Research Article Open Access

FACIAL FEATURE EXTRACTION TECHNIQUES FOR FACE RECOGNITION

Rahib H. Abiyev1
  • 1 Near East University, Turkey

Abstract

Face recognition is one of the biometric techniques used for identification of humans. The design of the face recognition system includes two basic steps. The first step is the extraction of the image's features and the second one is the classification of patterns. Feature extracting is a very important step in face recognition. The recognition rate of the system depends on the meaningful data extracted from the face image. If the features belong to the different classes and the distance between these classes are bigger then these features are important for recognition of the images. In this study, the design of face recognition system using three different feature extraction techniques- Principal Component Analysis (PCA), Fisher Linear Discriminant Analysis (FLD) and Fast Pixel Based Matching (FPBM) is presented. The comparative analysis of the simulation results of these methods is presented.

Journal of Computer Science
Volume 10 No. 12, 2014, 2360-2365

DOI: https://doi.org/10.3844/jcssp.2014.2360.2365

Submitted On: 6 March 2014 Published On: 23 December 2014

How to Cite: Abiyev, R. H. (2014). FACIAL FEATURE EXTRACTION TECHNIQUES FOR FACE RECOGNITION. Journal of Computer Science, 10(12), 2360-2365. https://doi.org/10.3844/jcssp.2014.2360.2365

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Keywords

  • Face Recognition
  • PCA
  • FLD
  • Fast Pixel Based Matching