Search Results for author: Alexandros Paraschos

Found 5 papers, 0 papers with code

The Shortcomings of Force-from-Motion in Robot Learning

no code implementations3 Jul 2024 Elie Aljalbout, Felix Frank, Patrick van der Smagt, Alexandros Paraschos

Robotic manipulation requires accurate motion and physical interaction control.

Constrained Probabilistic Movement Primitives for Robot Trajectory Adaptation

no code implementations29 Jan 2021 Felix Frank, Alexandros Paraschos, Patrick van der Smagt, Botond Cseke

We unify previous adaptation techniques, for example, various types of obstacle avoidance, via-points, mutual avoidance, in one single framework and combine them to solve complex robotic problems.

Robotics

Fast Approximate Geodesics for Deep Generative Models

no code implementations19 Dec 2018 Nutan Chen, Francesco Ferroni, Alexej Klushyn, Alexandros Paraschos, Justin Bayer, Patrick van der Smagt

The length of the geodesic between two data points along a Riemannian manifold, induced by a deep generative model, yields a principled measure of similarity.

Active Learning based on Data Uncertainty and Model Sensitivity

no code implementations6 Aug 2018 Nutan Chen, Alexej Klushyn, Alexandros Paraschos, Djalel Benbouzid, Patrick van der Smagt

It relies on the Jacobian of the likelihood to detect non-smooth transitions in the latent space, i. e., transitions that lead to abrupt changes in the movement of the robot.

Active Learning Metric Learning

Probabilistic Movement Primitives

no code implementations NeurIPS 2013 Alexandros Paraschos, Christian Daniel, Jan R. Peters, Gerhard Neumann

In order to use such a trajectory distribution for robot movement control, we analytically derive a stochastic feedback controller which reproduces the given trajectory distribution.

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