Abstract

Location-based services (LBSs) have received a significant amount of recent attention from the research community due to their valuable benefits in various aspects of society. In addition, the dependency on LBS in the performance of daily tasks has increased dramatically, especially after the spread of the COVID-19 pandemic. LBS users use their real location to build LBS queries to take benefits. This makes location privacy vulnerable to attacks. The privacy issue is accentuated if the attacker is an LBS provider since all information about users is accessible. Moreover, the attacker can apply advanced attacks, such as map matching and semantic location attacks. In response to these issues, this work employs artificial intelligence to build a robust defense against advanced location privacy attacks. The key idea behind protecting the location privacy of LBS users is to generate smart dummy locations. Smart dummy locations are false locations with the same query probability as the real location, but they are far from both the real location and each other. Relying on the previous two conditions, the deep-learning-based intelligent finder ensures a high level of location privacy protection against advanced attacks. The attacker cannot recognize the dummies from the real location and cannot isolate the real location by a filtering process. In terms of entropy (the privacy protection metric), accuracy (the deep learning metric), and total execution time (the performance metric) and compared to the well-known DDA and BDA systems, the proposed system shows better results, where entropy = 15.9, accuracy = 9.9, and total execution time = 17 sec.

Highlights

  • The Internet of Things (IoT) can be defined as a network of devices that are connected through the Internet to facilitate performing tasks remotely

  • This is because of the factors taken into account in the procedure for selecting the dummies, where (1) the CELLqp of each dummy is the same as the real location and (2) the dummies are spread over a wide space that cannot be collected in one area for malicious filtering by the attacker

  • The privacy of location-based services (LBSs) users will be under great threat if the LBS provider acts as an attacker and can apply Map Matching Attack (MMA) and Semantic Location Attack (SLA) attacks

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Summary

INTRODUCTION

The Internet of Things (IoT) can be defined as a network of devices that are connected through the Internet to facilitate performing tasks remotely. Among the IoTs, location-based services (LBSs) are considered the most important services that serve people daily. LBSs can be seen as commercial location applications that utilize the geographical location information of smart devices and mainly smartphones, enabling users to search for Points of Interest (PoIs), such as nearest restaurants, hospitals, libraries, and sports clubs [3]. Integrating LBS applications with wireless communication technologies have enabled the creation of location-based social networking services, such as Foursquare, Twinkle, and GeoLife [8]. This integration bridges the gap between the physical world and digital online social networking services

Statement of Problem
Contribution
Structure of the Work
RELATED WORK
PROPOSED SYSTEM
Threat Model
System Design
SECURITY ANALYSIS
AND DISCUSSION
Discussion and justifications
CONCLUSION AND FUTURE WORK
Full Text
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