Statistical Assessment of the Performance of Dwt-Pca/Svd Recognition Algorithm on Reconstructed Frontal Face Images

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Date

2020-11

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Publisher

University of Ghana

Abstract

Face recognition is the second most important biometric part of the human body, apart from the biometric nger print. Detecting and measuring half face image processing or pattern recognition is a challenge in this eld. The research made use of Discrete Wavelet Transform (DWT) as the preprocessing mechanism and adopted the Principal Component Analysis and Singular Value Decomposition (PCA/SVD) for feature extraction and recognition. Numerical assessment of the performance of the adopted recognition algorithm gave average recognition rates of 95% and 75% when left and right reconstructed face images are used for recognition. Statistical analysis using the Wilcoxon Sign Rank test shows that, there is no signi cant di erence in the left and right reconstructed half face images when DWT-PCA/SVD is used for recognition. In conclusion, DWT-PCA/SVD is therefore recommend as one of the best noise viable algorithm for recognizing face images under partial occlusion.

Description

MPhil. Statistics

Keywords

Face recognition, Discrete Wavelet transform, Singular Value Decomposition, Principal Component analysis

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