The pervasive integration of Indoor Positioning Systems (IPS) arises from the limitations of Global Navigation Satellite Systems (GNSS) in indoor environments, leading to the widespread adoption of Location-Based Services (LBS) in places such as shopping malls, airports, hospitals, museums, corporate campuses, and smart buildings. Specifically, indoor location fingerprinting (ILF) systems employ diverse signal fingerprints from user devices, enabling precise location identification by Location Service Providers (LSP). Despite its broad applications across various domains, ILF introduces a notable privacy risk, as both LSP and potential adversaries inherently have access to this sensitive information, compromising users' privacy. Consequently, concerns regarding privacy vulnerabilities in this context necessitate a focused exploration of privacy-preserving mechanisms. In response to these concerns, this survey presents a comprehensive review of Indoor Location Fingerprinting Privacy-Preserving Mechanisms (ILFPPM) based on cryptographic, anonymization, differential privacy (DP), and federated learning (FL) techniques. We also propose a distinctive and novel grouping of privacy vulnerabilities, adversary models, privacy attacks, and evaluation metrics specific to ILF systems. Given the identified limitations and research gaps in this survey, we highlight numerous prospective opportunities for future investigation, aiming to motivate researchers interested in advancing ILF systems. This survey constitutes a valuable reference for researchers and provides a clear overview for those beyond this specific research domain. To further help the researchers, we have created an online resource repository, which can be found at \href{https://github.com/amir-ftlz/ilfppm}{https://github.com/amir-ftlz/ilfppm}.
翻译:由于全球导航卫星系统(GNSS)在室内环境中的局限性,室内定位系统(IPS)得到普遍应用,促使基于位置的服务(LBS)在商场、机场、医院、博物馆、企业园区和智能建筑等场所广泛部署。具体而言,室内位置指纹(ILF)系统利用来自用户设备的多样化信号指纹,使位置服务提供商(LSP)能够实现精确的位置识别。尽管ILF在各领域应用广泛,但其引入了显著的隐私风险,因为LSP和潜在攻击者本质上都能访问这些敏感信息,从而危及用户隐私。因此,对此背景下隐私脆弱性的担忧,亟需对隐私保护机制进行聚焦探索。针对这些问题,本文基于密码学、匿名化、差分隐私(DP)和联邦学习(FL)等技术,对室内位置指纹隐私保护机制(ILFPPM)进行了全面综述。我们还针对ILF系统,提出了一种独特且新颖的隐私脆弱性、攻击者模型、隐私攻击及评估指标的分类方法。基于本综述所识别的局限性与研究空白,我们指出了未来研究的众多潜在方向,旨在激励有意推进ILF系统发展的研究人员。本综述为相关领域研究者提供了有价值的参考,并为该特定研究领域之外的人士提供了清晰的概览。为进一步协助研究人员,我们创建了一个在线资源库,访问地址为:\href{https://github.com/amir-ftlz/ilfppm}{https://github.com/amir-ftlz/ilfppm}。