论文标题
学习情感盲的面部表征
Learning Emotional-Blinded Face Representations
论文作者
论文摘要
我们提出了两种面部表征,这些表征对与情感反应相关的面部表情视而不见。这项工作部分是出于针对个人数据保护的新国际法规的动力,该法规强制执行数据控制器来保护自动过程中涉及的任何敏感信息。情感计算的进步有助于改善人机界面,但同时监测情绪反应的能力会触发人类对人类的潜在风险,无论是公平性和隐私而言。我们提出了两种不同的方法来学习这些表达盲的面部特征。我们表明,可以消除与情绪识别任务有关的信息,而主题验证,性别认识和种族分类的表现只是略有影响。我们还提出了一个应用程序,以培训有关受保护的面部表达属性的吸引力分类的案例研究。结果表明,在其他基于面部的人工智能任务中保留竞争性能的同时,可以减少面部表征中的情绪信息。
We propose two face representations that are blind to facial expressions associated to emotional responses. This work is in part motivated by new international regulations for personal data protection, which enforce data controllers to protect any kind of sensitive information involved in automatic processes. The advances in Affective Computing have contributed to improve human-machine interfaces but, at the same time, the capacity to monitorize emotional responses triggers potential risks for humans, both in terms of fairness and privacy. We propose two different methods to learn these expression-blinded facial features. We show that it is possible to eliminate information related to emotion recognition tasks, while the performance of subject verification, gender recognition, and ethnicity classification are just slightly affected. We also present an application to train fairer classifiers in a case study of attractiveness classification with respect to a protected facial expression attribute. The results demonstrate that it is possible to reduce emotional information in the face representation while retaining competitive performance in other face-based artificial intelligence tasks.