Geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks

Device-free localization (DFL) is a method of determining the location of a target without requiring the target to wear a device or tag. This capability to track a device-free target is useful in applications where the target may be uncooperative and unwilling to be located and monitored. In radio f...

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Main Author: Talampas, Marc Caesar R.
Other Authors: Low Kay Soon
Format: Theses and Dissertations
Language:English
Published: 2016
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Online Access:https://hdl.handle.net/10356/69011
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-690112023-07-04T16:37:38Z Geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks Talampas, Marc Caesar R. Low Kay Soon School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering Device-free localization (DFL) is a method of determining the location of a target without requiring the target to wear a device or tag. This capability to track a device-free target is useful in applications where the target may be uncooperative and unwilling to be located and monitored. In radio frequency-based DFL systems that use received-signal strength (RSS) measurements, the changes induced by the target’s presence or motion on the RSS of the network’s links are used to infer his location. A number of RSS-based DFL algorithms have been recently proposed that can locate and track a target accurately, albeit with high computational requirements. This thesis presents new DFL algorithms that have lower computational costs while able to track a single device-free target with high accuracy. In this thesis, a new single target RSS-based DFL algorithm, referred to as the “Geometric Filter” (GF) algorithm is proposed. The GF algorithm uses simple geometric objects to represent radio links, probable target locations, and locational filters. The intersection points of line segments representing the target-affected links are used as probable locations of the device-free target. A locational filter is used to remove outlier links and points. Information about the target’s prior location and induced RSS changes are used to further refine the target location estimates. In order to perform accurate tracking in multipath-rich environments, the GF algorithm was extended further to utilize channel diversity. The “Multi-Channel Geometric Filter” (MCGF) fuses measurements of the RSS changes of each link across different frequency channels, and uses link-specific thresholds to detect the target-affected links. The measurements are then processed by a modified GF algorithm that uses estimates of the overall fade levels of intersecting links as weights to generate the target location estimates. The GF and MCGF algorithms have been evaluated using single-target tracking experiments in both indoor and outdoor environments. In these experiments, the new algorithms have been shown to outperform existing DFL algorithms in both tracking accuracy and execution time. DOCTOR OF PHILOSOPHY (EEE) 2016-08-31T02:47:32Z 2016-08-31T02:47:32Z 2016 Thesis Talampas, M. C. R. (2016). Geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/69011 10.32657/10356/69011 en 121 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering
spellingShingle DRNTU::Engineering::Electrical and electronic engineering
Talampas, Marc Caesar R.
Geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks
description Device-free localization (DFL) is a method of determining the location of a target without requiring the target to wear a device or tag. This capability to track a device-free target is useful in applications where the target may be uncooperative and unwilling to be located and monitored. In radio frequency-based DFL systems that use received-signal strength (RSS) measurements, the changes induced by the target’s presence or motion on the RSS of the network’s links are used to infer his location. A number of RSS-based DFL algorithms have been recently proposed that can locate and track a target accurately, albeit with high computational requirements. This thesis presents new DFL algorithms that have lower computational costs while able to track a single device-free target with high accuracy. In this thesis, a new single target RSS-based DFL algorithm, referred to as the “Geometric Filter” (GF) algorithm is proposed. The GF algorithm uses simple geometric objects to represent radio links, probable target locations, and locational filters. The intersection points of line segments representing the target-affected links are used as probable locations of the device-free target. A locational filter is used to remove outlier links and points. Information about the target’s prior location and induced RSS changes are used to further refine the target location estimates. In order to perform accurate tracking in multipath-rich environments, the GF algorithm was extended further to utilize channel diversity. The “Multi-Channel Geometric Filter” (MCGF) fuses measurements of the RSS changes of each link across different frequency channels, and uses link-specific thresholds to detect the target-affected links. The measurements are then processed by a modified GF algorithm that uses estimates of the overall fade levels of intersecting links as weights to generate the target location estimates. The GF and MCGF algorithms have been evaluated using single-target tracking experiments in both indoor and outdoor environments. In these experiments, the new algorithms have been shown to outperform existing DFL algorithms in both tracking accuracy and execution time.
author2 Low Kay Soon
author_facet Low Kay Soon
Talampas, Marc Caesar R.
format Theses and Dissertations
author Talampas, Marc Caesar R.
author_sort Talampas, Marc Caesar R.
title Geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks
title_short Geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks
title_full Geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks
title_fullStr Geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks
title_full_unstemmed Geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks
title_sort geometric filter algorithms for device-free localization using received-signal strength in wireless sensor networks
publishDate 2016
url https://hdl.handle.net/10356/69011
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