dc.contributor.advisor | Ramamoorthy, Subramanian | en |
dc.contributor.advisor | Vijayakumar, Sethu | en |
dc.contributor.author | Havoutis, Ioannis | en |
dc.date.accessioned | 2012-03-28T10:39:36Z | |
dc.date.available | 2012-03-28T10:39:36Z | |
dc.date.issued | 2012-06-25 | |
dc.identifier.uri | http://hdl.handle.net/1842/5864 | |
dc.description.abstract | We propose a novel framework for motion planning and control that is based on a
manifold encoding of the desired solution set. We present an alternate, model-free,
approach to path planning, replanning and control. Our approach is founded on the
idea of encoding the set of possible trajectories as a skill manifold, which can be learnt
from data such as from demonstration.
We describe the manifold representation of skills, a technique for learning from
data and a method for generating trajectories as geodesics on such manifolds. We
extend the trajectory generation method to handle dynamic obstacles and constraints.
We show how a state metric naturally arises from the manifold encoding and how this
can be used for reactive control in an on-line manner.
Our framework tightly integrates learning, planning and control in a computationally
efficient representation, suitable for realistic humanoid robotic tasks that are defined
by skill specifications involving high-dimensional nonlinear dynamics, kinodynamic
constraints and non-trivial cost functions, in an optimal control setting. Although,
in principle, such problems can be handled by well understood analytical
methods, it is often difficult and expensive to formulate models that enable the analytical
approach.
We test our framework with various types of robotic systems – ranging from a
3-link arm to a small humanoid robot – and show that the manifold encoding gives
significant improvements in performance without loss of accuracy. Furthermore, we
evaluate the framework against a state-of-the-art imitation learning method. We show
that our approach, by learning manifolds of robotic skills, allows for efficient planning
and replanning in changing environments, and for robust and online reactive control. | en |
dc.contributor.sponsor | Engineering and Physical Sciences Research Council (EPSRC) | en |
dc.language.iso | en | |
dc.publisher | The University of Edinburgh | en |
dc.relation.hasversion | Bitzer, S., Havoutis, I., and Vijayakumar, S. (2008). Synthesising novel movements through latent space modulation of scalable control policies. In Lecture Notes in Computer Science, pages 199–209. Springer Berlin / Heidelberg. | en |
dc.relation.hasversion | Havoutis, I. and Ramamoorthy, S. (2010a). Constrained geodesic trajectory generation on learnt skill manifolds. IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS ’10). | en |
dc.relation.hasversion | Havoutis, I. and Ramamoorthy, S. (2010b). Geodesic trajectory generation on learnt skill manifolds. International Conference on Robotics and Automation (ICRA), 2010. Proceedings 2010 IEEE. | en |
dc.relation.hasversion | Havoutis, I. and Ramamoorthy, S. (2010c). Motion synthesis through randomized exploration on submanifolds in configuration space. In Baltes, J., Lagoudakis, M., Naruse, T., and Shiry, S., editors, RoboCup 2009, volume 5949 of Lecture Notes in Artificial Intelligence, pages 92–103. Springer. | en |
dc.subject | robotics | en |
dc.subject | manifold learning | en |
dc.subject | path planning | en |
dc.subject | control | en |
dc.subject | optimization | en |
dc.title | Motion planning and reactive control on learnt skill manifolds | en |
dc.type | Thesis or Dissertation | en |
dc.type.qualificationlevel | Doctoral | en |
dc.type.qualificationname | PhD Doctor of Philosophy | en |