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research
Statistical Shape Analysis using Kernel PCA
Authors
AD Roy
F Lee
+16 more
G Jasso
GJ Borjas
GS Maddala
Herbert Brücker
J Schwarze
JJ Heckman
JJ Heckman
JR Harris
L Sjaastad
MC Burda
MC Burda
Parvati Trübswetter
R Willis
RA Nakosteen
S Goldfeld
WH Greene
Publication date
1 January 2006
Publisher
Society of Photo-Optical Instrumentation Engineers
Doi
Cite
Abstract
©2006 SPIE--The International Society for Optical Engineering. One print or electronic copy may be made for personal use only. Systematic reproduction and distribution, duplication of any material in this paper for a fee or for commercial purposes, or modification of the content of the paper are prohibited. The electronic version of this article is the complete one and can be found online at: http://dx.doi.org/10.1117/12.641417DOI:10.1117/12.641417Presented at Image Processing Algorithms and Systems, Neural Networks, and Machine Learning, 16-18 January 2006, San Jose, California, USA.Mercer kernels are used for a wide range of image and signal processing tasks like de-noising, clustering, discriminant analysis etc. These algorithms construct their solutions in terms of the expansions in a high-dimensional feature space F. However, many applications like kernel PCA (principal component analysis) can be used more effectively if a pre-image of the projection in the feature space is available. In this paper, we propose a novel method to reconstruct a unique approximate pre-image of a feature vector and apply it for statistical shape analysis. We provide some experimental results to demonstrate the advantages of kernel PCA over linear PCA for shape learning, which include, but are not limited to, ability to learn and distinguish multiple geometries of shapes and robustness to occlusions
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