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ROMAN
2007
IEEE

Incremental on-line hierarchical clustering of whole body motion patterns

13 years 10 months ago
Incremental on-line hierarchical clustering of whole body motion patterns
Abstract— This paper describes a novel algorithm for autonomous and incremental learning of motion pattern primitives by observation of human motion. Human motion patterns are ed into a Hidden Markov Model representation, which can be used for both subsequent motion recognition and generation, analogous to the mirror neuron hypothesis in primates. As new motion patterns are observed, they are incrementally grouped together using hierarchical agglomerative clustering based on their relative distance in the HMM space. The clustering algorithm forms a tree structure, with specialized motions at the tree leaves, and generalized motions closer to the root. The generated tree structure will depend on the type of training data provided, so that the most specialized motions will be those for which the most training has been received. Tests with motion capture data for a variety of motion primitives demonstrate the efficacy of the algorithm.
Dana Kulic, Wataru Takano, Yoshihiko Nakamura
Added 04 Jun 2010
Updated 04 Jun 2010
Type Conference
Year 2007
Where roman
Authors Dana Kulic, Wataru Takano, Yoshihiko Nakamura
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