论文标题
面部识别准确性中性别不平等的分析
Analysis of Gender Inequality In Face Recognition Accuracy
论文作者
论文摘要
我们对男性和女性之间的面部识别准确性有所不同,对男性和为什么面部识别准确性有所不同。我们表明,由于(1)具有偏向较高相似性得分的女性的冒名顶替分布的组合,女性的准确性较低,以及(2)具有偏差较低相似性得分的女性的真正分布。我们表明,在非裔美国人,高加索人和亚洲面孔的数据集中,这种现象的冒名顶替者和对妇女彼此近距离转移的真实分布的现象。我们表明,男性/女性的面部表情分布可能有所不同,但是对图像子集的准确性差异持续了被视为中性表达的图像子集。额定值子集的精度差异也持续到接近零螺距角度。即使用头发/帽子部分删除前额的图像,同样的冒名顶替/真实精度差异仍然存在。我们表明,当仅使用没有面部化妆品的女性图像时,女性真正的分布会改善,但是女性冒名顶替者的分布也同时降低。最后,我们表明,即使使用训练数据在男性和女性图像和受试者之间明确平衡训练数据,也可以从头开始训练准确性差异。
We present a comprehensive analysis of how and why face recognition accuracy differs between men and women. We show that accuracy is lower for women due to the combination of (1) the impostor distribution for women having a skew toward higher similarity scores, and (2) the genuine distribution for women having a skew toward lower similarity scores. We show that this phenomenon of the impostor and genuine distributions for women shifting closer towards each other is general across datasets of African-American, Caucasian, and Asian faces. We show that the distribution of facial expressions may differ between male/female, but that the accuracy difference persists for image subsets rated confidently as neutral expression. The accuracy difference also persists for image subsets rated as close to zero pitch angle. Even when removing images with forehead partially occluded by hair/hat, the same impostor/genuine accuracy difference persists. We show that the female genuine distribution improves when only female images without facial cosmetics are used, but that the female impostor distribution also degrades at the same time. Lastly, we show that the accuracy difference persists even if a state-of-the-art deep learning method is trained from scratch using training data explicitly balanced between male and female images and subjects.