Synthesising Novel Movements through Latent Space Modulation of Scalable Control Policies
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Abstract
We propose a novel methodology for learning and synthesising whole
classes of high dimensional movements from a limited set of demonstrated examples
that satisfy some underlying ’latent’ low dimensional task constraints. We
employ non-linear dimensionality reduction to extract a canonical latent space
that captures some of the essential topology of the unobserved task space. In
this latent space, we identify suitable parametrisation of movements with control
policies such that they are easily modulated to generate novel movements from
the same class and are robust to perturbations. We evaluate our method on controlled
simulation experiments with simple robots (reaching and periodic movement
tasks) as well as on a data set of very high-dimensional human (punching)
movements.We verify that we can generate a continuum of new movements from
the demonstrated class from only a few examples in both robotic and human data.
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