Stretchable array electromyography sensor with graph neural network for static and dynamic gestures recognition system

IF 12.3 1区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Hyeyun Lee, Soyoung Lee, Jaeseong Kim, Heesoo Jung, Kyung Jae Yoon, Srinivas Gandla, Hogun Park, Sunkook Kim
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引用次数: 7

Abstract

With advances in artificial intelligence (AI)-based algorithms, gesture recognition accuracy from sEMG signals has continued to increase. Spatiotemporal multichannel-sEMG signals substantially increase the quantity and reliability of the data for any type of study. Here, we report an array of bipolar stretchable sEMG electrodes with a self-attention-based graph neural network to recognize gestures with high accuracy. The array is designed to spatially cover the skeletal muscles to acquire the regional sampling data of EMG activity from 18 different gestures. The system can differentiate individual static and dynamic gestures with ~97% accuracy when training a single trial per gesture. Moreover, a sticky patchwork of holes adhered to an array sensor enables skin-like attributes such as stretchability and water vapor permeability and aids in delivering stable EMG signals. In addition, the recognition accuracy (~95%) remained unchanged even after long-term testing for over 72 h and being reused more than 10 times.

Abstract Image

Abstract Image

基于图形神经网络的可拉伸阵列肌电传感器用于静态和动态手势识别系统
随着基于人工智能(AI)算法的进步,sEMG 信号的手势识别准确率不断提高。时空多通道 sEMG 信号大大提高了任何类型研究的数据量和可靠性。在此,我们报告了一种双极可拉伸 sEMG 电极阵列,该阵列具有基于自我注意的图神经网络,可高精度识别手势。该阵列设计用于在空间上覆盖骨骼肌,以获取 18 种不同手势的 EMG 活动区域采样数据。在对每个手势进行单次试验训练时,系统能以约 97% 的准确率区分单个静态和动态手势。此外,粘贴在阵列传感器上的粘性补孔具有类似皮肤的特性,如伸展性和水蒸气渗透性,有助于提供稳定的肌电信号。此外,即使经过 72 小时以上的长期测试和 10 次以上的重复使用,识别准确率(约 95%)仍保持不变。
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来源期刊
CiteScore
17.10
自引率
4.80%
发文量
91
审稿时长
6 weeks
期刊介绍: npj Flexible Electronics is an online-only and open access journal, which publishes high-quality papers related to flexible electronic systems, including plastic electronics and emerging materials, new device design and fabrication technologies, and applications.
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