Award Abstract # 2029976
Collaborative Research: SaTC: CORE: Small: Privacy protection of Vehicles location in Spatial Crowdsourcing under realistic adversarial models

NSF Org: CNS
Division Of Computer and Network Systems
Recipient: THE PENNSYLVANIA STATE UNIVERSITY
Initial Amendment Date: August 27, 2020
Latest Amendment Date: September 11, 2023
Award Number: 2029976
Award Instrument: Standard Grant
Program Manager: Karen Karavanic
kkaravan@nsf.gov
 (703)292-2594
CNS
 Division Of Computer and Network Systems
CSE
 Directorate for Computer and Information Science and Engineering
Start Date: January 1, 2021
End Date: December 31, 2023 (Estimated)
Total Intended Award Amount: $272,848.00
Total Awarded Amount to Date: $272,848.00
Funds Obligated to Date: FY 2020 = $272,848.00
History of Investigator:
  • Dongwon Lee (Principal Investigator)
  • Anna Squicciarini (Former Principal Investigator)
Recipient Sponsored Research Office: Pennsylvania State Univ University Park
201 OLD MAIN
UNIVERSITY PARK
PA  US  16802-1503
(814)865-1372
Sponsor Congressional District: 15
Primary Place of Performance: Pennsylvania State Univ University Park
E326 Westgate Building
University Park
PA  US  16802-1503
Primary Place of Performance
Congressional District:
15
Unique Entity Identifier (UEI): NPM2J7MSCF61
Parent UEI:
NSF Program(s): Secure &Trustworthy Cyberspace
Primary Program Source: 01002021DB NSF RESEARCH & RELATED ACTIVIT
Program Reference Code(s): 025Z, 7923, 9102
Program Element Code(s): 806000
Award Agency Code: 4900
Fund Agency Code: 4900
Assistance Listing Number(s): 47.070

ABSTRACT

In vehicle-based spatial crowdsourcing (VSC), requesters can outsource their tasks to a group of vehicles, which are required to physically move to tasks' locations to perform services or tasks. To promote a cost-effective task distribution, vehicles need to disclose their location information to VSC servers. Location sharing however raises serious privacy concerns related not only to whereabouts of the vehicles but also to sensitive information such as drivers? home/working address, sexual preferences, financial status, etc. Current privacy protection mechanisms for location-services include location obfuscation methods according to mobility patterns projected on a 2-dimensional plane, wherein users can move in arbitrary directions without any restriction. Obfuscation algorithms based on a 2-dimensional plane are unable to provide strong privacy guarantees of vehicles whose mobility is restricted by road networks, since road networks and traffic patterns facilitate vehicle tracking and trajectory estimation. This research project aims to develop new location privacy protection techniques by considering vehicles? realistic mobility features, and consequently lead to a more secure and trustworthy computing environment in VSC. This project paves the way for a more realistic body of work on location privacy, particularly regarding location-based services (LBSs). As privacy concerns are still among the main obstacles for mobile users to participate in many advanced LBSs, this project is poised to contribute to the wider adoption of LBSs for many applications (e.g. location-based recommendation systems). In addition, the project provides a set of diverse and interesting topics for undergraduate and graduate students and outreach activities for the community.

The project consists of three tasks. First, the project starts with developing new adversarial models to capture the network-constrained mobility features of multiple vehicles operating over roads. Vehicles? mobility is described by a Bayesian network, i.e., the exact and the reported locations of vehicles are considered as hidden and observable states, respectively, and the spatial correlation between hidden states can be learned from the road network environment and traffic flow information. Second, as a countermeasure for the adversarial models, the project develops a new location obfuscation paradigm that can effectively protect vehicles' location privacy without compromising quality-of-service (QoS), even assuming that adversaries can leverage vehicles? mobility features for inference attacks. Since the impact of location obfuscation on both privacy level and QoS vary significantly over different road segments, the new location obfuscation methods are designed to be adaptive to various local road network conditions. Finally, considering the scalability and the dynamics of VSC, the project applies distributed and parallel computing techniques (e.g., optimization decomposition) to guarantee the obfuscation algorithms to be implemented in a time-efficient manner.

This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

PROJECT OUTCOMES REPORT

Disclaimer

This Project Outcomes Report for the General Public is displayed verbatim as submitted by the Principal Investigator (PI) for this award. Any opinions, findings, and conclusions or recommendations expressed in this Report are those of the PI and do not necessarily reflect the views of the National Science Foundation; NSF has not approved or endorsed its content.

The project's primary goal was to develop an advanced location privacy protection mechanism, taking into account vehicles' mobility features. This work has laid the groundwork for a pragmatic exploration of location privacy, particularly in the context of Location-based services. We aimed to foster a broader acceptance of location-based services across various applications by addressing privacy concerns, a significant barrier for mobile users. The project's outcomes, including new threat models, countermeasures, and a novel geo-obfuscation framework, are significant contributions to the field.
Our work produced both new threat models and new paradigms for geolocation privacy. Our research has introduced novel threat models, demonstrating that even seemingly innocuous data, such as a temporal sequence of brake signals, can be used by attackers to infer a vehicle's route. We've also developed innovative context-aware threat models, leveraging Hidden Markov Models and long short-term memory neural networks. These models have paved the way for new countermeasures, which generate synthetic locations that mimic realistic vehicle mobility patterns, effectively thwarting these threats.
Finally, key outcomes include a novel geo-obfuscation framework with several desirable properties: customizability, scalability, and time-sensitive. Our highly customizable framework allows users to tailor it according to their specific requirements for obfuscation range, location representation granularity, and individual location preferences. In addition, we have developed a new fine-grained geo-obfuscation algorithm for time-sensitive applications. We enhanced the scalability of geo-obfuscation calculations by considering only locally relevant locations for each actual location. This project outcome includes theoretical models published in top tier conferences, software releases and prototypes.

 


Last Modified: 04/04/2024
Modified by: Dongwon Lee

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