Complete discriminant evaluation and feature extraction in kernel space for face recognition

@article{Jiang2007CompleteDE,
  title={Complete discriminant evaluation and feature extraction in kernel space for face recognition},
  author={Xudong Jiang and Bappaditya Mandal and Alex ChiChung Kot},
  journal={Machine Vision and Applications},
  year={2007},
  volume={20},
  pages={35-46}
}
This work proposes a method to decompose the kernel within-class eigenspace into two subspaces: a reliable subspace spanned mainly by the facial variation and an unreliable subspace due to limited number of training samples. A weighting function is proposed to circumvent undue scaling of eigenvectors corresponding to the unreliable small and zero eigenvalues. Eigenfeatures are then extracted by the discriminant evaluation in the whole kernel space. These efforts facilitate a discriminative and… CONTINUE READING
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