论文标题
虚拟面孔的无刻板印象分类
Stereotype-Free Classification of Fictitious Faces
论文作者
论文摘要
机会平等和公平正在受到人工智能的越来越多的关注。刻板印象是歧视的另一个来源,尚未在文学中被研究。如果gan制造的面孔被人类的看法分类,则会暴露于这种歧视。通过使用统计方法,可以消除人类对虚拟面孔分类任务的影响。我们通过惩罚回归提出了一种新的方法,以标记无刻板印象的无标记图像。提出的方法通过最大程度地减少逼真的图片和目标图片之间最小二乘成本功能的惩罚版本来帮助标记新数据(虚拟输出图像)。
Equal Opportunity and Fairness are receiving increasing attention in artificial intelligence. Stereotyping is another source of discrimination, which yet has been unstudied in literature. GAN-made faces would be exposed to such discrimination, if they are classified by human perception. It is possible to eliminate the human impact on fictitious faces classification task by the use of statistical approaches. We present a novel approach through penalized regression to label stereotype-free GAN-generated synthetic unlabeled images. The proposed approach aids labeling new data (fictitious output images) by minimizing a penalized version of the least squares cost function between realistic pictures and target pictures.