Title of article :
Locality Regularization Embedding for face verification
Author/Authors :
Pang، نويسنده , , Ying Han and Teoh، نويسنده , , Andrew Beng Jin and Hiew، نويسنده , , Fu San، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2015
Abstract :
Graph embedding (GE) is a unified framework for dimensionality reduction techniques. GE attempts to maximally preserve data locality after embedding for face representation and classification. However, estimation of true data locality could be severely biased due to limited number of training samples, which trigger overfitting problem. In this paper, a graph embedding regularization technique is proposed to remedy this problem. The regularization model, dubbed as Locality Regularization Embedding (LRE), adopts local Laplacian matrix to restore true data locality. Based on LRE model, three dimensionality reduction techniques are proposed. Experimental results on five public benchmark face datasets such as CMU PIE, FERET, ORL, Yale and FRGC, along with Nemenyi Post-hoc statistical of significant test attest the promising performance of the proposed techniques.
Keywords :
Data locality preserving , Local Laplacian matrix , Face recognition , graph embedding , regularization
Journal title :
PATTERN RECOGNITION
Journal title :
PATTERN RECOGNITION