Masked Face Recognition Dataset and Application

Zhongyuan Wang;Baojin Huang;Guangcheng Wang;Peng Yi;Kui Jiang
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引用次数: 19

Abstract

During COVID-19 coronavirus epidemic, almost everyone wears a mask to prevent the spread of virus. It raises a problem that the traditional face recognition model basically fails in the scene of face-based identity verification, such as security check, community visit check-in, etc. Therefore, it is imminent to boost the performance of masked face recognition. Most recent advanced face recognition methods are based on deep learning, which heavily depends on a large number of training samples. However, there are presently no publicly available masked face recognition datasets, especially real ones. To this end, this work proposes three types of masked face datasets, including Masked Face Detection Dataset (MFDD), Real-world Masked Face Recognition Dataset (RMFRD) and Synthetic Masked Face Recognition Dataset (SMFRD). Besides, we conduct benchmark experiments on these three datasets for reference. As far as we know, we are the first to publicly release large-scale masked face recognition datasets that can be downloaded for free at https://github.com/X-zhangyang/Real-World-Masked-Face-Dataset .
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蒙面人脸识别数据集及其应用
在2019冠状病毒病流行期间,几乎每个人都戴着口罩,以防止病毒的传播。这就提出了传统的人脸识别模型在基于人脸的身份验证场景中基本失效的问题,如安全检查、社区访问签到等。因此,提高蒙面人脸识别的性能迫在眉睫。目前大多数先进的人脸识别方法都是基于深度学习的,而深度学习在很大程度上依赖于大量的训练样本。然而,目前还没有公开可用的人脸识别数据集,特别是真实的人脸识别数据集。为此,本工作提出了三种类型的被屏蔽人脸数据集,包括被屏蔽人脸检测数据集(MFDD)、真实世界被屏蔽人脸识别数据集(RMFRD)和合成被屏蔽人脸识别数据集(SMFRD)。此外,我们还对这三个数据集进行了基准实验,以供参考。据我们所知,我们是第一个公开发布大规模蒙面人脸识别数据集的,这些数据集可以在https://github.com/X-zhangyang/Real-World-Masked-Face-Dataset上免费下载。
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2024 Index IEEE Transactions on Biometrics, Behavior, and Identity Science Vol. 6 Table of Contents IEEE T-BIOM Editorial Board Changes IEEE Transactions on Biometrics, Behavior, and Identity Science Cutting-Edge Biometrics Research: Selected Best Papers From IJCB 2023
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