Abstract

During the previous few centuries, facial recognition systems have become a popular research topic. On account of its extraordinary success and vast social applications; it has attracted significant study attention from a wide range of disciplines in the last five years - including “computer-vision”, “artificial-intelligence”, and “machine-learning”. As with most face recognition systems, the fundamental goal involves recognizing a person's identity by means of images, video, data streams, and context information. As a result of our research; we've outlined some of the most important applications, difficulties, and trends in scientific and social domains. This research, the primary goal is to summarize modern facial recognition algorithms and to gain a general perceptive of how these techniques act on diverse datasets. Aside from that, we also explore some significant problems like illumination variation, position, aging, occlusion, cosmetics, scale, and background are some of the primary challenges we examine. In addition to traditional face recognition approaches, the most recent research topics such as sparse models, deep learning, and fuzzy set theory are examined in depth. There's also a quick discussion of basic techniques, as well as a more in-depth. As a final point, this research explores the future of facial recognition technologies and their possible importance in the emerging digital society.

Highlights

  • A Survey on Classical and Modern Face Recognition TechniquesM. ShalimaSulthana1, C. Naga Raju2 1Research Scholar, Department of Computer Science and Engineering, YSR Engineering College of YVU Yogivemana University-Kadapa, Andhra Pradesh, India 2Professor, Department of Computer Science and Engineering, YSR Engineering College of YVU, Yogivemana

  • The term “Face recognition research” has become extremely popular over the last few decades and it has a wide variety of scientific, social, and business applications

  • Because much of the crucial data in a task This means it is vital to test whether or not Principal Component Analysis” [19] (PCA) generalization that takes into account high-order correlation between picture pixels, rather than only second-order associations, is beneficial for face recognition

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Summary

A Survey on Classical and Modern Face Recognition Techniques

M. ShalimaSulthana1, C. Naga Raju2 1Research Scholar, Department of Computer Science and Engineering, YSR Engineering College of YVU Yogivemana University-Kadapa, Andhra Pradesh, India 2Professor, Department of Computer Science and Engineering, YSR Engineering College of YVU, Yogivemana

INTRODUCTION
Matching Interest Points
Calculate the covariance
Compute tolerance similarity to compare test image and trained image
Findings
Conclusion
Full Text
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