Large Scale Face Recognition In the Wild: Technical Challenges and Research Directions

Abdul Mannan Shahid, M. Fraz, M. Shahzad
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引用次数: 2

Abstract

Face recognition (FR) is the most effective and preferable biometric technique for both verification and identification of humans as compared to iris, voice, retina eye scanning, fingerprint, gait, hand, and ear geometry. FR is the most highlighted and fast-growing research area in computer vision for the past couple of years. It is observed in the literature that most techniques don’t perform well because of unconstrained environments like occlusion, noise, position, angle of view, lighting, illumination, ageing, bad picture quality, low resolution, blurriness, and in many cases uncertainty in data. In this paper, a critical review on prior mentioned issues and their proposed solutions to resolve these issues are analyzed and presented through the state of the art techniques which has been proposed in the literature. Apart from this, it has been observed that various new techniques are applied in the form of loss function revamping, adding regularization, using transfer/reinforcement learning, and some new proposed architectures in the literature.
野外大规模人脸识别:技术挑战与研究方向
与虹膜、声音、视网膜、眼睛扫描、指纹、步态、手和耳朵几何形状相比,面部识别(FR)是验证和识别人类最有效和最可取的生物识别技术。FR是近年来计算机视觉领域中最受关注和发展最快的研究领域。在文献中观察到,大多数技术表现不佳,是因为不受约束的环境,如遮挡、噪声、位置、视角、照明、照明、老化、图像质量差、低分辨率、模糊,以及在许多情况下数据的不确定性。在本文中,对先前提到的问题及其提出的解决这些问题的解决方案进行了批判性审查,并通过文献中提出的最先进技术进行了分析和介绍。除此之外,已经观察到各种新技术以损失函数修正的形式应用,增加正则化,使用转移/强化学习,以及文献中提出的一些新架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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