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Ultrasensitive Textile Strain Sensors Redefine Wearable Silent Speech Interfaces with High Machine Learning Efficiency

Authors :
Tang, Chenyu
Xu, Muzi
Yi, Wentian
Zhang, Zibo
Occhipinti, Edoardo
Dong, Chaoqun
Ravenscroft, Dafydd
Jung, Sung-Min
Lee, Sanghyo
Gao, Shuo
Kim, Jong Min
Occhipinti, Luigi G.
Source :
npj Flexible Electronics (2024)
Publication Year :
2023

Abstract

Our research presents a wearable Silent Speech Interface (SSI) technology that excels in device comfort, time-energy efficiency, and speech decoding accuracy for real-world use. We developed a biocompatible, durable textile choker with an embedded graphene-based strain sensor, capable of accurately detecting subtle throat movements. This sensor, surpassing other strain sensors in sensitivity by 420%, simplifies signal processing compared to traditional voice recognition methods. Our system uses a computationally efficient neural network, specifically a one-dimensional convolutional neural network with residual structures, to decode speech signals. This network is energy and time-efficient, reducing computational load by 90% while achieving 95.25% accuracy for a 20-word lexicon and swiftly adapting to new users and words with minimal samples. This innovation demonstrates a practical, sensitive, and precise wearable SSI suitable for daily communication applications.<br />Comment: 5 figures in the article; 11 figures and 4 tables in supplementary information

Details

Database :
arXiv
Journal :
npj Flexible Electronics (2024)
Publication Type :
Report
Accession number :
edsarx.2311.15683
Document Type :
Working Paper
Full Text :
https://doi.org/10.1038/s41528-024-00315-1