TraIL: Pinpoint Trajectory for Indoor Localization

Indoor localization on smartphones is an enabler for a number of ubiquitous and mobile computing applications attracting worldwide attentions. Many location-based services rely on WiFi fingerprinting approaches to achieve a reasonable accuracy. However, there is still room for improvement due to the...

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Bibliographic Details
Main Authors: Shengnan Li, Zheng Qin, Chenshu Wu, Zheng Yang
Format: Article
Language:English
Published: SAGE Publishing 2015-11-01
Series:International Journal of Distributed Sensor Networks
Online Access:https://doi.org/10.1155/2015/372425
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spelling doaj-d9d006af703245538d8614ce11377b712020-11-25T03:34:12ZengSAGE PublishingInternational Journal of Distributed Sensor Networks1550-14772015-11-011110.1155/2015/372425372425TraIL: Pinpoint Trajectory for Indoor LocalizationShengnan LiZheng QinChenshu WuZheng YangIndoor localization on smartphones is an enabler for a number of ubiquitous and mobile computing applications attracting worldwide attentions. Many location-based services rely on WiFi fingerprinting approaches to achieve a reasonable accuracy. However, there is still room for improvement due to the prevalent-existing errors (e.g., 8∼12 m). In this study, we devise and implement a high-accuracy indoor localization solution leveraging the WiFi-based method and pedestrian mobility provided by smartphones. Our basic idea is that WiFi-only localization can generate rough but absolute positions, while user motion is able to bring accurate but relative locations. Taking both sides into account simultaneously, we design techniques to refine the raw WiFi positions in the process of laying the precise local trajectory appropriately down to the absolute coordinate using a novel least median of squares (LMS) fit algorithm. We develop a prototype system, named TraIL, and conduct comprehensive experiments in a building along different shaped routes. The evaluation results show that TraIL can achieve 80% improvement on average error with respect to WiFi-only indoor localization.https://doi.org/10.1155/2015/372425
collection DOAJ
language English
format Article
sources DOAJ
author Shengnan Li
Zheng Qin
Chenshu Wu
Zheng Yang
spellingShingle Shengnan Li
Zheng Qin
Chenshu Wu
Zheng Yang
TraIL: Pinpoint Trajectory for Indoor Localization
International Journal of Distributed Sensor Networks
author_facet Shengnan Li
Zheng Qin
Chenshu Wu
Zheng Yang
author_sort Shengnan Li
title TraIL: Pinpoint Trajectory for Indoor Localization
title_short TraIL: Pinpoint Trajectory for Indoor Localization
title_full TraIL: Pinpoint Trajectory for Indoor Localization
title_fullStr TraIL: Pinpoint Trajectory for Indoor Localization
title_full_unstemmed TraIL: Pinpoint Trajectory for Indoor Localization
title_sort trail: pinpoint trajectory for indoor localization
publisher SAGE Publishing
series International Journal of Distributed Sensor Networks
issn 1550-1477
publishDate 2015-11-01
description Indoor localization on smartphones is an enabler for a number of ubiquitous and mobile computing applications attracting worldwide attentions. Many location-based services rely on WiFi fingerprinting approaches to achieve a reasonable accuracy. However, there is still room for improvement due to the prevalent-existing errors (e.g., 8∼12 m). In this study, we devise and implement a high-accuracy indoor localization solution leveraging the WiFi-based method and pedestrian mobility provided by smartphones. Our basic idea is that WiFi-only localization can generate rough but absolute positions, while user motion is able to bring accurate but relative locations. Taking both sides into account simultaneously, we design techniques to refine the raw WiFi positions in the process of laying the precise local trajectory appropriately down to the absolute coordinate using a novel least median of squares (LMS) fit algorithm. We develop a prototype system, named TraIL, and conduct comprehensive experiments in a building along different shaped routes. The evaluation results show that TraIL can achieve 80% improvement on average error with respect to WiFi-only indoor localization.
url https://doi.org/10.1155/2015/372425
work_keys_str_mv AT shengnanli trailpinpointtrajectoryforindoorlocalization
AT zhengqin trailpinpointtrajectoryforindoorlocalization
AT chenshuwu trailpinpointtrajectoryforindoorlocalization
AT zhengyang trailpinpointtrajectoryforindoorlocalization
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