Boosting Fairness for Masked Face Recognition

Jun Yu, Xinlong Hao, Zeyu Cui, Peng He, Tongliang Liu
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Abstract

Face recognition achieved excellent performance in re-cent years. However, its potential for unfairness is raising alarm. For example, the recognition rate for the special group of East Asian is quite low. Many efforts have spent to improve the fairness of face recognition. During the COVID-19 pandemic, masked face recognition is becoming a hot topic but brings new challenging for fair face recognition. For example, the mouth and nose are important to recognizing faces of Asian groups. Masks would further reduce the recognition rate of Asian faces. To this end, this paper proposes a fair masked face recognition system. First, an appropriate masking method is used to generate masked faces. Then, a data re-sampling approach is employed to balance the data distribution and reduce the bias based on the analysis of training data. Moreover, we propose an asymmetric-arc-loss which is a combination of arc-face loss and circle-loss, it is useful for increasing recognition rate and reducing bias. Integrating these techniques, this paper obtained fairer and better face recognition results on masked faces.
提高蒙面人脸识别的公平性
近年来,人脸识别技术取得了优异的成绩。然而,其潜在的不公平正在拉响警报。例如,对东亚特殊群体的认知率很低。为了提高人脸识别的公平性,人们做了很多努力。在新冠肺炎疫情期间,蒙面人脸识别成为热门话题,但也给公平的人脸识别带来了新的挑战。例如,嘴和鼻子对于识别亚洲群体的面孔很重要。口罩会进一步降低亚洲面孔的识别率。为此,本文提出了一种公平掩码人脸识别系统。首先,采用合适的遮罩方法生成遮罩面。然后,在对训练数据进行分析的基础上,采用数据重采样的方法平衡数据分布,减少偏差。此外,我们还提出了一种结合弧面损耗和圆损耗的非对称电弧损耗,有助于提高识别率和减小偏置。综合这些技术,本文得到了更公平、更好的人脸识别结果。
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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