Impact due to demographic factors such as age, sex, race, etc., has been studied extensively in automated face recognition systems. However, the impact of \textit{digitally modified} demographic and facial attributes on face recognition is relatively under-explored. In this work, we study the effect of attribute manipulations induced via generative adversarial networks (GANs) on face recognition performance. We conduct experiments on the CelebA dataset by intentionally modifying thirteen attributes using AttGAN and STGAN and evaluating their impact on two deep learning-based face verification methods, ArcFace and VGGFace. Our findings indicate that some attribute manipulations involving eyeglasses and digital alteration of sex cues can significantly impair face recognition by up to 73% and need further analysis.
翻译:由于年龄、性别、种族等人口因素的影响,已在自动面部识别系统中进行了广泛研究,然而,对脸部识别的 人口和面部特征的影响,探索得相对不足。在这项工作中,我们研究了通过基因对抗网络(GANs)诱导的属性操纵对面部识别表现的影响。我们通过利用AttGAN和STGAN对CelebA数据集进行有意修改13个属性的实验,并评估其对两个深层的基于学习的面部验证方法(ArcFace和VGGFace)的影响。我们的调查结果表明,有些涉及眼镜和数字改变性别暗示的属性操纵,可能会大大妨碍73%的面部识别,并需要进一步分析。