In spite of the legal advances in personal data protection, the issue of private data being misused by unauthorized entities is still of utmost importance. To prevent this, Privacy by Design is often proposed as a solution for data protection. In this paper, the effect of camera distortions is studied using Deep Learning techniques commonly used to extract sensitive data. To do so, we simulate out-of-focus images corresponding to a realistic conventional camera with fixed focal length, aperture, and focus, as well as grayscale images coming from a monochrome camera. We then prove, through an experimental study, that we can build a privacy-aware camera that cannot extract personal information such as license plate numbers. At the same time, we ensure that useful non-sensitive data can still be extracted from distorted images. Code is available at https://github.com/upciti/privacy-by-design-semseg .
翻译:尽管在个人数据保护方面取得了法律上的进步,私人数据被未经授权的实体滥用的问题仍然极为重要。为了防止这种情况,常常提出“设计隐私”作为数据保护的解决方案。在本文中,利用通常用来提取敏感数据的深学习技术研究相机扭曲的影响。为了做到这一点,我们模拟一个现实的、具有固定焦距、孔径和焦点的常规照相机,以及来自单色相机的灰色图像。然后,我们通过实验性研究证明,我们可以建造一个有隐私意识的照相机,无法提取个人信息,如车牌号码。与此同时,我们确保仍然可以从扭曲的图像中提取有用的非敏感数据。代码可在https://github.com/upciti/privay-by-deign-semseg查阅 https://gthub.com/upciti/privacy-by-dection-semseg查阅。