Finger gesture recognition with smart skin technology and deep learning

IF 2.8 4区 工程技术 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY Flexible and Printed Electronics Pub Date : 2023-05-05 DOI:10.1088/2058-8585/acd2e8
Liron Ben-Ari, A. Ben–Ari, Cheni Hermon, Y. Hanein
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Abstract

Finger gesture recognition (FGR) was extensively studied in recent years for a wide range of human-machine interface applications. Surface electromyography (sEMG), in particular, is an attractive, enabling technique in the realm of FGR, and both low and high-density sEMG were previously studied. Despite the clear potential, cumbersome electrode wiring and electronic instrumentation render contemporary sEMG-based finger gestures recognition to be performed under unnatural conditions. Recent developments in smart skin technology provide an opportunity to collect sEMG data in more natural conditions. Here we report on a novel approach based on soft 16 electrode array, a miniature and wireless data acquisition unit and neural network analysis, in order to achieve gesture recognition under natural conditions. FGR accuracy values, as high as 93.1%, were achieved for 8 gestures when the training and test data were from the same session. For the first time, high accuracy values are also reported for training and test data from different sessions for three different hand positions. These results demonstrate an important step towards sEMG based gesture recognition in non-laboratory settings, such as in gaming or Metaverse.
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基于智能皮肤技术和深度学习的手指手势识别
近年来,手指手势识别(FGR)在广泛的人机界面应用中得到了广泛的研究。表面肌电图(sEMG)尤其是在FGR领域是一种有吸引力的使能技术,低密度和高密度sEMG都曾被研究过。尽管存在明显的电势,但笨重的电极布线和电子仪器使当代基于sEMG的手指手势识别在非自然条件下进行。智能皮肤技术的最新发展为在更自然的条件下收集sEMG数据提供了机会。本文报道了一种基于软16电极阵列、微型无线数据采集单元和神经网络分析的新方法,以实现自然条件下的手势识别。当训练和测试数据来自同一会话时,8个手势的FGR准确率高达93.1%。首次报告了三种不同手部位置的不同训练和测试数据的高精度值。这些结果表明,在非实验室环境中,如游戏或Metaverse中,朝着基于sEMG的手势识别迈出了重要一步。
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来源期刊
Flexible and Printed Electronics
Flexible and Printed Electronics MATERIALS SCIENCE, MULTIDISCIPLINARY-
CiteScore
4.80
自引率
9.70%
发文量
101
期刊介绍: Flexible and Printed Electronics is a multidisciplinary journal publishing cutting edge research articles on electronics that can be either flexible, plastic, stretchable, conformable or printed. Research related to electronic materials, manufacturing techniques, components or systems which meets any one (or more) of the above criteria is suitable for publication in the journal. Subjects included in the journal range from flexible materials and printing techniques, design or modelling of electrical systems and components, advanced fabrication methods and bioelectronics, to the properties of devices and end user applications.
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