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Exemplar-based primitives for humanoid movement classification and control

Evan Drumwright, Odest Chadwicke Jenkins, Maja J. Matarić

Year
2004
Citations
43

Abstract

We present a unified methodology for humanoid robot control and activity, classification using motor primitives (Mataric, M, 2002), computationally efficient behaviors capable of perception and control. These primitives constitute a vocabulary for humanoid control capable of generating a large variety of complex movement through sequencing and superposition. We demonstrate how such primitives can be automatically derived from human motion-capture data, how they can be used to construct upperbody controllers, and how they can be applied to classification of observed humanoid behavior in real time.

Keywords

Humanoid robotComputer scienceConstruct (python library)Movement (music)Artificial intelligenceVariety (cybernetics)Motion controlMotion (physics)VocabularySuperposition principle

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