Predicting missing markers in human motion capture using l1-sparse representation
Jun Xiao, Yinfu Feng, Wenyuan Hu
In Computer Animation and Virtual Worlds, 22(2-3), 2011.
Abstract: Missing marker problem is very common in human motion capture. In contrast to most current methods which handle this problem based on trying to learn a reliable predictor from the observations, we consider it from the perspective of sparse representation and propose a novel method which is named l1-sparse representation of missing markers prediction (L1-SRMMP). We assume that the incomplete pose can be represented by a linear combination of a few poses from the training set and the representation is sparse. Therefore, we cast the predicting missing markers as finding a sparse representation of the observable data of the incomplete pose, and then we use it to predict the missing data. In order to get a sparse representation, we employ l1-norm in our objective function. Moreover, we propose presentation coefficient weighted update (PCWU) algorithm to mitigate the limited capacity problem of the training set. Experimental results demonstrate the effectiveness and efficiency of our method to predict the missing markers in human motion capture.
Keyword(s): l1-sparse representation, human motion capture, missing data prediction
Article URL: http://dx.doi.org/10.1002/cav.413
BibTeX format:
@article{Xiao:2011:PMM,
  author = {Jun Xiao and Yinfu Feng and Wenyuan Hu},
  title = {Predicting missing markers in human motion capture using l1-sparse representation},
  journal = {Computer Animation and Virtual Worlds},
  volume = {22},
  number = {2-3},
  pages = {221--228},
  year = {2011},
}
Search for more articles by Jun Xiao.
Search for more articles by Yinfu Feng.
Search for more articles by Wenyuan Hu.

Return to the search page.


graphbib: Powered by "bibsql" and "SQLite3."