个人健康监测中用于活动识别的隐私保护物联网框架

T. Jourdan, A. Boutet, A. Bahi, Carole Frindel
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引用次数: 7

摘要

可穿戴消费产品的日益普及可以在医疗保健领域发挥重要作用。在这种情况下,从物联网中识别人类活动是一个重要的组成部分。虽然从健康的角度来看,对生成的数据流进行分析有很多好处,但它也可能暴露高度敏感的信息,从而带来隐私威胁。在本文中,我们提出了一个框架,该框架依赖于机器学习来有效识别用户活动,这对个人健康监测很有用,同时限制了用户从每个个体特征的生物特征模式中重新识别的风险。为了实现这一目标,我们证明了时域特征有助于区分用户活动,而频域特征有助于区分用户身份。然后,我们设计了一种新的保护机制,处理用户智能手机上的原始信号,选择相关特征进行活动识别,并对对重新识别敏感的特征进行归一化。然后将这些不可链接的特性转移到应用程序服务器。我们用参考数据集广泛评估了我们的框架:结果显示准确的活动识别(87%),同时限制了重新识别率(33%)。这表明与最先进的基线相比,实用性略有下降(9%),隐私性大幅提高(53%)。
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Privacy-preserving IoT Framework for Activity Recognition in Personal Healthcare Monitoring
The increasing popularity of wearable consumer products can play a significant role in the healthcare sector. The recognition of human activities from IoT is an important building block in this context. While the analysis of the generated datastream can have many benefits from a health point of view, it can also lead to privacy threats by exposing highly sensitive information. In this article, we propose a framework that relies on machine learning to efficiently recognise the user activity, useful for personal healthcare monitoring, while limiting the risk of users re-identification from biometric patterns characterizing each individual. To achieve that, we show that features in temporal domain are useful to discriminate user activity while features in frequency domain lead to distinguish the user identity. We then design a novel protection mechanism processing the raw signal on the user’s smartphone to select relevant features for activity recognition and normalise features sensitive to re-identification. These unlinkable features are then transferred to the application server. We extensively evaluate our framework with reference datasets: Results show an accurate activity recognition (87%) while limiting the re-identification rate (33%). This represents a slight decrease of utility (9%) against a large privacy improvement (53%) compared to state-of-the-art baselines.
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CiteScore
10.30
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0.00%
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