Post-processing of dimensionality reduction methods for face recognition


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Abstract

Pre-processing approaches have been widely used in face recognition to enhance images. However, a notably limited amount of research has examined the use of post-processing methods. In this paper, we propose a novel post-processing framework to improve dimensionality reduction methods for robust face recognition. The proposed method does not work on the features directly; it decomposes each feature into different components using multidimensional ensemble empirical mode decomposition and later maximizes the dependency and the dispersion among classes using a Gaussian function. The performance of the proposed algorithm is demonstrated through experiments by applying several dimensionality reduction techniques on two public databases.

About the authors

A. Abbad

LIIAN, Department of Computer Science

Author for correspondence.
Email: gh.abbad@gmail.com
Morocco, Fez

Y. Douini

LIIAN, Department of Computer Science

Email: gh.abbad@gmail.com
Morocco, Fez

K. Abbad

ISA, Department of Computer Science

Email: gh.abbad@gmail.com
Morocco, Fez

H. Tairi

LIIAN, Department of Computer Science

Email: gh.abbad@gmail.com
Morocco, Fez

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