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Gait recognition as a service for unobtrusive user identification in smart spaces

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Gait recognition as a service for unobtrusive user identification in smart spaces. / Luo, Chengwen; Wu, Jiawei; Li, Jianqiang et al.
In: ACM Transactions on Internet of Things, Vol. 1, No. 1, 5, 28.02.2020, p. 1-21.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Luo, C, Wu, J, Li, J, Wang, J, Xu, W, Ming, Z, Wei, B, Li, W & Zomaya, AY 2020, 'Gait recognition as a service for unobtrusive user identification in smart spaces', ACM Transactions on Internet of Things, vol. 1, no. 1, 5, pp. 1-21. https://doi.org/10.1145/3375799

APA

Luo, C., Wu, J., Li, J., Wang, J., Xu, W., Ming, Z., Wei, B., Li, W., & Zomaya, A. Y. (2020). Gait recognition as a service for unobtrusive user identification in smart spaces. ACM Transactions on Internet of Things, 1(1), 1-21. Article 5. https://doi.org/10.1145/3375799

Vancouver

Luo C, Wu J, Li J, Wang J, Xu W, Ming Z et al. Gait recognition as a service for unobtrusive user identification in smart spaces. ACM Transactions on Internet of Things. 2020 Feb 28;1(1):1-21. 5. doi: 10.1145/3375799

Author

Luo, Chengwen ; Wu, Jiawei ; Li, Jianqiang et al. / Gait recognition as a service for unobtrusive user identification in smart spaces. In: ACM Transactions on Internet of Things. 2020 ; Vol. 1, No. 1. pp. 1-21.

Bibtex

@article{898262c9ca5f4044a943d00cab3ff82d,
title = "Gait recognition as a service for unobtrusive user identification in smart spaces",
abstract = "Recently, Internet of Things (IoT) has raised as an important research area that combines the environmental sensing and machine learning capabilities to flourish the concept of smart spaces, in which intelligent and customized services can be provided to users in a smart manner. In smart spaces, one fundamental service that needs to be provided is accurate and unobtrusive user identification. In this work, to address this challenge, we propose a Gait Recognition as a Service (GRaaS) model, which is an instantiation of the traditional Sensing as a Service (S2aaS) model, and is specially deigned for user identification using gait in smart spaces. To illustrate the idea, a Radio Frequency Identification (RFID)-based gait recognition service is designed and implemented following the GRaaS concept. Novel tag selection algorithms and attention-based Long Short-term Memory (At-LSTM) models are designed to realize the device layer and edge layer, achieving a robust recognition with 96.3% accuracy. Extensive evaluations are provided, which show that the proposed service has accurate and robust performance and has great potential to support future smart space applications.",
keywords = "IoT, RFID, gait recognition, user identification, attention-based LSTM",
author = "Chengwen Luo and Jiawei Wu and Jianqiang Li and Jia Wang and Weitao Xu and Zhong Ming and Bo Wei and Wei Li and Zomaya, {Albert Y}",
year = "2020",
month = feb,
day = "28",
doi = "10.1145/3375799",
language = "English",
volume = "1",
pages = "1--21",
journal = "ACM Transactions on Internet of Things",
issn = "2691-1914",
publisher = "ACM",
number = "1",

}

RIS

TY - JOUR

T1 - Gait recognition as a service for unobtrusive user identification in smart spaces

AU - Luo, Chengwen

AU - Wu, Jiawei

AU - Li, Jianqiang

AU - Wang, Jia

AU - Xu, Weitao

AU - Ming, Zhong

AU - Wei, Bo

AU - Li, Wei

AU - Zomaya, Albert Y

PY - 2020/2/28

Y1 - 2020/2/28

N2 - Recently, Internet of Things (IoT) has raised as an important research area that combines the environmental sensing and machine learning capabilities to flourish the concept of smart spaces, in which intelligent and customized services can be provided to users in a smart manner. In smart spaces, one fundamental service that needs to be provided is accurate and unobtrusive user identification. In this work, to address this challenge, we propose a Gait Recognition as a Service (GRaaS) model, which is an instantiation of the traditional Sensing as a Service (S2aaS) model, and is specially deigned for user identification using gait in smart spaces. To illustrate the idea, a Radio Frequency Identification (RFID)-based gait recognition service is designed and implemented following the GRaaS concept. Novel tag selection algorithms and attention-based Long Short-term Memory (At-LSTM) models are designed to realize the device layer and edge layer, achieving a robust recognition with 96.3% accuracy. Extensive evaluations are provided, which show that the proposed service has accurate and robust performance and has great potential to support future smart space applications.

AB - Recently, Internet of Things (IoT) has raised as an important research area that combines the environmental sensing and machine learning capabilities to flourish the concept of smart spaces, in which intelligent and customized services can be provided to users in a smart manner. In smart spaces, one fundamental service that needs to be provided is accurate and unobtrusive user identification. In this work, to address this challenge, we propose a Gait Recognition as a Service (GRaaS) model, which is an instantiation of the traditional Sensing as a Service (S2aaS) model, and is specially deigned for user identification using gait in smart spaces. To illustrate the idea, a Radio Frequency Identification (RFID)-based gait recognition service is designed and implemented following the GRaaS concept. Novel tag selection algorithms and attention-based Long Short-term Memory (At-LSTM) models are designed to realize the device layer and edge layer, achieving a robust recognition with 96.3% accuracy. Extensive evaluations are provided, which show that the proposed service has accurate and robust performance and has great potential to support future smart space applications.

KW - IoT

KW - RFID

KW - gait recognition

KW - user identification

KW - attention-based LSTM

U2 - 10.1145/3375799

DO - 10.1145/3375799

M3 - Journal article

VL - 1

SP - 1

EP - 21

JO - ACM Transactions on Internet of Things

JF - ACM Transactions on Internet of Things

SN - 2691-1914

IS - 1

M1 - 5

ER -