Title :
Online Segmentation and Clustering From Continuous Observation of Whole Body Motions
Author :
Kulic, Dana ; Takano, Wataru ; Nakamura, Yoshihiko
Author_Institution :
Dept. of Mechano-Inf., Univ. of Tokyo, Tokyo, Japan
Abstract :
This paper describes a novel approach for incremental learning of human motion pattern primitives through online observation of human motion. The observed time series data stream is first stochastically segmented into potential motion primitive segments, based on the assumption that data belonging to the same motion primitive will have the same underlying distribution. The motion segments are then abstracted into a stochastic model representation and automatically clustered and organized. As new motion patterns are observed, they are incrementally grouped together into a tree structure, based on their relative distance in the model space. The tree leaves, which represent the most specialized learned motion primitives, are then passed back to the segmentation algorithm so that as the number of known motion primitives increases, the accuracy of the segmentation can also be improved. The combined algorithm is tested on a sequence of continuous human motion data that are obtained through motion capture, and demonstrates the performance of the proposed approach.
Keywords :
humanoid robots; image motion analysis; image segmentation; intelligent robots; learning (artificial intelligence); pattern clustering; robot vision; stochastic processes; time series; trees (mathematics); clustering algorithm; human motion pattern primitives; humanoid robots; incremental learning; online observation; online segmentation; stochastic model representation; stochastic segmentation; time series data stream; tree structure; Humanoid robots; incremental learning; learning from observation; motion segmentation and clustering;
Journal_Title :
Robotics, IEEE Transactions on
DOI :
10.1109/TRO.2009.2026508