A Multi-View Face Detection Based on Kernel Principal Component Analysis and Kernel Support Vector Techniques

Authors

  • Muzhir Shaban Al-Ani Department of Computer Science, College of Computer, Al-Anbar University, Iraq.
  • Alaa Sulaiman Al-Waisy Department of Computer Science, College of Computer, Al-Anbar University, Iraq

DOI:

https://doi.org/10.53075/Ijmsirq/127901656500329

Keywords:

Face Detection, Face Recognition, Kernel Principal Component Analysis, Kernel Support Vector

Abstract

Detecting faces across multiple views is more challenging than in a frontal view. To address this problem, an efficient approach is presented in this paper using a kernel machine-based approach for learning such nonlinear mappings to provide effective view-based representation for multi-view face detection. In this paper Kernel Principal Component Analysis (KPCA) is used to project data into the view-subspaces then computed as view-based features. Multi-view face detection is performed by classifying each input image into the face or non-face class, by using a two-class Kernel Support Vector Classifier (KSVC). Experimental results demonstrate successful face detection over a wide range of facial variations in color, illumination conditions, position, scale, orientation, 3D pose, and expression in images from several photo collections.

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Published

2020-08-29

How to Cite

Shaban Al-Ani, M. ., & Al-Waisy, A. S. . (2020). A Multi-View Face Detection Based on Kernel Principal Component Analysis and Kernel Support Vector Techniques. Scholars Journal of Science and Technology, 1(4), 94–100. https://doi.org/10.53075/Ijmsirq/127901656500329