A Survey and Future Outlook on Indoor Location Fingerprinting Privacy Preservation
Amir Fathalizadeh, Vahideh Moghtadaiee, Mina Alishahi

TL;DR
This survey reviews privacy-preserving mechanisms for indoor location fingerprinting systems, categorizing vulnerabilities, attacks, and defenses, and highlights future research opportunities to enhance user privacy in indoor positioning.
Contribution
It provides a comprehensive classification of privacy issues, attacks, and solutions in indoor location fingerprinting, and introduces a novel grouping framework for these aspects.
Findings
Cryptographic, anonymization, differential privacy, and federated learning techniques are used for privacy preservation.
Identified key vulnerabilities and attack models in ILF systems.
Proposed future research directions to address current limitations.
Abstract
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…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Indoor and Outdoor Localization Technologies · Automated Road and Building Extraction
