Privacy-preserving human activity sensing: A survey

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS High-Confidence Computing Pub Date : 2024-03-01 DOI:10.1016/j.hcc.2024.100204
Yanni Yang , Pengfei Hu , Jiaxing Shen , Haiming Cheng , Zhenlin An , Xiulong Liu
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Abstract

With the prevalence of various sensors and smart devices in people’s daily lives, numerous types of information are being sensed. While using such information provides critical and convenient services, we are gradually exposing every piece of our behavior and activities. Researchers are aware of the privacy risks and have been working on preserving privacy while sensing human activities. This survey reviews existing studies on privacy-preserving human activity sensing. We first introduce the sensors and captured private information related to human activities. We then propose a taxonomy to structure the methods for preserving private information from two aspects: individual and collaborative activity sensing. For each of the two aspects, the methods are classified into three levels: signal, algorithm, and system. Finally, we discuss the open challenges and provide future directions.

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保护隐私的人类活动传感:调查
随着各种传感器和智能设备在人们日常生活中的普及,无数类型的信息被感知。在利用这些信息提供关键和便捷服务的同时,我们的行为和活动也逐渐暴露无遗。研究人员意识到了隐私风险,并一直致力于在感知人类活动的同时保护隐私。本调查回顾了有关保护隐私的人类活动传感的现有研究。我们首先介绍与人类活动相关的传感器和捕获的隐私信息。然后,我们提出了一个分类法,从个体活动传感和协作活动传感两个方面来构建保护隐私信息的方法。针对这两个方面,我们将方法分为三个层次:信号、算法和系统。最后,我们讨论了面临的挑战,并提出了未来的发展方向。
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