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使用柔性可拉伸混合传感器原位测量表面肌电信号和肌肉形状变化以进行手势识别。

In-Situ Measuring sEMG and Muscle Shape Change With a Flexible and Stretchable Hybrid Sensor for Hand Gesture Recognition.

作者信息

Huang Pingao, Wang Hui, Wang Yuan, Geng Yanjuan, Yu Wenlong, Gao Chao, Liu Zhiyuan, Li Guanglin

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2023;31:581-592. doi: 10.1109/TNSRE.2022.3228514. Epub 2023 Feb 1.

Abstract

The accurate recognition of hand motion intentions is an essential prerequisite for efficient human-machine interaction (HMI) systems such as multifunctional prostheses and rehabilitation robots. Surface electromyography (sEMG) signals and muscle shape change (MSC) signals which are usually detected with different types of sensors have been used for human hand motion intention recognition. However, using different sensors to measure sEMG and MSC respectively, it would be inconvenient and add deploying difficulty for human-machine interaction systems. In this study, a novel flexible and stretchable sensor was fabricated with a nano gold conductive material, which could simultaneously sense both sEMG and MSC signals. Accordingly, a wireless signal acquisition device was developed to record both sEMG and MSC signals with the fabricated hybrid sensors. The performance of the proposed in-situ dual-mode signal measurement (IDSM) system was evaluated by the recording signal quality and the accuracy of hand gesture recognition. The results demonstrated that by using two pairs of the hybrid sensors, the proposed IDSM system could obtain two-channel sEMG at a noise level of about $0.89\mu $ Vrms and four-channel MSC with a resolution of about $0.1\Omega $ . For a recognition task of 11 classes of hand gestures, the results showed that only with two pairs of the hybrid sensors, the average accuracy over all the subjects was 95.6 ± 2.9%, which was about 7% higher than that with two-channel sEMG and six-channel accelerometer signals. These results suggest that the proposed IDSM method would be an efficient way to simplify the human-machine interaction system with fewer sensors for high recognition accuracy of hand motions.

摘要

准确识别手部运动意图是多功能假肢和康复机器人等人机交互(HMI)系统高效运行的基本前提。通常用不同类型传感器检测的表面肌电图(sEMG)信号和肌肉形状变化(MSC)信号已被用于人类手部运动意图识别。然而,分别使用不同传感器来测量sEMG和MSC,这对于人机交互系统来说会不方便且增加部署难度。在本研究中,用一种纳米金导电材料制作了一种新型的柔性可拉伸传感器,它能够同时感测sEMG和MSC信号。相应地,开发了一种无线信号采集装置来用制作的混合传感器记录sEMG和MSC信号。通过记录信号质量和手势识别的准确性来评估所提出的原位双模信号测量(IDSM)系统的性能。结果表明,通过使用两对混合传感器,所提出的IDSM系统能够在约0.89 μVrms的噪声水平下获得两通道sEMG,以及分辨率约为0.1 Ω的四通道MSC。对于11类手势的识别任务,结果表明仅使用两对混合传感器,所有受试者的平均准确率为95.6±2.9%,这比使用两通道sEMG和六通道加速度计信号时高出约7%。这些结果表明,所提出的IDSM方法将是一种有效的方法,能够用更少的传感器简化人机交互系统,以实现对手部运动的高识别准确率。

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