Movement extraction by detecting dynamics switches and repetitions
Silvia Chiappa, Jan Peters
- Year
- 2010
- Citations
- 50
- Access
- Open access
Abstract
Many time-series such as human movement data consist of a sequence of basic actions, e.g., forehands and backhands in tennis. Automatically extracting and characterizing such actions is an important problem for a variety of different applications. In this paper, we present a probabilistic segmentation approach in which an observed time-series is modeled as a concatenation of segments corresponding\nto different basic actions. Each segment is generated through a noisy transformation of one of a few hidden trajectories representing different types of movement,\nwith possible time re-scaling. We analyze three different approximation methods for dealing with model intractability, and demonstrate how the proposed approach\ncan successfully segment table tennis movements recorded using a robot arm as haptic input device.
Keywords
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