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
Özet
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.
Açıklama
2010 7th National Conference on Electrical, Electronics and Computer Engineering, ELECO 2010 -- 2 December 2010 through 5 December 2010 -- Bursa -- 83834
Anahtar Kelimeler
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
Kaynak
2010 National Conference on Electrical, Electronics and Computer Engineering, ELECO 2010












