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Kim, Kwang In
Machine Learning and Vision Lab.
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Local high-order regularization on data manifolds

Author(s)
Kim, Kwang InTompkin, JamesPfister, HanspeterTheobalt, Christian
Issued Date
2015-06-07
DOI
10.1109/CVPR.2015.7299186
URI
https://scholarworks.unist.ac.kr/handle/201301/32622
Fulltext
https://ieeexplore.ieee.org/document/7299186
Citation
IEEE Conference on Computer Vision and Pattern Recognition, pp.5473 - 5481
Abstract
The common graph Laplacian regularizer is well-established in semi-supervised learning and spectral dimensionality reduction. However, as a first-order regularizer, it can lead to degenerate functions in high-dimensional manifolds. The iterated graph Laplacian enables high-order regularization, but it has a high computational complexity and so cannot be applied to large problems. We introduce a new regularizer which is globally high order and so does not suffer from the degeneracy of the graph Laplacian regularizer, but is also sparse for efficient computation in semi-supervised learning applications. We reduce computational complexity by building a local first-order approximation of the manifold as a surrogate geometry, and construct our high-order regularizer based on local derivative evaluations therein. Experiments on human body shape and pose analysis demonstrate the effectiveness and efficiency of our method. © 2015 IEEE.
Publisher
IEEE Computer Society
ISSN
1063-6919

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