| Literature DB >> 16685992 |
Delphine Nain1, Steven Haker, Aaron Bobick, Allen R Tannenbaum.
Abstract
Shape priors attempt to represent biological variations within a population. When variations are global, Principal Component Analysis (PCA) can be used to learn major modes of variation, even from a limited training set. However, when significant local variations exist, PCA typically cannot represent such variations from a small training set. To address this issue, we present a novel algorithm that learns shape variations from data at multiple scales and locations using spherical wavelets and spectral graph partitioning. Our results show that when the training set is small, our algorithm significantly improves the approximation of shapes in a testing set over PCA, which tends to oversmooth data.Mesh:
Year: 2005 PMID: 16685992 PMCID: PMC3646522 DOI: 10.1007/11566489_57
Source DB: PubMed Journal: Med Image Comput Comput Assist Interv