Contactless and efficient systems are implemented rapidly to advocate preventive methods in the fight against the COVID-19 pandemic. Despite the positive benefits of such systems, there is potential for exploitation by invading user privacy. In this work, we analyse the privacy invasiveness of face biometric systems by predicting privacy-sensitive soft-biometrics using masked face images. We train and apply a CNN based on the ResNet-50 architecture with 20,003 synthetic masked images and measure the privacy invasiveness. Despite the popular belief of the privacy benefits of wearing a mask among people, we show that there is no significant difference to privacy invasiveness when a mask is worn. In our experiments we were able to accurately predict sex (94.7%),race (83.1%) and age (MAE 6.21 and RMSE 8.33) from masked face images. Our proposed approach can serve as a baseline utility to evaluate the privacy-invasiveness of artificial intelligence systems that make use of privacy-sensitive information. We open-source all contributions for re-producibility and broader use by the research community.
翻译:迅速实施无接触、高效的系统,以倡导预防COVID-19大流行的预防方法。尽管这些系统具有积极的好处,但有可能被侵犯用户隐私所利用。在这项工作中,我们通过使用蒙面图像预测对隐私敏感的软生物测定系统对隐私的侵入性进行了分析;我们根据ResNet-50结构培训和应用有20 003个合成蒙面图像的有线电视新闻网,并衡量隐私侵入性。尽管人们普遍认为戴面具对隐私有好处,但我们表明,在戴面具时隐私侵入没有重大区别。在我们的实验中,我们能够准确地预测面罩图像的性别(94.7%)、种族(83.1%)和年龄(MAE 6.21和RMSE 8.33)以及隐面图像中的性别(94.7%)、种族(83.1%)和年龄(MAE 6.33),我们提议的方法可以作为评估使用对隐私敏感信息的人工情报系统的隐私侵入性的基线工具。我们开放源为研究界的重新利用和广泛使用做出的所有贡献。