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Understanding Purposeful Human Motion
Grenoble, France9 March 26-March 30
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/AFGR.2000.840662Fourth IEEE International Conference ...
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Christopher R. Wren, Massachusetts Institute of Technology
Brian P. Clarkson, Massachusetts Institute of Technology
Alex P. Pentland, Massachusetts Institute of Technology
Human motion can be understood on many levels. The most basic level is the notion that humans are collections of things that have predictable visual appearance. Next is the notion that humans exist in a physical universe, as a consequence of this, a large part of human motion can be modeled and predicted with the laws of physics. Finally there is the notion that humans utilize muscles to actively shape purposeful motion. We employ a recursive framework for real-time, the tracking of human motion that enables pixel-level, probabilistic processes to take advantage of the contextual knowledge encoded in the higher-level models, including models of dynamic constraints on human motion. We will show that models of purposeful action arise naturally from this framework, and further, that those models can be used to improve the perception of human motion. Results are shown that demonstrate automatic discovery of features in this new feature space.
Index Terms:
dynamic body tracking, innovations features, automatic gesture alphabet
Citation:
Christopher R. Wren, Brian P. Clarkson, Alex P. Pentland, "Understanding Purposeful Human Motion," fg, pp.378, Fourth IEEE International Conference on Automatic Face and Gesture Recognition (FG'00), 2000
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