Abstract

Face recognition involves matching face images with different environmental conditions. Matching face images with different environmental conditions is not a easy task. Also matching face images considering variations such as changing illumination, pose, facial expression and that with uncontrolled conditions becomes more difficult. This paper focuses on accurately recognizing face images considering all the above variations. The proposed system is based on collecting features from face images using Multiscale Local Binary pattern (MLBP) with eight orientations out of 59 crucial ones and then finding similarity using a kernel linear discriminant analysis. Literature suggested that MLBP can give up to 256 orientations for a single radius considered around a pixel and its neighborhood. The paper uses only 8 orientations for a single radius and four such radii (1, 3, 5 and 7) are considered around a single pixel with (8x4) 32 histogram features thus reducing the computational complexity. Various face image databases are considered in this paper namely, Labeled Faces in Wild (LFW), Japanese Female Facial Expression (JAFFE), AR and Asian. Results showed that the proposed system correctly identified 9 out of 10 subjects. The proposed system involves preprocessing including alignment and noise reduction using a Gaussian filter, feature extraction using MLBP based histograms and matching based on kernel linear discriminant analysis.

Highlights

  • The main function of face recognition is to identify faces from a given image or a sequence of images

  • Challenges of face recognition such as variation in pose, illumination, facial expression and somewhat occlusion in unconstrained conditions is considered in this paper

  • The experimental evaluation is done by considering the face images from various databases such as Labeled Faces in Wild as reported by Huang et al (2011) Japanese Female Face Expression by Lyons et al (1998), Asian by Jalal and Kim (2014) and AR by Martinez and Benavente (1998) are considered for evaluation

Read more

Summary

Introduction

The main function of face recognition is to identify faces from a given image or a sequence of images. There are many such systems used in security and surveillance applications. The task of face recognition is simple but becomes challenging when encountered with various challenges such as variation in illumination, pose, expression and somewhat occlusion etc. In this paper a method is proposed for matching the faces in unconstrained conditions It considers various challenges such as changing illumination, pose, facial expression and somewhat occlusion of eyeglasses by using the faces from four different databases

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call