实例一致的公平人脸识别

IF 18.6
Yong Li;Yufei Sun;Zhen Cui;Pengcheng Shen;Shiguang Shan
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引用次数: 0

摘要

在现代多元和平等的社会中,人脸识别的公平性是众多人脸识别算法面临的一个挑战。在这项工作中,我们提出了一种实例一致的公平人脸识别(IC-FFR)方法,通过实现假阳性率(FPR)和真阳性率(TPR)的完全实例公平性。针对当前公平FR算法尚未考虑的测试和训练指标的不一致性,从理论上考察了测试指标(FPR和TPR)与标签分类损失之间的相关性,并推导出FPR和TPR对softmax损失的不公平惩罚的高概率一致性。在理论分析的基础上,我们进一步提出了一种实例一致的公平性解决方案,通过引入自定义的实例边界,使训练中标签分类过程中所有实例的FPR和TPR保持一致。为了鼓励更精细的公平性评估,我们提供了一个名为世界国家面孔(NFW)的数据集来衡量个人和国家的公平性。在我们的NFW以及RFW和BFW基准上进行的大量实验表明,与那些最先进的公平FR方法相比,我们的方法具有有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Instance-Consistent Fair Face Recognition
The fairness of face recognition (FR) is a challenging issue to numerous FR algorithms in the modern pluralistic and egalitarian society. In this work, we propose an instance-consistent fair face recognition (IC-FFR) method by fulfilling complete instance fairness on false positive rate (FPR) and true positive rate (TPR). In view of the misalignment of testing and training metrics, not yet considered by the current fair FR algorithms, in theory, we inspect the correlation between the testing metrics (FPR and TPR) and the label classification loss, and we derive a high-probability consistency of unfairness penalties from FPR and TPR to the softmax loss. According to the theoretical analysis, we further develop an instance-consistent fairness solution by introducing customized instance margins, which well preserve consistent FPR and TPR of all instances during the label classification in training. To encourage more fine-grained fairness evaluation, we contribute a dataset called national faces in the world (NFW) to measure the fairness of individuals and countries. Extensive experiments on our NFW as well as the RFW and BFW benchmarks demonstrate the effectiveness and superiority of our method compared to those state-of-the-art fair FR methods.
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