Cargando…

A Mixed Approach to Similarity Metric Selection in Affinity Propagation-Based WiFi Fingerprinting Indoor Positioning

The weighted k-nearest neighbors (WkNN) algorithm is by far the most popular choice in the design of fingerprinting indoor positioning systems based on WiFi received signal strength (RSS). WkNN estimates the position of a target device by selecting k reference points (RPs) based on the similarity of...

Descripción completa

Detalles Bibliográficos
Autores principales: Caso, Giuseppe, de Nardis, Luca, di Benedetto, Maria-Gabriella
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4701250/
https://www.ncbi.nlm.nih.gov/pubmed/26528984
http://dx.doi.org/10.3390/s151127692
_version_ 1782408444072951808
author Caso, Giuseppe
de Nardis, Luca
di Benedetto, Maria-Gabriella
author_facet Caso, Giuseppe
de Nardis, Luca
di Benedetto, Maria-Gabriella
author_sort Caso, Giuseppe
collection PubMed
description The weighted k-nearest neighbors (WkNN) algorithm is by far the most popular choice in the design of fingerprinting indoor positioning systems based on WiFi received signal strength (RSS). WkNN estimates the position of a target device by selecting k reference points (RPs) based on the similarity of their fingerprints with the measured RSS values. The position of the target device is then obtained as a weighted sum of the positions of the k RPs. Two-step WkNN positioning algorithms were recently proposed, in which RPs are divided into clusters using the affinity propagation clustering algorithm, and one representative for each cluster is selected. Only cluster representatives are then considered during the position estimation, leading to a significant computational complexity reduction compared to traditional, flat WkNN. Flat and two-step WkNN share the issue of properly selecting the similarity metric so as to guarantee good positioning accuracy: in two-step WkNN, in particular, the metric impacts three different steps in the position estimation, that is cluster formation, cluster selection and RP selection and weighting. So far, however, the only similarity metric considered in the literature was the one proposed in the original formulation of the affinity propagation algorithm. This paper fills this gap by comparing different metrics and, based on this comparison, proposes a novel mixed approach in which different metrics are adopted in the different steps of the position estimation procedure. The analysis is supported by an extensive experimental campaign carried out in a multi-floor 3D indoor positioning testbed. The impact of similarity metrics and their combinations on the structure and size of the resulting clusters, 3D positioning accuracy and computational complexity are investigated. Results show that the adoption of metrics different from the one proposed in the original affinity propagation algorithm and, in particular, the combination of different metrics can significantly improve the positioning accuracy while preserving the efficiency in computational complexity typical of two-step algorithms.
format Online
Article
Text
id pubmed-4701250
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-47012502016-01-19 A Mixed Approach to Similarity Metric Selection in Affinity Propagation-Based WiFi Fingerprinting Indoor Positioning Caso, Giuseppe de Nardis, Luca di Benedetto, Maria-Gabriella Sensors (Basel) Article The weighted k-nearest neighbors (WkNN) algorithm is by far the most popular choice in the design of fingerprinting indoor positioning systems based on WiFi received signal strength (RSS). WkNN estimates the position of a target device by selecting k reference points (RPs) based on the similarity of their fingerprints with the measured RSS values. The position of the target device is then obtained as a weighted sum of the positions of the k RPs. Two-step WkNN positioning algorithms were recently proposed, in which RPs are divided into clusters using the affinity propagation clustering algorithm, and one representative for each cluster is selected. Only cluster representatives are then considered during the position estimation, leading to a significant computational complexity reduction compared to traditional, flat WkNN. Flat and two-step WkNN share the issue of properly selecting the similarity metric so as to guarantee good positioning accuracy: in two-step WkNN, in particular, the metric impacts three different steps in the position estimation, that is cluster formation, cluster selection and RP selection and weighting. So far, however, the only similarity metric considered in the literature was the one proposed in the original formulation of the affinity propagation algorithm. This paper fills this gap by comparing different metrics and, based on this comparison, proposes a novel mixed approach in which different metrics are adopted in the different steps of the position estimation procedure. The analysis is supported by an extensive experimental campaign carried out in a multi-floor 3D indoor positioning testbed. The impact of similarity metrics and their combinations on the structure and size of the resulting clusters, 3D positioning accuracy and computational complexity are investigated. Results show that the adoption of metrics different from the one proposed in the original affinity propagation algorithm and, in particular, the combination of different metrics can significantly improve the positioning accuracy while preserving the efficiency in computational complexity typical of two-step algorithms. MDPI 2015-10-30 /pmc/articles/PMC4701250/ /pubmed/26528984 http://dx.doi.org/10.3390/s151127692 Text en © 2015 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Caso, Giuseppe
de Nardis, Luca
di Benedetto, Maria-Gabriella
A Mixed Approach to Similarity Metric Selection in Affinity Propagation-Based WiFi Fingerprinting Indoor Positioning
title A Mixed Approach to Similarity Metric Selection in Affinity Propagation-Based WiFi Fingerprinting Indoor Positioning
title_full A Mixed Approach to Similarity Metric Selection in Affinity Propagation-Based WiFi Fingerprinting Indoor Positioning
title_fullStr A Mixed Approach to Similarity Metric Selection in Affinity Propagation-Based WiFi Fingerprinting Indoor Positioning
title_full_unstemmed A Mixed Approach to Similarity Metric Selection in Affinity Propagation-Based WiFi Fingerprinting Indoor Positioning
title_short A Mixed Approach to Similarity Metric Selection in Affinity Propagation-Based WiFi Fingerprinting Indoor Positioning
title_sort mixed approach to similarity metric selection in affinity propagation-based wifi fingerprinting indoor positioning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4701250/
https://www.ncbi.nlm.nih.gov/pubmed/26528984
http://dx.doi.org/10.3390/s151127692
work_keys_str_mv AT casogiuseppe amixedapproachtosimilaritymetricselectioninaffinitypropagationbasedwififingerprintingindoorpositioning
AT denardisluca amixedapproachtosimilaritymetricselectioninaffinitypropagationbasedwififingerprintingindoorpositioning
AT dibenedettomariagabriella amixedapproachtosimilaritymetricselectioninaffinitypropagationbasedwififingerprintingindoorpositioning
AT casogiuseppe mixedapproachtosimilaritymetricselectioninaffinitypropagationbasedwififingerprintingindoorpositioning
AT denardisluca mixedapproachtosimilaritymetricselectioninaffinitypropagationbasedwififingerprintingindoorpositioning
AT dibenedettomariagabriella mixedapproachtosimilaritymetricselectioninaffinitypropagationbasedwififingerprintingindoorpositioning