Recognition performance analysis of subpattern-based principal component analysis for different image partition dimensions and different prerocessing methods

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info:eu-repo/semantics/closedAccess

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Principal Component Analysis (PCA), as one of the most used method in face recognition applications,is an analysis method aimed at representation of the multivariate data structural. The PCA method, is a linear transformation which maps the high correlated multivariate data to a new coordinate system where the data is uncorrelated. In this paper as a kind of the traditional PCA method called Subpattern-based PCA method's recognition performance is evaluated under different partition dimensions of face images and for different preprocessing methods. In the experimental studies ORL is used as database.

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2010 7th National Conference on Electrical, Electronics and Computer Engineering, ELECO 2010 -- 2 December 2010 through 5 December 2010 -- Bursa -- 83834

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Electrical Engineering, Face Recognition, Linear Transformations, Metadata, Analysis Method, Co-Ordinate System, Experimental Studies, Face Images, Image Partition, Multivariate Data, PCA Method, Pre-Processing Method, Recognition Performance, Principal Component Analysis

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2010 National Conference on Electrical, Electronics and Computer Engineering, ELECO 2010

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