Analysis of crowdsensed WiFi fingerprints for indoor localization
Crowdsensing is more and more used nowadays for indoor localization based on Received Signal Strength (RSS) fingerprinting. It is a fast and efficient solution to maintain fingerprinting databases and to keep them up-to-date. There are however several challenges involved in crowdsensing RSS fingerpr...
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doaj-de187d10c48f4cf7b7f78a8308f06b1f2020-11-24T22:52:40ZengFRUCTProceedings of the XXth Conference of Open Innovations Association FRUCT2305-72542343-07372017-11-015622126827710.23919/FRUCT.2017.8250192Analysis of crowdsensed WiFi fingerprints for indoor localizationZhe Peng0Philipp Richter1Helena Leppakoski2Elena Simona Lohan3Tampere University of Technology, Tampere, FinlandTampere University of Technology, Tampere, FinlandTampere University of Technology, Tampere, FinlandTampere University of Technology, Tampere, FinlandCrowdsensing is more and more used nowadays for indoor localization based on Received Signal Strength (RSS) fingerprinting. It is a fast and efficient solution to maintain fingerprinting databases and to keep them up-to-date. There are however several challenges involved in crowdsensing RSS fingerprinting data, and these have been little investigated so far in the current literature. Our goal is to analyse the impact of various error sources in the crowdsensing process for the purpose of indoor localization. We rely our findings on a heavy measurement campaign involving 21 measurement devices and more than 6800 fingerprints. We show that crowdsensed databases are more robust to erroneous RSS reports than to malicious fingerprint position reports. We also evaluate the positioning accuracy achievable with crowdsensed databases in the absence of any available calibration.https://fruct.org/publications/fruct21/files/Pen.pdf crowdsourceWiFiWLANfingerprintingindoor localization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhe Peng Philipp Richter Helena Leppakoski Elena Simona Lohan |
spellingShingle |
Zhe Peng Philipp Richter Helena Leppakoski Elena Simona Lohan Analysis of crowdsensed WiFi fingerprints for indoor localization Proceedings of the XXth Conference of Open Innovations Association FRUCT crowdsource WiFi WLAN fingerprinting indoor localization |
author_facet |
Zhe Peng Philipp Richter Helena Leppakoski Elena Simona Lohan |
author_sort |
Zhe Peng |
title |
Analysis of crowdsensed WiFi fingerprints for indoor localization |
title_short |
Analysis of crowdsensed WiFi fingerprints for indoor localization |
title_full |
Analysis of crowdsensed WiFi fingerprints for indoor localization |
title_fullStr |
Analysis of crowdsensed WiFi fingerprints for indoor localization |
title_full_unstemmed |
Analysis of crowdsensed WiFi fingerprints for indoor localization |
title_sort |
analysis of crowdsensed wifi fingerprints for indoor localization |
publisher |
FRUCT |
series |
Proceedings of the XXth Conference of Open Innovations Association FRUCT |
issn |
2305-7254 2343-0737 |
publishDate |
2017-11-01 |
description |
Crowdsensing is more and more used nowadays for indoor localization based on Received Signal Strength (RSS) fingerprinting. It is a fast and efficient solution to maintain fingerprinting databases and to keep them up-to-date. There are however several challenges involved in crowdsensing RSS fingerprinting data, and these have been little investigated so far in the current literature. Our goal is to analyse the impact of various error sources in the crowdsensing process for the purpose of indoor localization. We rely our findings on a heavy measurement campaign involving 21 measurement devices and more than 6800 fingerprints. We show that crowdsensed databases are more robust to erroneous RSS reports than to malicious fingerprint position reports. We also evaluate the positioning accuracy achievable with crowdsensed databases in the absence of any available calibration. |
topic |
crowdsource WiFi WLAN fingerprinting indoor localization |
url |
https://fruct.org/publications/fruct21/files/Pen.pdf
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work_keys_str_mv |
AT zhepeng analysisofcrowdsensedwififingerprintsforindoorlocalization AT philipprichter analysisofcrowdsensedwififingerprintsforindoorlocalization AT helenaleppakoski analysisofcrowdsensedwififingerprintsforindoorlocalization AT elenasimonalohan analysisofcrowdsensedwififingerprintsforindoorlocalization |
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1725665133162659840 |