Making the Coupled Gaussian Process Dynamical Model Modular and Scalable with Variational Approximations

被引:4
|
作者
Velychko, Dmytro [1 ]
Knopp, Benjamin [1 ]
Endres, Dominik [1 ]
机构
[1] Univ Marburg, Dept Psychol, Gutenbergstr 18, D-35032 Marburg, Germany
关键词
Gaussian processes; variational methods; movement primitives; modularity; PRIMITIVES;
D O I
10.3390/e20100724
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
We describe a sparse, variational posterior approximation to the Coupled Gaussian Process Dynamical Model (CGPDM), which is a latent space coupled dynamical model in discrete time. The purpose of the approximation is threefold: first, to reduce training time of the model; second, to enable modular re-use of learned dynamics; and, third, to store these learned dynamics compactly. Our target applications here are human movement primitive (MP) models, where an MP is a reusable spatiotemporal component, or module of a human full-body movement. Besides re-usability of learned MPs, compactness is crucial, to allow for the storage of a large library of movements. We first derive the variational approximation, illustrate it on toy data, test its predictions against a range of other MP models and finally compare movements produced by the model against human perceptual expectations. We show that the variational CGPDM outperforms several other MP models on movement trajectory prediction. Furthermore, human observers find its movements nearly indistinguishable from replays of natural movement recordings for a very compact parameterization of the approximation.
引用
收藏
页数:25
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