Abstract

Feature extracting and training module can be done by using face recognition neural learning techniques. Moreover, these techniques are widely employed to extract features from human images. Some detection systems are capable to scan the full body, iris detection, and finger print detection systems. These systems have deployed for safety and security intension. In this research work, we compare different machine learning algorithms for face recognition. Four supervised face recognition machine-learning classifiers such as Principal Component Analysis (PCA), 1-nearest neighbor (1-NN), Linear Discriminant Analysis (LDA), and Support Vector Machine (SVM) are considered. The efficiency of multiple classification systems is also demonstrated and tested in terms of their ability to identify a face correctly. Face Recognition is a technique to identify faces of people whose images are stored in some databases and available in the form of datasets. Extensive experiments conducted on these datasets. The comparative analysis clearly shows that which machine-learning algorithm is the best in terms of accuracy of image detection. Despite the fact, other identification methods are also very effective; face recognition has remained a major focus of research due to its non-meddling nature and being the easy method of personal identification for people. The findings of this work would be useful identification of a suitable machine-learning algorithm in order to achieve better face recognition accuracy.

Highlights

  • Detection of face is assumed to be an active research area to spanning few rules i.e. picture processing, pattern identification, computer vision, subjective science, psychology & physiology and neuro science [1]

  • The question of facial popularity is often confused with the issue of facial recognition, it is important to decide whether the "face" is known to use the facial database as a way to verify the face of this entry

  • Photos were taken at different times, the light being slightly different, facial expressions and face details all against the dark

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Summary

A Comparative Analysis Using Different Machine Learning

Muhammad Shakeel Faridi, Muhammad Azam Zia, Zahid Javed, Imran Mumtaz, and Saqib Ali. Abstract—Feature extracting and training module can be done by using face recognition neural learning techniques. Abstract—Feature extracting and training module can be done by using face recognition neural learning techniques These techniques are widely employed to extract features from human images. We compare different machine learning algorithms for face recognition. Face Recognition is a technique to identify faces of people whose images are stored in some databases and available in the form of datasets. The comparative analysis clearly shows that which machine-learning algorithm is the best in terms of accuracy of image detection. The findings of this work would be useful identification of a suitable machine-learning algorithm in order to achieve better face recognition accuracy

INTRODUCTION
LITERATURE OVERVIEW
Face Recognition Approaches
Eigenspaces
PROPOSED WORK
A Step by Step PCA Clarification
RESULT
CONCLUSION
Findings
CONFLICT OF INTEREST
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