Privacy-Aware Sensor Data Upload Management for Securely Receiving Smart Home Services

Sopicha Stirapongsasuti, Yugo Nakamura, K. Yasumoto
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Abstract

Recently smart homes equipped with many sensors and IoT devices are widespread. However, when smart home users receive smart home services like elderly monitoring, they need to upload their privacy sensitive data to potentially untrusted cloud servers where the service quality (user's benefit) depends on the amount/frequency of the uploaded data. In this paper, aiming to minimize the risk of privacy leakage and maximize users' benefit obtained through services, we propose a novel privacy-aware data management method that works on a smart-home system composed of smart homes with sensors, edge computing servers, and a cloud server. We formulate a combinatorial optimization problem which determines the best choice of data type (raw or activity label recognized at the edge) and upload frequency in each time slot taking into account the constraints of edge server resources and users' budgets as well as the k-anonymity of activities and users' preferences. Since the target problem is NP-hard, we propose a heuristic algorithm to derive semi-optimal solutions by determining choices with better objective function values in a greedy manner. Through experiments using smart-home open dataset, we confirmed that the proposed method outperforms the conventional methods using only a cloud server.
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隐私感知传感器数据上传管理,安全接收智能家居服务
最近,配备了许多传感器和物联网设备的智能家居普遍存在。然而,当智能家居用户接受老年人监控等智能家居服务时,他们需要将自己的隐私敏感数据上传到可能不受信任的云服务器上,而云服务器的服务质量(用户的利益)取决于上传数据的数量/频率。为了最大限度地降低隐私泄露风险,最大限度地提高用户通过服务获得的利益,本文提出了一种新的隐私感知数据管理方法,该方法适用于由传感器、边缘计算服务器和云服务器组成的智能家居系统。我们制定了一个组合优化问题,该问题考虑到边缘服务器资源和用户预算的约束以及活动的k-匿名性和用户偏好,确定了每个时点的数据类型(在边缘识别的原始或活动标签)和上传频率的最佳选择。由于目标问题是np困难的,我们提出了一种启发式算法,通过贪婪的方式确定具有更好目标函数值的选择来获得半最优解。通过使用智能家居开放数据集的实验,我们证实了该方法优于仅使用云服务器的传统方法。
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