Lai Zhimao, Guo Yang, Hu Yongjian, Su Wenkang, Feng Renhai
School of Immigration Administration (Guangzhou), China People's Police University, Guangzhou 510663, China.
School of Automation, Guangdong University and Technology, Guangzhou 510006, China.
Sensors (Basel). 2024 Dec 18;24(24):8075. doi: 10.3390/s24248075.
Makeup modifies facial textures and colors, impacting the precision of face anti-spoofing systems. Many individuals opt for light makeup in their daily lives, which generally does not hinder face identity recognition. However, current research in face anti-spoofing often neglects the influence of light makeup on facial feature recognition, notably the absence of publicly accessible datasets featuring light makeup faces. If these instances are incorrectly flagged as fraudulent by face anti-spoofing systems, it could lead to user inconvenience. In response, we develop a face anti-spoofing database that includes light makeup faces and establishes a criterion for determining light makeup to select appropriate data. Building on this foundation, we assess multiple established face anti-spoofing algorithms using the newly created database. Our findings reveal that the majority of these algorithms experience a decrease in performance when faced with light makeup faces. Consequently, this paper introduces a general face anti-spoofing algorithm specifically designed for light makeup faces, which includes a makeup augmentation module, a batch channel normalization module, a backbone network updated via the Exponential Moving Average (EMA) method, an asymmetric virtual triplet loss module, and a nearest neighbor supervised contrastive module. The experimental outcomes confirm that the proposed algorithm exhibits superior detection capabilities when handling light makeup faces.
妆容会改变面部纹理和颜色,影响面部反欺骗系统的精度。许多人在日常生活中会化淡妆,这通常不会妨碍面部身份识别。然而,当前面部反欺骗研究往往忽视了淡妆对面部特征识别的影响,特别是缺乏公开可用的淡妆面部数据集。如果这些情况被面部反欺骗系统错误地标记为欺诈行为,可能会给用户带来不便。为此,我们开发了一个包含淡妆面部的面部反欺骗数据库,并建立了一个确定淡妆的标准以选择合适的数据。在此基础上,我们使用新创建的数据库评估了多种已有的面部反欺骗算法。我们的研究结果表明,这些算法中的大多数在面对淡妆面部时性能会下降。因此,本文介绍了一种专门为淡妆面部设计的通用面部反欺骗算法,该算法包括一个妆容增强模块、一个批量通道归一化模块、一个通过指数移动平均(EMA)方法更新的骨干网络、一个非对称虚拟三元组损失模块和一个最近邻监督对比模块。实验结果证实,所提出的算法在处理淡妆面部时具有卓越的检测能力。