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A Trajectory-Based Gesture Recognition in Smart Homes Based on the Ultrawideband Communication System

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A Trajectory-Based Gesture Recognition in Smart Homes Based on the Ultrawideband Communication System. / Li, Anna; Bodanese, Eliane; Poslad, Stefan et al.
In: IEEE Internet of Things Journal, Vol. 9, No. 22, 15.11.2022, p. 22861-22873.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Li, A, Bodanese, E, Poslad, S, Hou, T, Wu, K & Luo, F 2022, 'A Trajectory-Based Gesture Recognition in Smart Homes Based on the Ultrawideband Communication System', IEEE Internet of Things Journal, vol. 9, no. 22, pp. 22861-22873. https://doi.org/10.1109/JIOT.2022.3185084

APA

Li, A., Bodanese, E., Poslad, S., Hou, T., Wu, K., & Luo, F. (2022). A Trajectory-Based Gesture Recognition in Smart Homes Based on the Ultrawideband Communication System. IEEE Internet of Things Journal, 9(22), 22861-22873. https://doi.org/10.1109/JIOT.2022.3185084

Vancouver

Li A, Bodanese E, Poslad S, Hou T, Wu K, Luo F. A Trajectory-Based Gesture Recognition in Smart Homes Based on the Ultrawideband Communication System. IEEE Internet of Things Journal. 2022 Nov 15;9(22):22861-22873. Epub 2022 Jun 21. doi: 10.1109/JIOT.2022.3185084

Author

Li, Anna ; Bodanese, Eliane ; Poslad, Stefan et al. / A Trajectory-Based Gesture Recognition in Smart Homes Based on the Ultrawideband Communication System. In: IEEE Internet of Things Journal. 2022 ; Vol. 9, No. 22. pp. 22861-22873.

Bibtex

@article{1a55459749944e54a7b0f4a1681b250b,
title = "A Trajectory-Based Gesture Recognition in Smart Homes Based on the Ultrawideband Communication System",
abstract = "In this article, a cost-effective ultrawideband (UWB) communication system for gesture recognition in a smart home environment is proposed, which uses gesture trajectories and a deep learning model. Most previous studies of gesture recognition using the UWB technology used electromagnetic signals directly, which may bring problems, such as radar clutter, signal coupling, multipath, fading, and interference. However, instead of using UWB{\textquoteright}s high-frequency pulse signals, the proposed method only uses gesture trajectories by data positioning. To this end, first, a data set of four gesture activities was created. Then, this data set was trained using a convolutional neural network (CNN) integrated with a squeeze-and-excitation (SE) block, namely, the SE-Conv1D model. Finally, the system was prototyped to interact with appliances in practical smart homes. The experimental data was used to demonstrate the superiority of the SE-Conv1D model in comparison with four baselines: 1) support vector machines; 2) K -nearest neighbor; 3) random forest; and 4) binarized neural networks. Experimental results show that all collected gesture activities are correctly recognized with an overall accuracy of over 95%, among which the proposed SE-Conv1D model achieves the best accuracy of 99.48%. The proposed system is a complete end-to-end sensing system specifically designed for tracking and recognizing human gestures, which is robust against interference and changes in distance or direction. In addition, the proposed system can tackle the device selection problems for smart homes, which means it is reliable for real-world applications.",
author = "Anna Li and Eliane Bodanese and Stefan Poslad and Tianwei Hou and Kaishun Wu and Fei Luo",
year = "2022",
month = nov,
day = "15",
doi = "10.1109/JIOT.2022.3185084",
language = "English",
volume = "9",
pages = "22861--22873",
journal = "IEEE Internet of Things Journal",
issn = "2327-4662",
publisher = "IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC",
number = "22",

}

RIS

TY - JOUR

T1 - A Trajectory-Based Gesture Recognition in Smart Homes Based on the Ultrawideband Communication System

AU - Li, Anna

AU - Bodanese, Eliane

AU - Poslad, Stefan

AU - Hou, Tianwei

AU - Wu, Kaishun

AU - Luo, Fei

PY - 2022/11/15

Y1 - 2022/11/15

N2 - In this article, a cost-effective ultrawideband (UWB) communication system for gesture recognition in a smart home environment is proposed, which uses gesture trajectories and a deep learning model. Most previous studies of gesture recognition using the UWB technology used electromagnetic signals directly, which may bring problems, such as radar clutter, signal coupling, multipath, fading, and interference. However, instead of using UWB’s high-frequency pulse signals, the proposed method only uses gesture trajectories by data positioning. To this end, first, a data set of four gesture activities was created. Then, this data set was trained using a convolutional neural network (CNN) integrated with a squeeze-and-excitation (SE) block, namely, the SE-Conv1D model. Finally, the system was prototyped to interact with appliances in practical smart homes. The experimental data was used to demonstrate the superiority of the SE-Conv1D model in comparison with four baselines: 1) support vector machines; 2) K -nearest neighbor; 3) random forest; and 4) binarized neural networks. Experimental results show that all collected gesture activities are correctly recognized with an overall accuracy of over 95%, among which the proposed SE-Conv1D model achieves the best accuracy of 99.48%. The proposed system is a complete end-to-end sensing system specifically designed for tracking and recognizing human gestures, which is robust against interference and changes in distance or direction. In addition, the proposed system can tackle the device selection problems for smart homes, which means it is reliable for real-world applications.

AB - In this article, a cost-effective ultrawideband (UWB) communication system for gesture recognition in a smart home environment is proposed, which uses gesture trajectories and a deep learning model. Most previous studies of gesture recognition using the UWB technology used electromagnetic signals directly, which may bring problems, such as radar clutter, signal coupling, multipath, fading, and interference. However, instead of using UWB’s high-frequency pulse signals, the proposed method only uses gesture trajectories by data positioning. To this end, first, a data set of four gesture activities was created. Then, this data set was trained using a convolutional neural network (CNN) integrated with a squeeze-and-excitation (SE) block, namely, the SE-Conv1D model. Finally, the system was prototyped to interact with appliances in practical smart homes. The experimental data was used to demonstrate the superiority of the SE-Conv1D model in comparison with four baselines: 1) support vector machines; 2) K -nearest neighbor; 3) random forest; and 4) binarized neural networks. Experimental results show that all collected gesture activities are correctly recognized with an overall accuracy of over 95%, among which the proposed SE-Conv1D model achieves the best accuracy of 99.48%. The proposed system is a complete end-to-end sensing system specifically designed for tracking and recognizing human gestures, which is robust against interference and changes in distance or direction. In addition, the proposed system can tackle the device selection problems for smart homes, which means it is reliable for real-world applications.

U2 - 10.1109/JIOT.2022.3185084

DO - 10.1109/JIOT.2022.3185084

M3 - Journal article

VL - 9

SP - 22861

EP - 22873

JO - IEEE Internet of Things Journal

JF - IEEE Internet of Things Journal

SN - 2327-4662

IS - 22

ER -