Title :
Probabilistic progress prediction and sequencing of concurrent movement primitives
Author :
Simon Manschitz;Jens Kober;Michael Gienger;Jan Peters
Author_Institution :
Institute for Intelligent Autonomous Systems, Technische Universitä
fDate :
9/1/2015 12:00:00 AM
Abstract :
Classical approaches towards learning coordinated movement tasks often represent a movement in a sequential and exclusive fashion. Introducing concurrency allows to decompose such tasks into a number of separate sequences, for instance for two different end-effectors. While this results in a compact and generic representation of the individual movement primitives (MPs), it is a hard problem to learn their temporal and causal organization. This paper presents a concept for learning movement tasks that require the coordination of several controlled effectors of a robot. We firstly introduce a concept to learn and estimate the progress of individual MPs from a low number of demonstrations. Secondly, we propose a representation of the task that incorporates several concurrent sequences of MPs. Combining these two elements allows to learn and reproduce coordinated bi-manual movement tasks robustly. The synchronization of the concurrent MPs is achieved implicitly using the progress prediction. The approach is evaluated in two simulation studies with a 25 degrees of freedom two-arm robot performing a pick-and-place task.
Keywords :
"Robot kinematics","Synchronization","Concurrent computing","Dairy products","Trajectory","Couplings"
Conference_Titel :
Intelligent Robots and Systems (IROS), 2015 IEEE/RSJ International Conference on
DOI :
10.1109/IROS.2015.7353411