Face Recognition Fairness Assessment based on Data Augmentation: An Empirical Study

Fangyuan Tian, Wenhong Liu, Shuang Zhao, Jiawei Liu
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Abstract

Deep learning models are affected by the training data when classifying, leading to discrimination in prediction output or disparity in prediction quality. We need to test the model adequately using a large amount of data. However, data for certain combinations of attributes occur less frequently in reality and are more difficult to obtain. Data augmentation is one of the methods to alleviate this problem. In this paper, we conduct a preliminary study on whether changes in these features(hair, glasses, bangs, etc.) could affect classification accuracy. This study provides some conclusions, (1) there is a fairness problem in the depth model (2) the fairness of the model can be well tested by auamentation against Image attributes.
基于数据增强的人脸识别公平性评估实证研究
深度学习模型在分类时受到训练数据的影响,导致预测输出的歧视或预测质量的差异。我们需要使用大量的数据对模型进行充分的测试。然而,某些属性组合的数据在现实中出现的频率较低,并且更难获得。数据增强是缓解这一问题的方法之一。在本文中,我们对这些特征(头发、眼镜、刘海等)的变化是否会影响分类精度进行了初步研究。本研究得出以下结论:(1)深度模型存在公平性问题;(2)模型的公平性可以通过对图像属性的修正来很好地检验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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