International Journal of Soft Computing

Year: 2009
Volume: 4
Issue: 2
Page No. 103 - 108

Learning Kernel Subspace Classifier for Robust Face Recognition

Authors : Bailing Zhang , Sheng-Uei Guan and Hanseok Ko

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