Incremental Learning of Full-Pose Via-Point Movement Primitives on Riemannian Manifolds
Movement primitives (MPs) are compact representations of robot skills that can be learned from demonstrations and combined into complex behaviors. However, merely equipping robots with a fixed set of innate MPs is insufficient to deploy them in dynamic and unpredictable environments. Instead, the fu...
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Zusammenfassung: | Movement primitives (MPs) are compact representations of robot skills that
can be learned from demonstrations and combined into complex behaviors.
However, merely equipping robots with a fixed set of innate MPs is insufficient
to deploy them in dynamic and unpredictable environments. Instead, the full
potential of MPs remains to be attained via adaptable, large-scale MP
libraries. In this paper, we propose a set of seven fundamental operations to
incrementally learn, improve, and re-organize MP libraries. To showcase their
applicability, we provide explicit formulations of the spatial operations for
libraries composed of Via-Point Movement Primitives (VMPs). By building on
Riemannian manifold theory, our approach enables the incremental learning of
all parameters of position and orientation VMPs within a library. Moreover, our
approach stores a fixed number of parameters, thus complying with the essential
principles of incremental learning. We evaluate our approach to incrementally
learn a VMP library from motion capture data provided sequentially. |
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DOI: | 10.48550/arxiv.2312.08030 |