks may be expressed as the problem of learning a mapping between image space...
Steffen JF. Structured manifolds for motion production and segmentation : a structured Kernel Regres...
Steffen JF, Klanke S, Vijayakumar S, Ritter H. Towards Semi-supervised Manifold Learning: UKR with S...
Steffen JF, Klanke S, Vijayakumar S, Ritter H. Realising Dextrous Manipulation with Structured Manif...
Abstract — Dextrous manipulation based on techniques for non-linear dimension reduction and manifold...
Dextrous manipulation based on techniques for non-linear dimension reduction and manifold learning ...
Klanke S. Learning manifolds with the Parametrized Self-Organizing Map and Unsupervised Kernel Regre...
Steffen JF, Oztop E, Ritter H. Structured Unsupervised Kernel Regression for Closed-Loop Motion Cont...
By utilizing the label dependencies among both the labeled and unlabeled data, semi-supervised learn...
Abstract — Task learning from observations of non-expert human users will be a core feature of futur...
We propose a unified manifold learning framework for semi-supervised and unsupervised dimension redu...
Abstract. Inmanymachine learningproblems,high-dimensionaldatasets often lie on or near manifolds of ...
Steffen JF, Pardowitz M, Ritter H. Using Structured UKR Manifolds for Motion Classification and Segm...
Klanke S, Ritter H. Variants of unsupervised kernel regression: General cost functions. Neurocomputi...
Steffen JF, Haschke R, Ritter H. Towards Dextrous Manipulation Using Manifolds. In: Intelligent Rob...
Many computer vision tasks may be expressed as the problem of learning a mapping between image space...
Steffen JF. Structured manifolds for motion production and segmentation : a structured Kernel Regres...