GPS signals, the main origin of navigation, are not functional in indoor environments. Therefore, Wi-Fi access points have started to be increasingly used for localization and tracking inside the buildings by relying on a fingerprint-based approach. However, with these types of approaches, several concerns regarding the privacy of the users have arisen. Malicious individuals can determine a client's daily habits and activities by simply analyzing their wireless signals. While there are already efforts to incorporate privacy into the existing fingerprint-based approaches, they are limited to the characteristics of the homomorphic cryptographic schemes they employed. In this paper, we propose to enhance the performance of these approaches by exploiting another homomorphic algorithm, namely DGK, with its unique encrypted sorting capability and thus pushing most of the computations to the server side. We developed an Android app and tested our system within a Columbia University dormitory. Compared to existing systems, the results indicated that more power savings can be achieved at the client side and DGK can be a viable option with more powerful server computation capabilities.
翻译:GPS是导航的主要源头,在室内环境中并不起作用。因此,Wi-Fi接入点开始越来越多地用于建筑物内的本地化和跟踪,依靠指纹方法。然而,由于采用这些方法,出现了对用户隐私的若干关切。恶意个人可以通过分析无线信号来确定客户的日常习惯和活动。虽然已经努力将隐私纳入现有的指纹方法,但仅限于他们采用的同质加密方法的特点。在本文件中,我们提议通过利用另一种同质算法,即具有独特加密排序能力的DGK来提高这些方法的性能,从而将大多数计算结果推到服务器一边。我们开发了安卓亚应用程序,并在哥伦比亚大学宿舍测试了我们的系统。与现有的系统相比,结果显示在客户方面可以实现更多的节能,而DK可以是一种更强大的服务器计算能力,因此是一种可行的选择。