Existing facial analysis systems have been shown to yield biased results against certain demographic subgroups. Due to its impact on society, it has become imperative to ensure that these systems do not discriminate based on gender, identity, or skin tone of individuals. This has led to research in the identification and mitigation of bias in AI systems. In this paper, we encapsulate bias detection/estimation and mitigation algorithms for facial analysis. Our main contributions include a systematic review of algorithms proposed for understanding bias, along with a taxonomy and extensive overview of existing bias mitigation algorithms. We also discuss open challenges in the field of biased facial analysis.
翻译:现有的面部分析系统已经证明对某些人口分组产生了有偏见的结果。由于它对社会的影响,必须确保这些系统不因个人的性别、身份或肤色而有所歧视。这导致在识别和减少AI系统中的偏见方面进行了研究。在本文件中,我们概括了用于面部分析的偏见检测/估计和减轻影响算法。我们的主要贡献包括系统审查为理解偏见而提出的算法,同时进行分类和广泛概述现有的减轻偏见算法。我们还讨论了偏向面部分析领域的公开挑战。