| Title: | Face recognition using principal component analysis |
| Author: | |
| Document Type: | Thesis |
| Department: | Department of Computer Science |
| Degree: | Master of Science |
| Major: | Computer Science |
| Advisory Committee: |
Liu, Chengjun
Leung, Joseph Y-T.
Nakayama, Marvin K.
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| Thesis Date: | 2003, August |
| Keywords: |
Face recognition
Kernal Principal Component Analysis (KCPA)
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| Availability: | Unrestricted |
| Abstract: |
Current methods of face recognition use linear methods to extract features. This causes potentially valuable nonlinear features to be lost. Using a kernel to extract nonlinear features should lead to better feature extraction and, therefore, lower error rates. Kernel Principal Component Analysis (KPCA) will be used as the method for nonlinear feature extraction. KPCA will be compared with well known linear methods such as correlation, Eigenfaces, and Fisherfaces. |
| Complete Thesis: | njit-etd2003-093 (75 pages ~ 7,326 KB pdf) |
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Created June 22, 2004
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