Deep learning-enabled triboelectric smart socks for IoT-based gait analysis and VR applications

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作者
Zixuan Zhang
Tianyiyi He
Minglu Zhu
Zhongda Sun
Qiongfeng Shi
Jianxiong Zhu
Bowei Dong
Mehmet Rasit Yuce
Chengkuo Lee
机构
[1] National University of Singapore,Department of Electrical & Computer Engineering
[2] 4 Engineering Drive 3,Centre for Intelligent Sensors and MEMS (CISM)
[3] National University of Singapore,Hybrid Integrated Flexible Electronic Systems (HIFES)
[4] 4 Engineering Drive 3,Smart Systems Institute
[5] 5 Engineering Drive 1,National University of Singapore Suzhou Research Institute (NUSRI)
[6] National University of Singapore,Department of Electrical and Computer Systems Engineering
[7] 3 Research Link,NUS Graduate School for Integrative Science and Engineering (NGS)
[8] Suzhou Industrial Park,undefined
[9] Monash University,undefined
[10] National University of Singapore,undefined
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摘要
The era of artificial intelligence and internet of things is rapidly developed by recent advances in wearable electronics. Gait reveals sensory information in daily life containing personal information, regarding identification and healthcare. Current wearable electronics of gait analysis are mainly limited by high fabrication cost, operation energy consumption, or inferior analysis methods, which barely involve machine learning or implement nonoptimal models that require massive datasets for training. Herein, we developed low-cost triboelectric intelligent socks for harvesting waste energy from low-frequency body motions to transmit wireless sensory data. The sock equipped with self-powered functionality also can be used as wearable sensors to deliver information, regarding the identity, health status, and activity of the users. To further address the issue of ineffective analysis methods, an optimized deep learning model with an end-to-end structure on the socks signals for the gait analysis is proposed, which produces a 93.54% identification accuracy of 13 participants and detects five different human activities with 96.67% accuracy. Toward practical application, we map the physical signals collected through the socks in the virtual space to establish a digital human system for sports monitoring, healthcare, identification, and future smart home applications.
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