577 research outputs found
Towards Mobility Data Science (Vision Paper)
Mobility data captures the locations of moving objects such as humans,
animals, and cars. With the availability of GPS-equipped mobile devices and
other inexpensive location-tracking technologies, mobility data is collected
ubiquitously. In recent years, the use of mobility data has demonstrated
significant impact in various domains including traffic management, urban
planning, and health sciences. In this paper, we present the emerging domain of
mobility data science. Towards a unified approach to mobility data science, we
envision a pipeline having the following components: mobility data collection,
cleaning, analysis, management, and privacy. For each of these components, we
explain how mobility data science differs from general data science, we survey
the current state of the art and describe open challenges for the research
community in the coming years.Comment: Updated arXiv metadata to include two authors that were missing from
the metadata. PDF has not been change
Privacy protection in location based services
This thesis takes a multidisciplinary approach to understanding the characteristics of Location Based Services (LBS) and the protection of location information in these transactions. This thesis reviews the state of the art and theoretical approaches in Regulations, Geographic Information Science, and Computer Science. Motivated by the importance of location privacy in the current age of mobile devices, this thesis argues that failure to ensure privacy protection under this context is a violation to human rights and poses a detriment to the freedom of users as individuals. Since location information has unique characteristics, existing methods for protecting other type of information are not suitable for geographical transactions. This thesis demonstrates methods that safeguard location information in location based services and that enable geospatial analysis. Through a taxonomy, the characteristics of LBS and privacy techniques are examined and contrasted. Moreover, mechanisms for privacy protection in LBS are presented and the resulting data is tested with different geospatial analysis tools to verify the possibility of conducting these analyses even with protected location information. By discussing the results and conclusions of these studies, this thesis provides an agenda for the understanding of obfuscated geospatial data usability and the feasibility to implement the proposed mechanisms in privacy concerning LBS, as well as for releasing crowdsourced geographic information to third-parties
User-centric privacy preservation in Internet of Things Networks
Recent trends show how the Internet of Things (IoT) and its services are becoming more omnipresent and popular. The end-to-end IoT services that are extensively used include everything from neighborhood discovery to smart home security systems, wearable health monitors, and connected appliances and vehicles. IoT leverages different kinds of networks like Location-based social networks, Mobile edge systems, Digital Twin Networks, and many more to realize these services. Many of these services rely on a constant feed of user information. Depending on the network being used, how this data is processed can vary significantly. The key thing to note is that so much data is collected, and users have little to no control over how extensively their data is used and what information is being used. This causes many privacy concerns, especially for a na Ìıve user who does not know the implications and consequences of severe privacy breaches. When designing privacy policies, we need to understand the different user data types used in these networks. This includes user profile information, information from their queries used to get services (communication privacy), and location information which is much needed in many on-the-go services. Based on the context of the application, and the service being provided, the user data at risk and the risks themselves vary. First, we dive deep into the networks and understand the different aspects of privacy for user data and the issues faced in each such aspect. We then propose different privacy policies for these networks and focus on two main aspects of designing privacy mechanisms: The quality of service the user expects and the private information from the userâs perspective. The novel contribution here is to focus on what the user thinks and needs instead of fixating on designing privacy policies that only satisfy the third-party applicationsâ requirement of quality of service
Applications of Internet of Things
This book introduces the Special Issue entitled âApplications of Internet of Thingsâ, of ISPRS International Journal of Geo-Information. Topics covered in this issue include three main parts: (I) intelligent transportation systems (ITSs), (II) location-based services (LBSs), and (III) sensing techniques and applications. Three papers on ITSs are as follows: (1) âVehicle positioning and speed estimation based on cellular network signals for urban roads,â by Lai and Kuo; (2) âA method for traffic congestion clustering judgment based on grey relational analysis,â by Zhang et al.; and (3) âSmartphone-based pedestrianâs avoidance behavior recognition towards opportunistic road anomaly detection,â by Ishikawa and Fujinami. Three papers on LBSs are as follows: (1) âA high-efficiency method of mobile positioning based on commercial vehicle operation data,â by Chen et al.; (2) âEfficient location privacy-preserving k-anonymity method based on the credible chain,â by Wang et al.; and (3) âProximity-based asynchronous messaging platform for location-based Internet of things service,â by Gon Jo et al. Two papers on sensing techniques and applications are as follows: (1) âDetection of electronic anklet wearersâ groupings throughout telematics monitoring,â by Machado et al.; and (2) âCamera coverage estimation based on multistage grid subdivision,â by Wang et al
4Sensing - decentralized processing for participatory sensing data
Trabalho apresentado no ùmbito do Mestrado em Engenharia Informåtica, como requisito parcial para obtenção do grau de Mestre em Engenharia Informåtica.Participatory sensing is a new application paradigm, stemming from both technical and social drives, which is currently gaining momentum as a research domain. It leverages the growing adoption of mobile phones equipped with sensors, such as camera, GPS and accelerometer, enabling users to collect and aggregate data, covering a wide area without incurring in the costs associated with a large-scale sensor network.
Related research in participatory sensing usually proposes an architecture based on a centralized back-end. Centralized solutions raise a set of issues. On one side, there is the implications of having a centralized repository hosting privacy sensitive information. On the other side, this
centralized model has financial costs that can discourage grassroots initiatives.
This dissertation focuses on the data management aspects of a decentralized infrastructure for the support of participatory sensing applications, leveraging the body of work on participatory
sensing and related areas, such as wireless and internet-wide sensor networks, peer-to-peer data management and stream processing. It proposes a framework covering a common set of data management requirements - from data acquisition, to processing, storage and querying - with the goal of lowering the barrier for the development and deployment of applications.
Alternative architectural approaches - RTree, QTree and NTree - are proposed and evaluated experimentally in the context of a case-study application - SpeedSense - supporting the monitoring and prediction of traffic conditions, through the collection of speed and location samples in an urban setting, using GPS equipped mobile phones
Security and Privacy Issues in Wireless Mesh Networks: A Survey
This book chapter identifies various security threats in wireless mesh
network (WMN). Keeping in mind the critical requirement of security and user
privacy in WMNs, this chapter provides a comprehensive overview of various
possible attacks on different layers of the communication protocol stack for
WMNs and their corresponding defense mechanisms. First, it identifies the
security vulnerabilities in the physical, link, network, transport, application
layers. Furthermore, various possible attacks on the key management protocols,
user authentication and access control protocols, and user privacy preservation
protocols are presented. After enumerating various possible attacks, the
chapter provides a detailed discussion on various existing security mechanisms
and protocols to defend against and wherever possible prevent the possible
attacks. Comparative analyses are also presented on the security schemes with
regards to the cryptographic schemes used, key management strategies deployed,
use of any trusted third party, computation and communication overhead involved
etc. The chapter then presents a brief discussion on various trust management
approaches for WMNs since trust and reputation-based schemes are increasingly
becoming popular for enforcing security in wireless networks. A number of open
problems in security and privacy issues for WMNs are subsequently discussed
before the chapter is finally concluded.Comment: 62 pages, 12 figures, 6 tables. This chapter is an extension of the
author's previous submission in arXiv submission: arXiv:1102.1226. There are
some text overlaps with the previous submissio
Machine learning and privacy preserving algorithms for spatial and temporal sensing
Sensing physical and social environments are ubiquitous in modern mobile phones,
IoT devices, and infrastructure-based settings. Information engraved in such
data, especially the time and location attributes have unprecedented potential
to characterize individual and crowd behaviour, natural and technological processes.
However, it is challenging to extract abstract knowledge from the data
due to its massive size, sequential structure, asynchronous operation, noisy characteristics,
privacy concerns, and real time analysis requirements. Therefore, the
primary goal of this thesis is to propose theoretically grounded and practically
useful algorithms to learn from location and time stamps in sensor data. The
proposed methods are inspired by tools from geometry, topology, and statistics.
They leverage structures in the temporal and spatial data by probabilistically
modeling noise, exploring topological structures embedded, and utilizing statistical
structure to protect personal information and simultaneously learn aggregate
information. Proposed algorithms are geared towards streaming and distributed
operation for efficiency. The usefulness of the methods is argued using mathematical
analysis and empirical experiments on real and artificial datasets
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