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Comparison-Level Mitigation of Ethnic Bias in Face Recognition

机译:人脸识别中种族偏见的比较级别缓解

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Current face recognition systems achieve high performance on several benchmark tests. Despite this progress, recent works showed that these systems are strongly biased against demographic sub-groups. Previous works introduced approaches that aim at learning less biased representations. However, applying these approaches in real applications requires a complete replacement of the templates in the database. This replacement procedure further requires that a face image of each enrolled individual is stored as well. In this work, we propose the first bias-mitigating solution that works on the comparison-level of a biometric system. We propose a fairness- driven neural network classifier for the comparison of two biometric templates to replace the systems similarity function. This fair classifier is trained with a novel penalization term in the loss function to introduce the criteria of group and individual fairness to the decision process. This penalization term forces the score distributions of different ethnicities to be similar, leading to a reduction of the intra-ethnic performance differences. Experiments were conducted on two publicly available datasets and evaluated the performance of four different ethnicities. The results showed that for both fairness criteria, our proposed approach is able to significantly reduce the ethnic bias, while it preserves a high recognition ability. Our model, build on individual fairness, achieves bias reduction rate between 15.35% and 52.67%. In contrast to previous work, our solution is easy to integrate into existing systems by simply replacing the systems similarity functions with our fair template comparison approach.
机译:当前的面部识别系统在多项基准测试中均实现了高性能。尽管取得了这一进展,但最近的工作表明,这些系统在人口统计分组中有很大的偏见。先前的作品介绍了旨在学习较少偏见表示的方法。但是,在实际应用程序中应用这些方法需要完全替换数据库中的模板。该替换过程还要求还存储每个注册个人的面部图像。在这项工作中,我们提出了第一个在生物识别系统的比较级别上起作用的缓解偏见的解决方案。我们提出了一种公平性驱动的神经网络分类器,用于两个生物特征模板的比较,以取代系统的相似性函数。该公平分类器在损失函数中使用新的惩罚项进行训练,以将群体和个人公平的标准引入决策过程。这个惩罚性术语迫使不同种族的分数分布相似,从而减少了种族内部绩效差异。在两个公开可用的数据集上进行了实验,并评估了四种不同种族的表现。结果表明,对于两种公平标准,我们提出的方法都能够显着减少种族偏见,同时保留了较高的识别能力。我们基于个人公平的模型实现了15.35%至52.67%的偏差减少率。与以前的工作相比,我们的解决方案只需用我们的公平模板比较方法替换系统相似性功能,即可轻松集成到现有系统中。

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