Masked Faces Classification using Deep Convolutional Neural Network with VGG-16 Architecture

Oladapo Tolulope Ibitoye, Oluwafunso Oluwole Osaloni
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Abstract

Recent years have seen a significant increase in attention given to object detection techniques, particularly in the field of face mask detection, classification, and masked face recognition. Due to the contact-based nature of other biometric methods and the possible outbreak of a pandemic, facial biometrics is now the most secure option for authentication and access management. Experts have advised that adequate preparation must be made to tackle any occurrence of another respiratory-related pandemic in the future. One of the areas worthy of seeking and securing absolute technological breakthroughs is the aspect of face mask detection and classification. The current face mask detection and identification technologies were created using the principles of fair-skinned individuals. This study was carried out with a view to improving the existing systems to perform brilliantly in real- time on dark-skinned faces using a convolutional neural network with VGG-16 architecture. The system was evaluated, and the results show a better performance.
基于VGG-16结构的深度卷积神经网络蒙面分类
近年来,人们对目标检测技术的关注显著增加,特别是在人脸检测、分类和蒙面人脸识别领域。由于其他生物识别方法基于接触的性质以及可能爆发的大流行,面部生物识别技术现在是身份验证和访问管理中最安全的选择。专家建议,必须做好充分准备,以应对未来发生的任何与呼吸道有关的大流行。值得寻求和确保绝对技术突破的领域之一是口罩检测和分类方面。目前的口罩检测和识别技术是根据皮肤白皙的人的原则创建的。利用VGG-16结构的卷积神经网络,对现有系统进行改进,使其在深色皮肤的人脸上实时表现出色。对该系统进行了评估,结果表明该系统具有较好的性能。
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