Abstract:
This thesis presents age classification on facial images using Local Binary Patterns
(LBP) and modular Principal Component Analysis (mPCA) as subpattern-based
approaches and holistic Principal Component Analysis (PCA) and holistic subspace
Linear Discriminant Analysis (ssLDA) methods. Classification of age intervals are
conducted separately on female and male facial images since the aging process for
female and male is different for human beings in real life. The age classification
performance of the holistic approaches is compared with the performance of
subpattern-based LBP and mPCA approaches in order to demonstrate the
performance differences between these two types of approaches. Our work has been
tested on two aging databases namely FGNET and MORPH. The experiments are
performed on these aging databases to demonstrate the age classification
performance on female and male facial images of human beings using subpatternbased
LBP method with several parameter settings. The results are then compared
with the results of age classification using mPCA method, holistic PCA and subspace
LDA methods.
Description:
Master of Science in Computer Engineering. Thesis (M.S.)--Eastern Mediterranean University, Faculty of Engineering, Dept. of Computer Engineering, 2011. Supervisor: Assist. Prof. Dr. Önsen Toygar.