Wang Wei, Bo Xiangkun, Li Weilu, Eldaly Abdelrahman B M, Wang Lingyun, Li Wen Jung, Chan Leanne Lai Hang, Daoud Walid A
Department of Mechanical Engineering, City University of Hong Kong, Hong Kong, China.
Department of Electrical Engineering, City University of Hong Kong, Hong Kong, China.
Adv Sci (Weinh). 2025 Feb;12(8):e2408384. doi: 10.1002/advs.202408384. Epub 2025 Jan 7.
Human-machine interfaces and wearable electronics, as fundamentals to achieve human-machine interactions, are becoming increasingly essential in the era of the Internet of Things. However, contemporary wearable sensors based on resistive and capacitive mechanisms demand an external power, impeding them from extensive and diverse deployment. Herein, a smart wearable system is developed encompassing five arch-structured self-powered triboelectric sensors, a five-channel data acquisition unit to collect finger bending signals, and an artificial intelligence (AI) methodology, specifically a long short-term memory (LSTM) network, to recognize signal patterns. A slider-crank mechanism that precisely controls the bending angle is designed to quantitively assess the sensor's performance. Thirty signal patterns of sign language of each letter are collected and analyzed after the environment noise and cross-talks among different channels are reduced and removed, respectively, by leveraging low pass filters. Two LSTM models are trained using different training sets, and four indexes are introduced to evaluate their performance, achieving a recognition accuracy of 96.15%. This work demonstrates a novel integration of triboelectric sensors with AI for sign language recognition, paving a new application avenue of triboelectric sensors in wearable electronics.
人机接口和可穿戴电子产品作为实现人机交互的基础,在物联网时代变得越来越重要。然而,当代基于电阻和电容机制的可穿戴传感器需要外部电源,这阻碍了它们的广泛和多样化部署。在此,开发了一种智能可穿戴系统,它包括五个拱形结构的自供电摩擦电传感器、一个用于收集手指弯曲信号的五通道数据采集单元以及一种人工智能(AI)方法,具体为长短期记忆(LSTM)网络,用于识别信号模式。设计了一种精确控制弯曲角度的曲柄滑块机构来定量评估传感器的性能。在分别利用低通滤波器降低和消除环境噪声以及不同通道之间的串扰后,收集并分析了每个字母的30种手语信号模式。使用不同的训练集训练了两个LSTM模型,并引入四个指标来评估它们的性能,实现了96.15%的识别准确率。这项工作展示了摩擦电传感器与人工智能在手语识别方面的新颖集成,为摩擦电传感器在可穿戴电子产品中的应用开辟了一条新途径。