DocumentCode
81823
Title
Learning Regularized LDA by Clustering
Author
Yanwei Pang ; Shuang Wang ; Yuan Yuan
Author_Institution
Sch. of Electron. Inf. Eng., Tianjin Univ., Tianjin, China
Volume
25
Issue
12
fYear
2014
fDate
Dec. 2014
Firstpage
2191
Lastpage
2201
Abstract
As a supervised dimensionality reduction technique, linear discriminant analysis has a serious overfitting problem when the number of training samples per class is small. The main reason is that the between- and within-class scatter matrices computed from the limited number of training samples deviate greatly from the underlying ones. To overcome the problem without increasing the number of training samples, we propose making use of the structure of the given training data to regularize the between- and within-class scatter matrices by between- and within-cluster scatter matrices, respectively, and simultaneously. The within- and between-cluster matrices are computed from unsupervised clustered data. The within-cluster scatter matrix contributes to encoding the possible variations in intraclasses and the between-cluster scatter matrix is useful for separating extra classes. The contributions are inversely proportional to the number of training samples per class. The advantages of the proposed method become more remarkable as the number of training samples per class decreases. Experimental results on the AR and Feret face databases demonstrate the effectiveness of the proposed method.
Keywords
face recognition; learning (artificial intelligence); matrix algebra; pattern clustering; statistical analysis; AR face database; Feret face database; between-class scatter matrix; linear discriminant analysis; pattern clustering; regularized LDA learning; supervised dimensionality reduction technique; within-class scatter matrix; Databases; Face; Face recognition; Silicon; Standards; Training; Vectors; Dimensionality reduction; face recognition; feature extraction; linear discriminant analysis (LDA); linear discriminant analysis (LDA).;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2014.2306844
Filename
6799229
Link To Document