Title of article :
Random Sampling for Subspace Face Recognition
Author/Authors :
XIAOGANG WANG AND XIAOOU TANG، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Subspace face recognition often suffers from two problems: (1) the training sample set is small compared
with the high dimensional feature vector; (2) the performance is sensitive to the subspace dimension. Instead of
pursuing a single optimal subspace, we develop an ensemble learning framework based on random sampling on
all three key components of a classification system: the feature space, training samples, and subspace parameters.
Fisherface and Null SpaceLDA(N-LDA) are two conventional approaches to address the small sample size problem.
But in many cases, these LDA classifiers are overfitted to the training set and discard some useful discriminative
information. By analyzing different overfitting problems for the two kinds of LDA classifiers, we use random
subspace and bagging to improve them respectively. By random sampling on feature vectors and training samples,
multiple stabilized Fisherface and N-LDAclassifiers are constructed and the two groups of complementary classifiers
are integrated using a fusion rule, so nearly all the discriminative information is preserved. In addition, we further
apply random sampling on parameter selection in order to overcome the difficulty of selecting optimal parameters
in our algorithms. Then, we use the developed random sampling framework for the integration of multiple features.
A robust random sampling face recognition system integrating shape, texture, and Gabor responses is finally
constructed
Keywords :
LDA , Face recognition , Subspace analysis , random subspace method , Bagging
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION