Feature Extraction for Face Image Retrieval

The aim of this paper is to examine the Eigenpaxel and commonly used Gabor wavelet filter in terms of distinguishing capability and robustness with respect to 12 types of variation of a neutral expression frontal face image for retrieval.

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