Abstract

Feature extraction is the most important step that affects the recognition accuracy of face recognition. One of these features are the texture descriptors that are playing an important role as local features descriptor in many of the face recognition systems. Recently, many types of texture descriptors had been proposed and used for face recognition task. The Completed Local Ternary Pattern (CLTP) is one of the texture descriptors that has been proposed for texture image classification and had been tested for different image classification tasks. It proposed to overcome the Local Binary Pattern (LBP) drawbacks where the CLTP is more robust to noise as well as shown a good discriminative property than others. In this paper, a comprehensive study on the performance of the CLTP for face recognition task has been done. The aim of this study is to investigate and evaluate the CLTP performance using eight different face datasets and compared with the previous texture descriptors. In the experimental results, the CLTP had been shown good recognition rates and outperformed the other texture descriptors for this task. Several face datasets are used in this paper, such as Georgia Tech Face, Collection Facial Images, Caltech Pedestrian Faces, JAFFE, FEI, YALE, ORL, UMIST datasets.

Highlights

  • Now-a-days, there are several ways for identifying a person

  • The face recognition performance of Completed Local Ternary Pattern (CLTP) is get evaluated with the different standard dataset. It used to compare with Completed Local Binary Pattern (CLBP) to extract the face image and showed a higher accuracy result than CLBP

  • To check the effectiveness of the CLBP and CLTP descriptors, different datasets had been used in the experiments with different training images numbers

Read more

Summary

INTRODUCTION

Now-a-days, there are several ways for identifying a person. Much-advanced technology to recognize a person are voice recognition, fingerprint system, face recognition, and even iris pattern detection [1]. Face recognition systems can be used in different fields such as security systems, attending systems, detect the criminal person in public place and checks the criminal record of someone. It would make a huge contribution in computer vision and is a success in the technology field. We are collecting eight face datasets to evaluate the CLTP performance for face recognition. The face recognition performance of CLTP is get evaluated with the different standard dataset. It used to compare with Completed Local Binary Pattern (CLBP) to extract the face image and showed a higher accuracy result than CLBP. 122 where ic, ip, R, and P are defined in (1), while c denotes the mean value of mp in the entire image

RELATED WORK
PROPOSED SYSTEM
EXPERIMENT SETUP
EXPERIMENT RESULT
Collection Facial Images dataset
Georgia Tech Face dataset
Caltech Pedestrian Faces Dataset 1999
CONCLUSION
Findings
FEI Face dataset
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