Recent Advances in Deep Learning Techniques for Face Recognition

In recent years, researchers have proposed many deep learning (DL) methods for various tasks, and particularly face recognition (FR) made an enormous leap using these techniques. Deep FR systems benefit from the hierarchical architecture of the DL methods to learn discriminative face representation....

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Veröffentlicht in:arXiv.org 2021-07
Hauptverfasser: Md Tahmid Hasan Fuad, Awal Ahmed Fime, Sikder, Delowar, Md Akil Raihan Iftee, Jakaria Rabbi, Al-rakhami, Mabrook S, Gumae, Abdu, Sen, Ovishake, Mohtasim Fuad, Islam, Md Nazrul
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creator Md Tahmid Hasan Fuad
Awal Ahmed Fime
Sikder, Delowar
Md Akil Raihan Iftee
Jakaria Rabbi
Al-rakhami, Mabrook S
Gumae, Abdu
Sen, Ovishake
Mohtasim Fuad
Islam, Md Nazrul
description In recent years, researchers have proposed many deep learning (DL) methods for various tasks, and particularly face recognition (FR) made an enormous leap using these techniques. Deep FR systems benefit from the hierarchical architecture of the DL methods to learn discriminative face representation. Therefore, DL techniques significantly improve state-of-the-art performance on FR systems and encourage diverse and efficient real-world applications. In this paper, we present a comprehensive analysis of various FR systems that leverage the different types of DL techniques, and for the study, we summarize 168 recent contributions from this area. We discuss the papers related to different algorithms, architectures, loss functions, activation functions, datasets, challenges, improvement ideas, current and future trends of DL-based FR systems. We provide a detailed discussion of various DL methods to understand the current state-of-the-art, and then we discuss various activation and loss functions for the methods. Additionally, we summarize different datasets used widely for FR tasks and discuss challenges related to illumination, expression, pose variations, and occlusion. Finally, we discuss improvement ideas, current and future trends of FR tasks.
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subjects Algorithms
Computer Science - Artificial Intelligence
Computer Science - Computer Vision and Pattern Recognition
Computer Science - Learning
Datasets
Deep learning
Face recognition
Machine learning
Occlusion
Trends
title Recent Advances in Deep Learning Techniques for Face Recognition
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