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基于表面肌电信号的人体手臂运动映射方法。

Mapping Method of Human Arm Motion Based on Surface Electromyography Signals.

机构信息

School of Mechanical and Energy Engineering, Zhejiang University of Science and Technology, Hangzhou 310023, China.

Key Laboratory of Special Purpose Equipment and Advanced Processing Technology, Ministry of Education and Zhejiang Province, Zhejiang University of Technology, Hangzhou 310023, China.

出版信息

Sensors (Basel). 2024 Apr 29;24(9):2827. doi: 10.3390/s24092827.

Abstract

This paper investigates a method for precise mapping of human arm movements using sEMG signals. A multi-channel approach captures the sEMG signals, which, combined with the accurately calculated joint angles from an Inertial Measurement Unit, allows for action recognition and mapping through deep learning algorithms. Firstly, signal acquisition and processing were carried out, which involved acquiring data from various movements (hand gestures, single-degree-of-freedom joint movements, and continuous joint actions) and sensor placement. Then, interference signals were filtered out through filters, and the signals were preprocessed using normalization and moving averages to obtain sEMG signals with obvious features. Additionally, this paper constructs a hybrid network model, combining Convolutional Neural Networks and Artificial Neural Networks, and employs a multi-feature fusion algorithm to enhance the accuracy of gesture recognition. Furthermore, a nonlinear fitting between sEMG signals and joint angles was established based on a backpropagation neural network, incorporating momentum term and adaptive learning rate adjustments. Finally, based on the gesture recognition and joint angle prediction model, prosthetic arm control experiments were conducted, achieving highly accurate arm movement prediction and execution. This paper not only validates the potential application of sEMG signals in the precise control of robotic arms but also lays a solid foundation for the development of more intuitive and responsive prostheses and assistive devices.

摘要

本文研究了一种使用表面肌电 (sEMG) 信号精确映射人体手臂运动的方法。多通道方法捕获 sEMG 信号,结合惯性测量单元准确计算的关节角度,通过深度学习算法实现动作识别和映射。首先,进行信号采集和处理,涉及从各种运动(手势、单自由度关节运动和连续关节动作)和传感器放置中获取数据。然后,通过滤波器过滤干扰信号,并通过归一化和移动平均对信号进行预处理,以获得具有明显特征的 sEMG 信号。此外,本文构建了一种混合网络模型,结合卷积神经网络和人工神经网络,并采用多特征融合算法提高手势识别的准确性。此外,基于反向传播神经网络建立了 sEMG 信号和关节角度之间的非线性拟合,结合动量项和自适应学习率调整。最后,基于手势识别和关节角度预测模型,进行了假肢手臂控制实验,实现了高精度的手臂运动预测和执行。本文不仅验证了 sEMG 信号在机器人手臂精确控制中的潜在应用,也为更直观、响应更灵敏的假肢和辅助设备的发展奠定了基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4496/11086324/9b221c06ec72/sensors-24-02827-g001.jpg

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