Ultrasensitive textile strain sensors redefine wearable silent speech interfaces with high machine learning efficiency
Published version
Peer-reviewed
Repository URI
Repository DOI
Type
Change log
Authors
Abstract
AbstractThis work introduces a silent speech interface (SSI), proposing a few-layer graphene (FLG) strain sensing mechanism based on thorough cracks and AI-based self-adaptation capabilities that overcome the limitations of state-of-the-art technologies by simultaneously achieving high accuracy, high computational efficiency, and fast decoding speed while maintaining excellent user comfort. We demonstrate its application in a biocompatible textile-integrated ultrasensitive strain sensor embedded into a smart choker, which conforms to the user’s throat. Thanks to the structure of ordered through cracks in the graphene-coated textile, the proposed strain gauge achieves a gauge factor of 317 with <5% strain, corresponding to a 420% improvement over existing textile strain sensors fabricated by printing and coating technologies reported to date. Its high sensitivity allows it to capture subtle throat movements, simplifying signal processing and enabling the use of a computationally efficient neural network. The resulting neural network, based on a one-dimensional convolutional model, reduces computational load by 90% while maintaining a remarkable 95.25% accuracy in speech decoding. The synergy in sensor design and neural network optimization offers a promising solution for practical, wearable SSI systems, paving the way for seamless, natural silent communication in diverse settings.
Description
Acknowledgements: C.T. was supported by Endoenergy Systems (grant no. G119004), M.X. was supported by CSC-Cambridge International Scholarship, W.Y. was supported by Pragmatic Semiconductor (grant no. G117793), E.O. was supported by UKRI Centre for Doctoral Training in AI for Healthcare (grant no. EP/S023283/1), D.R. was supported by EPSRC Center for Doctoral Training in Sensors Technologies and Applications (grant no. EP/L015889/1), S.L. acknowledges funding from National Research Foundation of Korea Grant funded by the Korean Government (NRF-2018R1A6A1A03025761), S.G. acknowledges funding from National Natural Science Foundation of China (grant no. 62171014), L.G.O. acknowledges funding from EPSRC (grants no. EP/K03099X/1, EP/L016087/1, EP/W024284/1, EP/P027628/1), the EU Graphene Flagship Core 3 (grant no. 881603), and Haleon (grant no. G110480). We would like to extend our sincere gratitude to Prof. George Malliaras for his invaluable guidance and mentorship throughout this work as the PhD advisor to C.T. and M.X.
Funder: Pragmatic Semiconductor, grant G117793 Haleon, grant G110480 Endoenergy Systems, grant G119004
Keywords
Journal Title
Conference Name
Journal ISSN
Volume Title
Publisher
Publisher DOI
Rights and licensing
Sponsorship
European Commission (EC) (881603)
National Research Foundation of Korea (NRF) (NRF-2018R1A6A1A03025761)

