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An Adaptive Privacy Protection Method for Smart Home Environments Using Supervised Learning

机译:使用监督学习的智能家庭环境自适应隐私保护方法

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In recent years, smart home technologies have started to be widely used, bringing a great deal of convenience to people’s daily lives. At the same time, privacy issues have become particularly prominent. Traditional encryption methods can no longer meet the needs of privacy protection in smart home applications, since attacks can be launched even without the need for access to the cipher. Rather, attacks can be successfully realized through analyzing the frequency of radio signals, as well as the timestamp series, so that the daily activities of the residents in the smart home can be learnt. Such types of attacks can achieve a very high success rate, making them a great threat to users’ privacy. In this paper, we propose an adaptive method based on sample data analysis and supervised learning (SDASL), to hide the patterns of daily routines of residents that would adapt to dynamically changing network loads. Compared to some existing solutions, our proposed method exhibits advantages such as low energy consumption, low latency, strong adaptability, and effective privacy protection.
机译:近年来,智能家居技术已经开始被广泛使用,为人们的日常生活带来了极大的便利。与此同时,隐私问题变得尤为突出。传统的加密方法不再符合智能家居应用中隐私保护的需求,因为即使无需访问密码,也可以启动攻击。相反,可以通过分析无线电信号的频率以及时间戳系列来成功实现攻击,从而可以学习智能家居中居民的日常活动。这种类型的攻击可以实现非常高的成功率,使它们对用户的隐私构成很大威胁。在本文中,我们提出了一种基于样本数据分析和监督学习(SDASL)的自适应方法,以隐藏居民的日常例程模式,该方法适应动态改变网络负载。与一些现有的解决方案相比,我们所提出的方法表现出低能耗,低延迟,强大的适应性和有效隐私保护等优势。

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