Binarized Eigenphases for Limited Memory Face Recognition Applications

Authors

  • Naser G. Zaeri
  • Farzin Mokhtarian
  • Abdallah Cherri

DOI:

https://doi.org/10.2390/biecoll-icvs2007-63

Keywords:

Face recognition, limited memory, PCA, MPEG-7, DDC: 004 (Data processing, computer science, computer systems)

Abstract

Most of the algorithms proposed for face recognition involve considerable amount of calculations, and hence they can not be used on devices of limited memory constraints. In this paper, we propose a novel solution for efficient face recognition problem for the systems that utilize low memory devices. The new technique applies the principal component analysis to the binarized phase spectrum of the Fourier transform of the covariance matrix constructed from the MPEG-7 Fourier Feature Descriptor vectors of the images. The binarization step that is applied to the phases adds many interesting advantages to the system. It will be shown that the proposed technique maximizes the recognition rate while achieving substantial savings in computational time, when compared to other known systems.

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Published

2007-12-31

Issue

Section

The 5th International Conference on Computer Vision Systems