抽象的

Higher Dimensional Vector Space Component Analysis Technique for Face Recognition - A Review

Harmeet Kaur, Ravimohan, Divyanshu Rao

Face recognition is one of the most challenging areas in the field of computer vision. In this thesis, a photometric (view based) approach is used for face recognition and gender classification. There exist several algorithms to extract features such as Principal Component Analysis (PCA), Fisher Linear Discriminate Analysis (FLDA), Image principal component analysis (IPCA), and various others. Higher Dimensional Vector Space Component Analysis Techniques for Face Recognition is used for the dimensional reduction and for the feature extraction. Two face databases are taken in which one database contains the face images of male and one contains face images of females. On the basis of Euclidean Distance classification of the gender is done. Comparison between Euclidean Distance and Mahalanobis Distance for face recognition is also done with different number of test image.

免责声明: 此摘要通过人工智能工具翻译,尚未经过审核或验证