论文标题

“健康监视”:在大流行时代设计一个概念以保护隐私的面具识别AI

"Healthy surveillance": Designing a concept for privacy-preserving mask recognition AI in the age of pandemics

论文作者

Kühl, Niklas, Martin, Dominik, Wolff, Clemens, Volkamer, Melanie

论文摘要

在大流行时期,戴口罩的义务降低了传播病毒的风险。如果2020年的共同19日大流行,许多政府建议甚至义务其公民戴口罩作为有效的对策。为了不断监视公共当局在餐厅或电车站等公共场所中对此政策措施的遵守情况,一种可扩展和自动的选项描述了监视系统的应用,即CCTV。但是,对面具识别的大规模监控不仅需要表现出色的人工智能,而且还要确保没有引入隐私问题,因为监视是对公民和法规的威慑,例如通用数据保护法规(GDPR)要求严格的个人数据法规。在这项工作中,我们展示了隐私的面具识别伪像的样子,展示了实施和评估性能的不同选择。我们的基于概念的深度学习人工智能能够在隐私友好的环境中实现95%至99%的检测性能。在此基础上,我们详细阐述了隐私保护水平和人工智能绩效之间的权衡,即“隐私价格”。

The obligation to wear masks in times of pandemics reduces the risk of spreading viruses. In case of the COVID-19 pandemic in 2020, many governments recommended or even obligated their citizens to wear masks as an effective countermeasure. In order to continuously monitor the compliance of this policy measure in public spaces like restaurants or tram stations by public authorities, one scalable and automatable option depicts the application of surveillance systems, i.e., CCTV. However, large-scale monitoring of mask recognition does not only require a well-performing Artificial Intelligence, but also ensure that no privacy issues are introduced, as surveillance is a deterrent for citizens and regulations like General Data Protection Regulation (GDPR) demand strict regulations of such personal data. In this work, we show how a privacy-preserving mask recognition artifact could look like, demonstrate different options for implementation and evaluate performances. Our conceptual deep-learning based Artificial Intelligence is able to achieve detection performances between 95% and 99% in a privacy-friendly setting. On that basis, we elaborate on the trade-off between the level of privacy preservation and Artificial Intelligence performance, i.e. the "price of privacy".

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源