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PCA in Autocorrelation Space
Quebec City, QC, Canada August 11-August 15
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICPR.2002.104825516th International Conference on Patt ...
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Vlad Popovici, Swiss Federal Institute of Technology
Jean-Philippe Thiran, Swiss Federal Institute of Technology

The use of higher order autocorrelations as features for pattern classification has been usually restricted to second or third orders due to high computational costs. Since the autocorrelation space is a high dimensional space we are interested in reducing the dimensionality of feature vectors for the benefit of pattern classification task.

An established technique is Principal Component Analysis (PCA) which, however, cannot be applied directly in the autocorrelation space. In this paper we develop a new method for performing PCA in autocorrelation space, without explicitly computing the autocorrelations. The connections with the nonlinear PCA and possible extensions are also discussed.

Citation:
Vlad Popovici, Jean-Philippe Thiran, "PCA in Autocorrelation Space," icpr, vol. 2, pp.20132, 16th International Conference on Pattern Recognition (ICPR'02) - Volume 2, 2002
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