Masked Face Recognition with 3D Facial Geometric Attributes

Yuan Wang, Zhen Yang, Zhiqiang Zhang, Huaijuan Zang, Qiang Zhu, Shu Zhan
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引用次数: 1

Abstract

During the coronavirus pandemic, the demand for contactless biometrics technology has promoted the development of masked face recognition. Training a masked face recognition model needs to address two crucial issues: a lack of large-scale realistic masked face datasets and the difficulty of obtaining robust face representations due to the huge difference between complete faces and masked faces. To tackle with the first issue, this paper proposes to train a 3D masked face recognition network with non-masked face images. For the second issue, this paper utilizes the geometric features of 3D face, namely depth, azimuth, and elevation, to represent the face. The inherent advantages of 3D face enhance the stability and practicability of 3D masked face recognition network. In addition, a facial geometry extractor is proposed to highlight discriminative facial geometric features so that the 3D masked face recognition network can take full advantage of the depth, azimuth and elevation information in distinguishing face identities. The experimental results on four public 3D face datasets show that the proposed 3D masked face recognition network improves the accuracy of the masked face recognition, which verifies the feasibility of training the masked face recognition model with non-masked face images.
基于三维人脸几何属性的蒙面人脸识别
在新冠肺炎疫情期间,对非接触式生物识别技术的需求推动了蒙面人脸识别的发展。训练一个被蒙面人脸识别模型需要解决两个关键问题:缺乏大规模的逼真的被蒙面人脸数据集,以及由于完整人脸和被蒙面人脸之间的巨大差异而难以获得鲁棒的人脸表征。为了解决第一个问题,本文提出用非被遮挡的人脸图像训练三维被遮挡人脸识别网络。第二个问题,本文利用三维人脸的几何特征,即深度、方位角和高程来表示人脸。三维人脸的固有优势增强了三维掩模人脸识别网络的稳定性和实用性。此外,提出了一种人脸几何提取器来突出识别人脸的几何特征,使三维掩模人脸识别网络能够充分利用深度、方位角和高程信息来识别人脸身份。在4个公开的三维人脸数据集上的实验结果表明,所提出的三维掩模人脸识别网络提高了掩模人脸识别的准确率,验证了用非掩模人脸图像训练掩模人脸识别模型的可行性。
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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