M2D-QPCA: An Improved Quaternion Principal Component Analysis Method for Color Face Recognition
Journal: Academic Journal of Applied Mathematical Sciences (Vol.6, No. 2)Publication Date: 2020-02-15
Authors : Lili Song; Kaisong Sun; Minghui Wang;
Page : 5-14
Keywords : Color face recognition; Quaternion matrix; M2D-QPCA; 2D-GQPCA.;
Abstract
Principal component analysis (PCA) is one of the successful dimensionality reduction approaches for color face recognition. For various PCA methods, the experiments show that the contribution of eigenvectors is different and different weights of eigenvectors can cause different effects. Based on this, a modified and simplified color two-dimensional quaternion principal component analysis (M2D-QPCA) method is proposed along the framework of the color two-dimensional quaternion principal component analysis (2D-QPCA) method and the improved two-dimensional quaternion principal component analysis (2D-GQPCA) method. The shortcomings of 2D-QPCA are corrected and the CPU time of 2D-GQPCA is reduced. The experiments on two real face data sets show that the accuracy of M2D-QPCA is better than that of 2D-QPCA and other PCA-like methods and the CPU time of M2D-QPCA is less than that of 2D-GQPCA.
Other Latest Articles
- Effect of Water Stress, Nitrogen and Organic Manure Fertilizer on Nitrogen Use Efficiency Indices and Grain Protein Content of Wheat in a Semi-arid Environment
- Captive Breeding, Rearing and Closing of Reproductive Cycle of the Three Spot Seahorse, Hippocampus trimaculatus (Leach, 1814)
- Capabilities of Algae to Be Utilized As a Renewable Energy Source
- Effect of Sulfur Dioxide Inhalation on Lung Microbiota in Rat Model
- Prevalence and Predictors of Malaria Among HIV Infected Subjects Attending an Antiretroviral Therapy (ART) Clinic in a Tertiary Healthcare Facility in Central Nigeria
Last modified: 2020-06-20 22:08:21