This paper provides an example of the face recognition using PCA method
and effect of Graph Based segmentation algorithm on recognition rate. Principle
component analysis (PCA) is two or more
variabletechniquethatanalyzesafacedatainwhichexperiencearedescribedbyseveralinter-correlateddependentvariables.Thegoalisto
extract the important information from the face data, to represent it as a set
of new statistically independent variables called principal components. The
paper presents a proposed methodology for face recognition based on
preprocessing face images using segmentation algorithm and SIFT (Scale
Invariant Feature Transform) descriptor. The algorithm has been tested on 50
subjects (100images). The proposed method first waste stedon ESSEX face data
base and next on own segmented face data base using SIFT-PCA. The experimental
result shows that the segmentation in combination with SIFT-PCA has a positive
effect for face recognition and accelerates the recognition PCA technique. -
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