89 research outputs found
User privacy risks and protection in WLAN-based indoor positioning
Using location-based services (LBS) is the new trend for mobile users. LBS mostly exploit GPS and WLAN infrastructures for outdoor and indoor environments, respectively, in order to determine a user's location. After a location is known to a LBS, the network can provide location related contextual information such as nearby events, places, or navigation for the mobile users. Currently, LBS have been specically growing rapidly in the domain of indoor positioning as more public places, e.g. schools, shopping centers, and airports are being equipped with WLAN networks.
The aforementioned situation leads to the fact that huge amount of tracking data gets possessed by a wide variety of different LBS and it poses the risk of location privacy violation of citizens. The problem is not only that this information reveals the places that a person has visited, but that it can also expose their behaviors and habits to the LBS and associated third parties. The conditions exacerbate as there are no appropriate regulations on how the tracking data is used by the LBS. In addition, the LBS data servers are under constant attacks by third parties who seek to access this kind of valuable data. Furthermore, the private sector has initiated the tracking of their customers in such places as shopping malls by means of simply collecting their MAC addresses.
The thesis is divided into two parts. In the literature part of this thesis, different indoor positioning techniques, location privacy leaks, and the solutions to tackle the problem will be explained. In the second part, we show practical implementation examples about how and at what extent a user may be positioned by the network, based simply on the mobile MAC address or using jointly MAC and signal strength information
Design of an adaptive RF fingerprint indoor positioning system
RF fingerprinting can solve the indoor positioning problem with satisfactory
accuracy, but the methodology depends on the so-called radio map calibrated in
the offline phase via manual site-survey, which is costly, time-consuming and
somewhat error-prone. It also assumes the RF fingerprint’s signal-spatial
correlations to remain static throughout the online positioning phase, which
generally does not hold in practice. This is because indoor environments
constantly experience dynamic changes, causing the radio signal strengths to
fluctuate over time, which weakens the signal-spatial correlations of the RF
fingerprints. State-of-the-arts have proposed adaptive RF fingerprint
methodology capable of calibrating the radio map in real-time and on-demand
to address these drawbacks. However, existing implementations are highly
server-centric, which is less robust, does not scale well, and not privacy-friendly.
This thesis aims to address these drawbacks by exploring the
feasibility of implementing an adaptive RF fingerprint indoor positioning
system in a distributed and client-centric architecture using only commodity
Wi-Fi hardware, so it can seamlessly integrate with existing Wi-Fi network and
allow it to offer both networking and positioning services. Such approach has
not been explored in previous works, which forms the basis of this thesis’ main
contribution.
The proposed methodology utilizes a network of distributed location beacons as
its reference infrastructure; hence the system is more robust since it does not
have any single point-of-failure. Each location beacon periodically broadcasts its
coordinate to announce its presence in the area, plus coefficients that model its
real-time RSS distribution around the transmitting antenna. These coefficients
are constantly self-calibrated by the location beacon using empirical RSS
measurements obtained from neighbouring location beacons in a collaborative
fashion, and fitting the values using path loss with log-normal shadowing model
as a function of inter-beacon distances while minimizing the error in a least-squared
sense. By self-modelling its RSS distribution in real-time, the location
beacon becomes aware of its dynamically fluctuating signal levels caused by
physical, environmental and temporal characteristics of the indoor
environment. The implementation of this self-modelling feature on commodity
Wi-Fi hardware is another original contribution of this thesis.
Location discovery is managed locally by the clients, which means the proposed
system can support unlimited number of client devices simultaneously while
also protect user’s privacy because no information is shared with external
parties. It starts by listening for beacon frames broadcasted by nearby location
beacons and measuring their RSS values to establish the RF fingerprint of the
unknown point. Next, it simulates the reference RF fingerprints of
predetermined points inside the target area, effectively calibrating the site’s
radio map, by computing the RSS values of all detected location beacons using
their respective coordinates and path loss coefficients embedded inside the
received beacon frames. Note that the coefficients model the real-time RSS
distribution of each location beacon around its transmitting antenna; hence, the
radio map is able to adapt itself to the dynamic fluctuations of the radio signal to
maintain its signal-spatial correlations. The final step is to search the radio map
to find the reference RF fingerprint that most closely resembles the unknown
sample, where its coordinate is returned as the location result.
One positioning approach would be to first construct a full radio map by
computing the RSS of all detected location beacons at all predetermined
calibration points, then followed by an exhaustive search over all reference RF
fingerprints to find the best match. Generally, RF fingerprint algorithm performs
better with higher number of calibration points per unit area since more
locations can be classified, while extra RSS components can help to better
distinguish between nearby calibration points. However, to calibrate and search
many RF fingerprints will incur substantial computing costs, which is unsuitable
for power and resource limited client devices. To address this challenge, this
thesis introduces a novel algorithm suitable for client-centric positioning as
another contribution. Given an unknown RF fingerprint to solve for location, the
proposed algorithm first sorts the RSS in descending order. It then iterates over
this list, first selecting the location beacon with the strongest RSS because this
implies the unknown location is closest to the said location beacon. Next, it
computes the beacon’s RSS using its path loss coefficients and coordinate
information one calibration point at a time while simultaneously compares the
result with the measured value. If they are similar, the algorithm keeps this
location for subsequent processing; else it is removed because distant points
relative to the unknown location would exhibit vastly different RSS values due
to the different site-specific obstructions encountered by the radio signal
propagation. The algorithm repeats the process by selecting the next strongest
location beacon, but this time it only computes its RSS for those points identified
in the previous iteration. After the last iteration completes, the average
coordinate of remaining calibration points is returned as the location result.
Matlab simulation shows the proposed algorithm only takes about half of the
time to produce a location estimate with similar positioning accuracy compared
to conventional algorithm that does a full radio map calibration and exhaustive
RF fingerprint search.
As part of the thesis’ contribution, a prototype of the proposed indoor
positioning system is developed using only commodity Wi-Fi hardware and
open-source software to evaluate its usability in real-world settings and to
demonstrate possible implementation on existing Wi-Fi installations.
Experimental results verify the proposed system yields consistent positioning
accuracy, even in highly dynamic indoor environments and changing location
beacon topologies
A survey on wireless indoor localization from the device perspective
With the marvelous development of wireless techniques and ubiquitous deployment of wireless systems indoors, myriad indoor location-based services (ILBSs) have permeated into numerous aspects of modern life. The most fundamental functionality is to pinpoint the location of the target via wireless devices. According to how wireless devices interact with the target, wireless indoor localization schemes roughly fall into two categories: device based and device free. In device-based localization, a wireless device (e.g., a smartphone) is attached to the target and computes its location through cooperation with other deployed wireless devices. In device-free localization, the target carries no wireless devices, while the wireless infrastructure deployed in the environment determines the target’s location by analyzing its impact on wireless signals.
This article is intended to offer a comprehensive state-of-the-art survey on wireless indoor localization from the device perspective. In this survey, we review the recent advances in both modes by elaborating on the underlying wireless modalities, basic localization principles, and data fusion techniques, with special emphasis on emerging trends in (1) leveraging smartphones to integrate wireless and sensor capabilities and extend to the social context for device-based localization, and (2) extracting specific wireless features to trigger novel human-centric device-free localization. We comprehensively compare each scheme in terms of accuracy, cost, scalability, and energy efficiency. Furthermore, we take a first look at intrinsic technical challenges in both categories and identify several open research issues associated with these new challenges.</jats:p
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A model personal energy meter
Every day each of us consumes a significant amount of energy, both directly through transport, heating and use of appliances, and indirectly from our needs for the production of food, manufacture of goods and provision of services. This dissertation investigates a personal energy meter which can record and apportion an individual's energy usage in order to supply baseline information and incentives for reducing our environmental impact.
If the energy costs of large shared resources are split evenly without regard for individual consumption each person minimises his own losses by taking advantage of others. Context awareness offers the potential to change this balance and apportion energy costs to those who cause them to be incurred. This dissertation explores how sensor systems installed in many buildings today can be used to apportion energy consumption between users, including an evaluation of a range of strategies in a case study and elaboration of the overriding principles that are generally applicable. It also shows how second-order estimators combined with location data can provide a proxy for fine-grained sensing.
A key ingredient for apportionment mechanisms is data on energy usage. This may come from metering devices or buildings directly, or from profiling devices and using secondary indicators to infer their power state. A mechanism for profiling devices to determine the energy costs of specific activities, particularly applicable to shared programmable devices is presented which can make this process simpler and more accurate. By combining crowdsourced building-inventory information and a simple building energy model it is possible to estimate an individual's energy use disaggregated by device class with very little direct
sensing.
Contextual information provides crucial cues for apportioning the use and energy costs of resources, and one of the most valuable sources from which to infer context is location. A key ingredient for a personal energy meter is a low cost, low infrastructure location system that can be deployed on a truly global scale. This dissertation presents a description and evaluation of the new concept of inquiry-free Bluetooth tracking that has the potential to offer indoor location information with significantly less infrastructure and calibration than other systems.
Finally, a suitable architecture for a personal energy meter on a global scale is demonstrated using a mobile phone application to aggregate energy feeds based on the case studies and technologies developed
The always best positioned paradigm for mobile indoor applications
In this dissertation, methods for personal positioning in outdoor and indoor environments are investigated. The Always Best Positioned paradigm, which has the goal of providing a preferably consistent self-positioning, will be defined. Furthermore, the localization toolkit LOCATO will be presented, which allows to easily realize positioning systems that follow the paradigm. New algorithms were developed, which particularly address the robustness of positioning systems with respect to the Always Best Positioned paradigm. With the help of this toolkit, three example positioning-systems were implemented, each designed for different applications and requirements: a low-cost system, which can be used in conjunction with user-adaptive public displays, a so-called opportunistic system, which enables positioning with room-level accuracy in any building that provides a WiFi infrastructure, and a high-accuracy system for instrumented environments, which works with active RFID tags and infrared beacons. Furthermore, a new and unique evaluation-method for positioning systems is presented, which uses step-accurate natural walking-traces as ground truth. Finally, six location based services will be presented, which were realized either with the tools provided by LOCATO or with one of the example positioning-systems.In dieser Doktorarbeit werden Methoden zur Personenpositionierung im Innen- und Außenbereich von Gebäuden untersucht. Es wird das ,,Always Best Positioned” Paradigma definiert, welches eine möglichst lückenlose Selbstpositionierung zum Ziel hat. Weiterhin wird die Lokalisierungsplattform LOCATO vorgestellt, welche eine einfache Umsetzung von Positionierungssystemen ermöglicht. Hierzu wurden neue Algorithmen entwickelt, welche gezielt die Robustheit von Positionierungssystemen unter Berücksichtigung des ,,Always Best Positioned” Paradigmas angehen. Mit Hilfe dieser Plattform wurden drei Beispiel Positionierungssysteme entwickelt, welche unterschiedliche Einsatzgebiete berücksichtigen: Ein kostengünstiges System, das im Zusammenhang mit benutzeradaptiven öffentlichen Bildschirmen benutzt werden kann; ein sogenanntes opportunistisches Positionierungssystem, welches eine raumgenaue Positionierung in allen Gebäuden mit WLAN-Infrastruktur ermöglicht, sowie ein metergenaues Positionierungssystem, welches mit Hilfe einer Instrumentierung aus aktiven RFID-Tags und Infrarot-Baken arbeitet. Weiterhin wird erstmalig eine Positionierungsevaluation vorgestellt, welche schrittgenaue, natürliche Bewegungspfade als Referenzsystem einsetzt. Im Abschluss werden 6 lokationsbasierte Dienste vorgestellt, welche entweder mit Hilfe von LOCATO oder mit Hilfe einer der drei Beispiel-Positionierungssysteme entwickelt wurden
Survey and Systematization of Secure Device Pairing
Secure Device Pairing (SDP) schemes have been developed to facilitate secure
communications among smart devices, both personal mobile devices and Internet
of Things (IoT) devices. Comparison and assessment of SDP schemes is
troublesome, because each scheme makes different assumptions about out-of-band
channels and adversary models, and are driven by their particular use-cases. A
conceptual model that facilitates meaningful comparison among SDP schemes is
missing. We provide such a model. In this article, we survey and analyze a wide
range of SDP schemes that are described in the literature, including a number
that have been adopted as standards. A system model and consistent terminology
for SDP schemes are built on the foundation of this survey, which are then used
to classify existing SDP schemes into a taxonomy that, for the first time,
enables their meaningful comparison and analysis.The existing SDP schemes are
analyzed using this model, revealing common systemic security weaknesses among
the surveyed SDP schemes that should become priority areas for future SDP
research, such as improving the integration of privacy requirements into the
design of SDP schemes. Our results allow SDP scheme designers to create schemes
that are more easily comparable with one another, and to assist the prevention
of persisting the weaknesses common to the current generation of SDP schemes.Comment: 34 pages, 5 figures, 3 tables, accepted at IEEE Communications
Surveys & Tutorials 2017 (Volume: PP, Issue: 99
Scalable positioning of commodity mobile devices using audio signals
This thesis explores the problem of computing a position map for co-located mobile devices. The positioning should happen in a scalable manner without requiring specialized hardware and without requiring specialized infrastructure (except basic Wi-Fi or cellular access). At events like meetings, talks, or conferences, a position map can aid spontaneous communication among users based on their relative position in two ways. First, it enables users to choose message recipients based on their relative position, which also enables the position-based distribution of documents. Second, it enables senders to attach their position to messages, which can facilitate interaction between speaker and audience in a lecture hall and enables the collection of feedback based on users’ location. In this thesis, we present Sonoloc, a mobile app and system that, by relying on acoustic signals, allows a set of commodity smart devices to determine their relative positions. Sonoloc can position any number of devices within acoustic range with a constant number of acoustic signals emitted by a subset of devices. Our experimental evaluation with up to 115 devices in real rooms shows that – despite substantial background noise – the system can locate devices with an accuracy of tens of centimeters using no more than 15 acoustic signals.Diese Dissertation befasst sich mit dem Problem, eine Positionskarte von sich am gleichen Ort befindenden mobilen Geräten zu berechnen. Dies soll skalierbar, ohne Verwendung von spezialisierter Hardware oder Infrastruktur (ausgenommen einfache WLAN- oder Mobilfunkzugang) erfolgen. Bei Veranstaltungen wie Meetings, Diskussionen oder Konferenzen kann eine Positionskarte die Benutzer bei spontaner Kommunikation mithilfe der relativen Positionen in zweierlei Hinsicht unterstützen. Erstens ermöglicht sie den Benutzern, die Empfänger von Nachrichten aufgrund deren Position zu wählen, was auch eine positionsabhängige Verteilung von Unterlagen erlaubt. Zweitens ermöglicht sie den Sendern, ihre Position in die Nachrichten zu integrieren, was eine Interaktion zwischen Referent und Zuhörer in einem Hörsaal und die Sammlung von positionsabhängigen Rückmeldungen erlaubt. In dieser Dissertation stellen wir die Mobile-App und das System Sonoloc vor, das mithilfe von Tonsignalen erlaubt, die relative Position handelsüblicher, intelligenter Geräte zu bestimmen. Sonoloc kann eine beliebige Zahl von Geräten innerhalb des Hörbereichs durch eine gleichbleibende Zahl von Tonsignalen, die von einer Teilmenge der Geräte gesendet werden, lokalisieren. Unsere experimentelle Analyse mit bis zu 115 Geräten in echten Räumen zeigt, dass das System trotz signifikanter Hintergrundgeräusche unter Verwendung von bis zu 15 Tonsignalen mit einer Genauigkeit von wenigen Dezimetern Geräte lokalisieren kann.This work was supported in part by the European Research Council (ERC Synergy imPACT 610150), the German Science Foundation (DFG CRC 1223), the Japan Society for the Promotion of Science (Grant-in-Aid for Scientific Research (A), KAKENHI Grant Number 16H01735), and the National Science Foundation (NSF Awards CNS 1526635 and CNS 1314857)
Smart technologies and beyond: exploring how a smart band can assist in monitoring children’s independent mobility & well-being
The problem which is being investigated through this thesis is not having a device(s) or method(s) which are appropriate for monitoring a child’s vital and tracking a child’s location. This aspect is being explored by other researchers which are yet to find a viable solution.
This work focuses on providing a solution that would consider using the Internet of Things for measuring and improving children’s health. Additionally, the focus of this research is on the use of technology for health and the needs of parents who are concerned about their child’s physical health and well-being. This work also provides an insight into how technology is used during the pandemic.
This thesis will be based on a mixture of quantitative and qualitative research, which will have been used to review the following areas covering key aspects and focuses of this study which are (i) Children’s Independent Mobility (ii) Physical activity for children (iii) Emotions of a child (iv) Smart Technologies and (v) Children’s smart wearables. This will allow a review of the problem in detail and how technology can help the health sector, especially for children. The deliverable of this study is to recommend a suitable smart band device that enables location tracking of the child, activity tracking as well as monitoring the health and wellbeing of the child.
The research also includes an element of practical research in the form of (i) Surveys, the use of smart technology and a perspective on the solution from parents. (ii) Focus group, in the form of a survey allowing opinions and collection of information on the child and what the parents think of smart technology and how it could potentially help with their fears. (iii) Observation, which allows the collection of data from children who were given six activities to conduct while wearing the Fitbit Charge HR. The information gained from these elements will help provide guidelines for a proposed solution.
In this thesis, there are three frameworks which are about (i) Research process for this study (ii) Key Performance Indicators (KPIs) which are findings from the literature review and (iii) Proposed framework for the solution, all three combined frameworks can help health professionals and many parents who want an efficient and reliable device, also deployment of technologies used in the health industry for children in support of independent mobility. Current frameworks have some considerations within the technology and medical field but were not up to date with the latest elements such as parents fears within today’s world and the advanced features of technology
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