Performance animation from low-dimensional control signals
Jinxiang Chai, Jessica K. Hodgins
In ACM Transactions on Graphics, 24(3), August 2005.
Abstract: This paper introduces an approach to performance animation that employs video cameras and a small set of retro-reflective markers to create a low-cost, easy-to-use system that might someday be practical for home use. The low-dimensional control signals from the user's performance are supplemented by a database of pre-recorded human motion. At run time, the system automatically learns a series of local models from a set of motion capture examples that are a close match to the marker locations captured by the cameras. These local models are then used to reconstruct the motion of the user as a full-body animation. We demonstrate the power of this approach with real-time control of six different behaviors using two video cameras and a small set of retro-reflective markers. We compare the resulting animation to animation from commercial motion capture equipment with a full set of markers.
Keyword(s): dimensionality reduction, lazy learning, local modeling, motioncapture data, online control of human motion, performance animation,vision-based interface
@article{Chai:2005:PAF,
author = {Jinxiang Chai and Jessica K. Hodgins},
title = {Performance animation from low-dimensional control signals},
journal = {ACM Transactions on Graphics},
volume = {24},
number = {3},
pages = {686--696},
month = aug,
year = {2005},
}
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