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Detection of human movement by combining supervised machine learning and an embroidered textile capacitance sensor

Authors
Kim, Ji-seonKim, Jooyong
Issue Date
Feb-2025
Publisher
SAGE PUBLICATIONS LTD
Keywords
Respiratory data; sparse autoencoder; embroidered sensor; capacitance; detection of human movement; fabrication
Citation
TEXTILE RESEARCH JOURNAL, v.95, no.3-4, pp 305 - 322
Pages
18
Journal Title
TEXTILE RESEARCH JOURNAL
Volume
95
Number
3-4
Start Page
305
End Page
322
URI
https://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/50671
DOI
10.1177/00405175241261401
ISSN
0040-5175
1746-7748
Abstract
This study contributes to respiratory pattern detection by introducing a fabric sensor utilizing capacitance measurement and a semi-supervised machine learning algorithm known as an AI-based autoencoder. The sensor, consisting of two embroidered electrodes composed of silver-coated conductive nylon filaments, leverages the body as a dielectric material. In the research, a garment-type respiratory sensor was employed to continuously monitor respiratory data during both static (standing) and dynamic (walking, brisk walking, running) actions. The sparse autoencoder algorithm was particularly employed for individual static and dynamic actions, effectively distinguishing respiratory patterns corresponding to various movements. In addition, the sparse autoencoder helps prevent overfitting, fundamentally minimizing errors between the compression and reconstruction of signals. The maximum number of epochs was set to 2000, and the target error was set at 0.005. All data were compared against the static walking as the training baseline. Ultimately, the root mean squared error (RMSE) between static postures averaged 0.1, while the RMSEs between dynamic actions of walking, brisk walking, and running were 0.61, 0.91, and 2.78, respectively. These results suggest that movement detection through error detection is practically feasible and possesses discernible capabilities.
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Kim, Joo yong
College of Engineering (Department of Organic Materials and Fiber Engineering)
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