Pedestrian heading estimation based on spatial transformer networks and hierarchical LSTM

Accurate heading estimation is the foundation of numerous applications, including augmented reality, pedestrian dead reckoning, and human-computer interactions. While magnetometer is a key source of heading information, the poor accuracy of consumer-grade hardware coupled with the pervasive magnetic...

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Main Authors: Wang, Qu, Luo, Haiyong, Ye, Langlang, Men, Aidong, Zhao, Fang, Huang, Yan, Ou, Changhai
Other Authors: School of Computer Science and Engineering
Format: Article
Language:English
Published: 2021
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Online Access:https://hdl.handle.net/10356/145757
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1457572021-01-07T02:54:00Z Pedestrian heading estimation based on spatial transformer networks and hierarchical LSTM Wang, Qu Luo, Haiyong Ye, Langlang Men, Aidong Zhao, Fang Huang, Yan Ou, Changhai School of Computer Science and Engineering Engineering::Computer science and engineering Indoor Positioning Heading Estimation Accurate heading estimation is the foundation of numerous applications, including augmented reality, pedestrian dead reckoning, and human-computer interactions. While magnetometer is a key source of heading information, the poor accuracy of consumer-grade hardware coupled with the pervasive magnetic disturbances makes accurate heading estimation a challenging issue. Heading error is one of the main error sources of pedestrian dead reckoning. To reduce the heading error and enhance robustness, we proposed a novel heading estimation method based on Spatial Transformer Networks (STNs) and Long Short-Term Memory (LSTM), termed DeepHeading, which uses sensors embedded in a smartphone without any historical training data or dedicated infrastructure. We automatically annotate heading data based on map matching, and augment heading data based on device attitude. We leverage the STNs to align the device coordinate system and the navigation coordinate system, allow an unconstrained use of smartphones. Based on the characteristics of pedestrian heading continuity, we designed a hierarchical LSTM-basedSeq2Seq model to estimate the walking heading of the pedestrian. We conducted well-designed experiments to evaluate the performance of deepheading and compared it with the state-of-the-art heading estimation algorithms. The experimental results on real-world demonstrated that deepheading outperformed the compared heading estimation algorithms and achieved promising estimation accuracy with a median heading error of 4.52°, mean heading error of 6.07° and heading error of 9.18° at the confidence of 80% when a pedestrian is walking in indoor environments with magnetic field disturbances. The proposed method is high-efficiency and easy to integrate with various mobile applications. Published version 2021-01-07T02:54:00Z 2021-01-07T02:54:00Z 2019 Journal Article Wang, Q., Luo, H., Ye, L., Zhao, F., Huang, Y., & Ou, C. (2019). Pedestrian heading estimation based on spatial transformer networks and hierarchical LSTM. IEEE Access, 7, 162309-162322. doi:10.1109/ACCESS.2019.2950728 2169-3536 https://hdl.handle.net/10356/145757 10.1109/ACCESS.2019.2950728 7 162309 162322 en IEEE Access © 2020 IEEE. This journal is 100% open access, which means that all content is freely available without charge to users or their institutions. All articles accepted after 12 June 2019 are published under a CC BY 4.0 license, and the author retains copyright. Users are allowed to read, download, copy, distribute, print, search, or link to the full texts of the articles, or use them for any other lawful purpose, as long as proper attribution is given. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Computer science and engineering
Indoor Positioning
Heading Estimation
spellingShingle Engineering::Computer science and engineering
Indoor Positioning
Heading Estimation
Wang, Qu
Luo, Haiyong
Ye, Langlang
Men, Aidong
Zhao, Fang
Huang, Yan
Ou, Changhai
Pedestrian heading estimation based on spatial transformer networks and hierarchical LSTM
description Accurate heading estimation is the foundation of numerous applications, including augmented reality, pedestrian dead reckoning, and human-computer interactions. While magnetometer is a key source of heading information, the poor accuracy of consumer-grade hardware coupled with the pervasive magnetic disturbances makes accurate heading estimation a challenging issue. Heading error is one of the main error sources of pedestrian dead reckoning. To reduce the heading error and enhance robustness, we proposed a novel heading estimation method based on Spatial Transformer Networks (STNs) and Long Short-Term Memory (LSTM), termed DeepHeading, which uses sensors embedded in a smartphone without any historical training data or dedicated infrastructure. We automatically annotate heading data based on map matching, and augment heading data based on device attitude. We leverage the STNs to align the device coordinate system and the navigation coordinate system, allow an unconstrained use of smartphones. Based on the characteristics of pedestrian heading continuity, we designed a hierarchical LSTM-basedSeq2Seq model to estimate the walking heading of the pedestrian. We conducted well-designed experiments to evaluate the performance of deepheading and compared it with the state-of-the-art heading estimation algorithms. The experimental results on real-world demonstrated that deepheading outperformed the compared heading estimation algorithms and achieved promising estimation accuracy with a median heading error of 4.52°, mean heading error of 6.07° and heading error of 9.18° at the confidence of 80% when a pedestrian is walking in indoor environments with magnetic field disturbances. The proposed method is high-efficiency and easy to integrate with various mobile applications.
author2 School of Computer Science and Engineering
author_facet School of Computer Science and Engineering
Wang, Qu
Luo, Haiyong
Ye, Langlang
Men, Aidong
Zhao, Fang
Huang, Yan
Ou, Changhai
format Article
author Wang, Qu
Luo, Haiyong
Ye, Langlang
Men, Aidong
Zhao, Fang
Huang, Yan
Ou, Changhai
author_sort Wang, Qu
title Pedestrian heading estimation based on spatial transformer networks and hierarchical LSTM
title_short Pedestrian heading estimation based on spatial transformer networks and hierarchical LSTM
title_full Pedestrian heading estimation based on spatial transformer networks and hierarchical LSTM
title_fullStr Pedestrian heading estimation based on spatial transformer networks and hierarchical LSTM
title_full_unstemmed Pedestrian heading estimation based on spatial transformer networks and hierarchical LSTM
title_sort pedestrian heading estimation based on spatial transformer networks and hierarchical lstm
publishDate 2021
url https://hdl.handle.net/10356/145757
_version_ 1688665629881532416