Title
Principal Component Analysis Integrating Mahalanobis Distance for Face Recognition
Abstract
In machine learning and pattern recognition, principal component analysis (PCA) is a very popular feature extraction and dimensionality reduction method for improving recognition performance or computational effiency. It has been widely used in numerous applications, especially in face recognition. Researches often use PCA integrating the nearest neighbor classifier (NNC) based on Euclidean distance (ED) to classify face images. We refer to this method as PCA+ED. However, we have observed that PCA can not significantly improve the recognition performance of NNC based on Euclidean distance through many experiments. The main reason is that PCA can not significantly change the Euclidean distance between samples when many components are used in classification. In order to improve the classification performance in face recognition, we use another distance measure, i.e., Mahalanobis distance (MD), in NNC after performing PCA in this paper. This approach is referred to as PCA+MD. Several experiments show that PCA+MD can significantly improve the classification performance in face recognition.
Year
DOI
Venue
2013
10.1109/RVSP.2013.27
RVSP
Keywords
Field
DocType
face image,face recognition,pattern recognition,mahalanobis distance,dimensionality reduction method,distance measure,recognition performance,euclidean distance,computational effiency,principal component analysis integrating,classification performance,feature extraction,principal component analysis,face,classification algorithms
k-nearest neighbors algorithm,Facial recognition system,Eigenface,Dimensionality reduction,Pattern recognition,Euclidean distance,Mahalanobis distance,Speech recognition,Feature extraction,Artificial intelligence,Statistical classification,Mathematics
Conference
ISSN
Citations 
PageRank 
2376-9793
0
0.34
References 
Authors
13
5
Name
Order
Citations
PageRank
Zizhu Fan132914.61
Ming Ni213615.17
Meibo Sheng300.34
Zejiu Wu400.34
Baogen Xu512219.54