Published July 2, 2018 | Version v1
Journal article Open

A Novel Face Recognition Algorithm Using Gabor-based KPCA

  • 1. MLR Institute of Technology, India
  • 2. Institute of Aeronautical Engineering, India
  • 3. Vardhaman College of Engineering, India

Description

The Gabor wavelets are used to extract facial features, and then a doubly nonlinear mapping kernel PCA (DKPCA) is proposed to perform feature transformation and face recognition. The conventional kernel PCA nonlinearly maps an input image into a high-dimensional feature space in order to make the mapped features linearly separable. However, this method does not consider the structural characteristics of the face images, and it is difficult to determine which nonlinear mapping is more effective for face recognition. In this work, a new method of nonlinear mapping, which is performed in the original feature space, is defined. The proposed nonlinear mapping not only considers the statistical properties of the input features, but also adopts an Eigen mask to emphasize those important facial feature points The proposed algorithm is evaluated based on the Yale database, the AR database, the ORL database and the YaleB database.

Files

17884-37653-2-PB.pdf

Files (317.6 kB)

Name Size Download all
md5:8445b2273aeab71c221d6a7e3fc5db47
317.6 kB Preview Download