Discovering Influential Positions in RFID-Based Indoor Tracking Data
The rapid development of indoor localization techniques such as Wi-Fi and RFID makes it possible to obtain users’ position-tracking data in indoor space. Indoor position-tracking data, also known as indoor moving trajectories, offer many new opportunities to mine decision-making knowledge. In this p...
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doaj-96b6df57e9a94cada1b561a28b5ed1c72020-11-25T02:28:12ZengMDPI AGInformation2078-24892020-06-011133033010.3390/info11060330Discovering Influential Positions in RFID-Based Indoor Tracking DataYe Jin0Lizhen Cui1School of Software, Shandong University, Jinan 250100, ChinaSchool of Software, Shandong University, Jinan 250100, ChinaThe rapid development of indoor localization techniques such as Wi-Fi and RFID makes it possible to obtain users’ position-tracking data in indoor space. Indoor position-tracking data, also known as indoor moving trajectories, offer many new opportunities to mine decision-making knowledge. In this paper, we study the detection of highly influential positions from indoor position-tracking data, e.g., to detect highly influential positions in a business center, or to detect the hottest shops in a shopping mall according to users’ indoor position-tracking data. We first describe three baseline solutions to this problem, which are count-based, density-based, and duration-based algorithms. Then, motivated by the H-index for evaluating the influence of an author or a journal in academia, we propose a new algorithm called H-Count, which evaluates the influence of an indoor position similarly to the H-index. We further present an improvement of the H-Count by taking a filtering step to remove unqualified position-tracking records. This is based on the observation that many visits to a position such as a gate are meaningless for the detection of influential indoor positions. Finally, we simulate 100 moving objects in a real building deployed with 94 RFID readers over 30 days to generate 223,564 indoor moving trajectories, and conduct experiments to compare our proposed H-Count and H-Count* with three baseline algorithms. The results show that H-Count outperforms all baselines and H-Count* can further improve the F-measure of the H-Count by 113% on average.https://www.mdpi.com/2078-2489/11/6/330RFIDindoor spaceindoor position-tracking dataindoor moving trajectoryinfluential positionH-count |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ye Jin Lizhen Cui |
spellingShingle |
Ye Jin Lizhen Cui Discovering Influential Positions in RFID-Based Indoor Tracking Data Information RFID indoor space indoor position-tracking data indoor moving trajectory influential position H-count |
author_facet |
Ye Jin Lizhen Cui |
author_sort |
Ye Jin |
title |
Discovering Influential Positions in RFID-Based Indoor Tracking Data |
title_short |
Discovering Influential Positions in RFID-Based Indoor Tracking Data |
title_full |
Discovering Influential Positions in RFID-Based Indoor Tracking Data |
title_fullStr |
Discovering Influential Positions in RFID-Based Indoor Tracking Data |
title_full_unstemmed |
Discovering Influential Positions in RFID-Based Indoor Tracking Data |
title_sort |
discovering influential positions in rfid-based indoor tracking data |
publisher |
MDPI AG |
series |
Information |
issn |
2078-2489 |
publishDate |
2020-06-01 |
description |
The rapid development of indoor localization techniques such as Wi-Fi and RFID makes it possible to obtain users’ position-tracking data in indoor space. Indoor position-tracking data, also known as indoor moving trajectories, offer many new opportunities to mine decision-making knowledge. In this paper, we study the detection of highly influential positions from indoor position-tracking data, e.g., to detect highly influential positions in a business center, or to detect the hottest shops in a shopping mall according to users’ indoor position-tracking data. We first describe three baseline solutions to this problem, which are count-based, density-based, and duration-based algorithms. Then, motivated by the H-index for evaluating the influence of an author or a journal in academia, we propose a new algorithm called H-Count, which evaluates the influence of an indoor position similarly to the H-index. We further present an improvement of the H-Count by taking a filtering step to remove unqualified position-tracking records. This is based on the observation that many visits to a position such as a gate are meaningless for the detection of influential indoor positions. Finally, we simulate 100 moving objects in a real building deployed with 94 RFID readers over 30 days to generate 223,564 indoor moving trajectories, and conduct experiments to compare our proposed H-Count and H-Count* with three baseline algorithms. The results show that H-Count outperforms all baselines and H-Count* can further improve the F-measure of the H-Count by 113% on average. |
topic |
RFID indoor space indoor position-tracking data indoor moving trajectory influential position H-count |
url |
https://www.mdpi.com/2078-2489/11/6/330 |
work_keys_str_mv |
AT yejin discoveringinfluentialpositionsinrfidbasedindoortrackingdata AT lizhencui discoveringinfluentialpositionsinrfidbasedindoortrackingdata |
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