185 research outputs found
Human Crowdsourcing Data for Indoor Location Applied to Ambient Assisted Living Scenarios
In the last decades, the rise of life expectancy has accelerated the demand for new technological
solutions to provide a longer life with improved quality. One of the major areas
of the Ambient Assisted Living aims to monitor the elderly location indoors. For this purpose,
indoor positioning systems are valuable tools and can be classified depending on the
need of a supporting infrastructure. Infrastructure-based systems require the investment
on expensive equipment and existing infrastructure-free systems, although rely on the
pervasively available characteristics of the buildings, present some limitations regarding
the extensive process of acquiring and maintaining fingerprints, the maps that store the
environmental characteristics to be used in the localisation phase. These problems hinder
indoor positioning systems to be deployed in most scenarios.
To overcome these limitations, an algorithm for the automatic construction of indoor
floor plans and environmental fingerprints is proposed. With the use of crowdsourcing
techniques, where the extensiveness of a task is reduced with the help of a large undefined
group of users, the algorithm relies on the combination ofmultiple sources of information,
collected in a non-annotated way by common smartphones. The crowdsourced data is
composed by inertial sensors, responsible for estimating the usersâ trajectories, Wi-Fi
radio and magnetic field signals. Wi-Fi radio data is used to cluster the trajectories into
smaller groups, each corresponding to specific areas of the building. Distance metrics
applied to magnetic field signals are used to identify geomagnetic similarities between
different usersâ trajectories. The buildingâs floor plan is then automatically created, which
results in fingerprints labelled with physical locations.
Experimental results show that the proposed algorithm achieved comparable floor
plan and fingerprints to those acquired manually, allowing the conclusion that is possible
to automate the setup process of infrastructure-free systems. With these results, this
solution can be applied in any fingerprinting-based indoor positioning system
Fingerprinting Based Indoor Localization Considering the Dynamic Nature of Wi-Fi Signals
Current localization techniques in the outdoors cannot work well in indoors. The Wi-Fi fingerprinting technique is an emerging localization technique for indoor environments. However, in this technique, the dynamic nature of WiFi signals affects the accuracy of the measurements. In this paper, we use the affinity propagation clustering method to decrease the computation complexity in location estimation. Then, we use the least variance of Received Signal Strength (RSS) measured among Access Points (APs) in each cluster. Also, we assign lower weights to alter APs for each point in a cluster, to represent the level of similarity to Test Point (TP) by considering the dynamic nature of signals in indoor environments. A method for updating the radio map and improving the results is then proposed to decrease the cost of constructing the radio map. Simulation results show that the proposed method has 22.5% improvement in average in localization results, considering one altering AP in the layout, compared to the case when only RSS subset sampling is considered for localization because of altering APs
STCP: Receiver-agnostic Communication Enabled by Space-Time Cloud Pointers
Department of Electrical and Computer Engineering (Computer Engineering)During the last decade, mobile communication technologies have rapidly evolved and ubiquitous network connectivity is nearly achieved. However, we observe that there are critical situations where none of the existing mobile communication technologies is usable. Such situations are often found when messages need to be delivered to arbitrary persons or devices that are located in a specific space at a specific time. For instance at a disaster scene, current communication methods are incapable of delivering messages of a rescuer to the group of people at a specific area even when their cellular connections are alive because the rescuer cannot specify the receivers of the messages. We name this as receiver-unknown problem and propose a viable solution called SpaceMessaging. SpaceMessaging adopts the idea of Post-it by which we casually deliver our messages to a person who happens to visit a location at a random moment. To enable SpaceMessaging, we realize the concept of posting messages to a space by implementing cloud-pointers at a cloud server to which messages can be posted and from which messages can fetched by arbitrary mobile devices that are located at that space. Our Android-based prototype of SpaceMessaging, which particularly maps a cloud-pointer to a WiFi signal fingerprint captured from mobile devices, demonstrates that it first allows mobile devices to deliver messages to a specific space and to listen to the messages of a specific space in a highly accurate manner (with more than 90% of Recall)
A Meta-Review of Indoor Positioning Systems
An accurate and reliable Indoor Positioning System (IPS) applicable to most indoor scenarios has been sought for many years. The number of technologies, techniques, and approaches in general used in IPS proposals is remarkable. Such diversity, coupled with the lack of strict and verifiable evaluations, leads to difficulties for appreciating the true value of most proposals. This paper provides a meta-review that performed a comprehensive compilation of 62 survey papers in the area of indoor positioning. The paper provides the reader with an introduction to IPS and the different technologies, techniques, and some methods commonly employed. The introduction is supported by consensus found in the selected surveys and referenced using them. Thus, the meta-review allows the reader to inspect the IPS current state at a glance and serve as a guide for the reader to easily find further details on each technology used in IPS. The analyses of the meta-review contributed with insights on the abundance and academic significance of published IPS proposals using the criterion of the number of citations. Moreover, 75 works are identified as relevant works in the research topic from a selection of about 4000 works cited in the analyzed surveys
A Soft Range Limited K-Nearest Neighbours Algorithm for Indoor Localization Enhancement
This paper proposes a soft range limited K nearest neighbours (SRL-KNN)
localization fingerprinting algorithm. The conventional KNN determines the
neighbours of a user by calculating and ranking the fingerprint distance
measured at the unknown user location and the reference locations in the
database. Different from that method, SRL-KNN scales the fingerprint distance
by a range factor related to the physical distance between the user's previous
position and the reference location in the database to reduce the spatial
ambiguity in localization. Although utilizing the prior locations, SRL-KNN does
not require knowledge of the exact moving speed and direction of the user.
Moreover, to take into account of the temporal fluctuations of the received
signal strength indicator (RSSI), RSSI histogram is incorporated into the
distance calculation. Actual on-site experiments demonstrate that the new
algorithm achieves an average localization error of m with of the
errors under m, which outperforms conventional KNN algorithms by
under the same test environment.Comment: Received signal strength indicator (RSSI), WiFi indoor localization,
K-nearest neighbor (KNN), fingerprint-based localizatio
A novel weighted fusion based efficient clustering for improved wi-fi fingerprint indoor positioning
Position Estimation in Mixed Indoor-Outdoor Environment Using Signals of Opportunity and Deep Learning Approach
To improve the user's localization estimation in indoor and outdoor environment a novel radiolocalization system using deep learning dedicated to work both in indoor and outdoor environment is proposed. It is based on the radio signatures using radio signals of opportunity from LTE an WiFi networks. The measurements of channel state estimators from LTE network and from WiFi network are taken by using the developed application. The user's position is calculated with a trained neural network system's models. Additionally the influence of various number of measurements from LTE and WiFi networks in the input vector on the positioning accuracy was examined. From the results it can be seen that using hybrid deep learning algorithm with a radio signatures method can result in localization error 24.3 m and 1.9 m lower comparing respectively to the GPS system and standalone deep learning algorithm with a radio signatures method in indoor environment. What is more, the combination of LTE and WiFi signals measurement in an input vector results in better indoor and outdoor as well as floor classification accuracy and less positioning error comparing to the input vector consisting measurements from only LTE network or from only WiFi network
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