Ban Seunghyeb, Lee Yoon Jae, Kwon Shinjae, Kim Yun-Soung, Chang Jae Won, Kim Jong-Hoon, Yeo Woon-Hong
School of Engineering and Computer Science, Washington State University, Vancouver, Washington 98686, United States.
IEN Center for Human-Centric Interfaces and Engineering at the Institute for Electronics and Nanotechnology, Georgia Institute of Technology, Atlanta, Georgia 30332, United States.
ACS Appl Electron Mater. 2023 Feb 8;5(2):877-886. doi: 10.1021/acsaelm.2c01436. eCollection 2023 Feb 28.
Recent advances in wearable technologies have enabled ways for people to interact with external devices, known as human-machine interfaces (HMIs). Among them, electrooculography (EOG), measured by wearable devices, is used for eye movement-enabled HMI. Most prior studies have utilized conventional gel electrodes for EOG recording. However, the gel is problematic due to skin irritation, while separate bulky electronics cause motion artifacts. Here, we introduce a low-profile, headband-type, soft wearable electronic system with embedded stretchable electrodes, and a flexible wireless circuit to detect EOG signals for persistent HMIs. The headband with dry electrodes is printed with flexible thermoplastic polyurethane. Nanomembrane electrodes are prepared by thin-film deposition and laser cutting techniques. A set of signal processing data from dry electrodes demonstrate successful real-time classification of eye motions, including blink, up, down, left, and right. Our study shows that the convolutional neural network performs exceptionally well compared to other machine learning methods, showing 98.3% accuracy with six classes: the highest performance till date in EOG classification with only four electrodes. Collectively, the real-time demonstration of continuous wireless control of a two-wheeled radio-controlled car captures the potential of the bioelectronic system and the algorithm for targeting various HMI and virtual reality applications.
可穿戴技术的最新进展为人们与外部设备(即人机接口,简称HMI)进行交互提供了多种方式。其中,可穿戴设备测量的眼电图(EOG)被用于实现基于眼球运动的HMI。大多数先前的研究都使用传统的凝胶电极来记录EOG。然而,凝胶存在问题,因为它会引起皮肤刺激,而单独的笨重电子设备会导致运动伪影。在此,我们介绍一种外形低矮的头带式柔软可穿戴电子系统,它带有嵌入式可拉伸电极以及用于检测EOG信号以实现持久HMI的柔性无线电路。带有干电极的头带由柔性热塑性聚氨酯制成。纳米膜电极通过薄膜沉积和激光切割技术制备。一组来自干电极的信号处理数据表明能够成功实时分类眼球运动,包括眨眼、向上、向下、向左和向右。我们的研究表明,与其他机器学习方法相比,卷积神经网络表现出色,在六个类别上的准确率达到98.3%:这是迄今为止仅使用四个电极进行EOG分类的最高性能。总体而言,对两轮无线电遥控汽车进行连续无线控制的实时演示展现了生物电子系统以及用于各种HMI和虚拟现实应用的算法的潜力。