A survey of facial recognition techniques
Aya Kaysan Bahjat

TL;DR
This survey comprehensively reviews facial recognition techniques, focusing on challenging facial features and analyzing various methods and databases to provide insights into current advancements and applications.
Contribution
It offers a thorough literature review of facial recognition methods, analyzing multiple algorithms and facial image databases to highlight challenges and solutions in the field.
Findings
Analysis of various facial recognition algorithms
Evaluation of multiple facial image databases
Discussion of challenges like lighting, aging, and occlusion
Abstract
As multimedia content is quickly growing, the field of facial recognition has become one of the major research fields, particularly in the recent years. The most problematic area to researchers in image processing and computer vision is the human face which is a complex object with myriads of distinctive features that can be used to identify the face. The survey of this survey is particularly focused on most challenging facial characteristics, including differences in the light, ageing, variation in poses, partial occlusion, and facial expression and presents methodological solutions. The factors, therefore, are inevitable in the creation of effective facial recognition mechanisms used on facial images. This paper reviews the most sophisticated methods of facial detection which are Hidden Markov Models, Principal Component Analysis (PCA), Elastic Cluster Plot Matching, Support Vector…
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Taxonomy
TopicsFace and Expression Recognition · Face recognition and analysis · Emotion and Mood Recognition
