Deep Privacy based Face Anonymization for Smart Cities

Muhammad Umair Hassan, Magnus Stava, I. Hameed
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Abstract

Interest in privacy has increased due to the public’s increased attention given to it by the introduction of the EU’s GDPR. The number of images containing identifiable features has multiplied dramatically in an increasingly digital world where data is gathered on a large scale through surveillance systems, smartphones, cameras, etc. In order to protect our privacy, it is essential to look into methods that can anonymize individuals in real time before the digital data is stored. We look into two state-of-the-art face detectors and consider how they perform in real time. In addition, we consider multiple methods for anonymizing individuals in the loop and how it affects the resulting image. The performance is based on the WiderFace benchmark, including easy, medium, and hard subsets.
基于深度隐私的智能城市人脸匿名化
由于欧盟GDPR的引入,公众对隐私的关注越来越多,人们对隐私的兴趣也在增加。在一个日益数字化的世界里,包含可识别特征的图像数量急剧增加,通过监控系统、智能手机、相机等大规模收集数据。为了保护我们的隐私,有必要研究在数字数据存储之前实时匿名化个人的方法。我们研究了两种最先进的面部探测器,并考虑了它们的实时表现。此外,我们考虑了在循环中匿名个人的多种方法,以及它如何影响最终图像。性能基于WiderFace基准测试,包括简单子集、中等子集和硬子集。
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