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Knee Joint Angle Prediction Based on Muscle Synergy Theory and Generalized Regression Neural Network

机译:基于肌肉协同理论和广义回归神经网络的膝关节角度预测

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Continuous joint motion estimation plays an important part in accomplishing more compliant and safer human-machine interaction (HMI). Surface electromyogram (sEMG) signals, which contain abundant motion information, can be used as a source for continuous joint motion estimation. In this paper, a knee joint angle prediction system based on muscle synergy theory and generalized regression neural network (GRNN) was proposed. The wavelet transform threshold method was used for sEMG signals and angle trajectories denoising. The time-domain features wave-length extracted from four-channel sEMG signals were decomposed into a synergy matrix and an activation coefficient matrix by using nonnegative matrix factorization based on muscle synergy theory. A GRNN based on golden-section search was employed to build the activation model mapping from the activation coefficients to the knee joint angles, so as to realize the continuous knee joint angle estimation. The experimental results show that the average coefficient of determination is 0.933. In addition, a user graphic interface based on the Java platform was designed to display the dynamic sEMG data and predicted knee joint angles in real time.
机译:连续关节运动估计在完成更顺从和更安全的人机交互(HMI)中起着重要的作用。包含大量运动信息的表面肌电图(sEMG)信号可用作连续关节运动估计的来源。本文提出了一种基于肌肉协同理论和广义回归神经网络(GRNN)的膝关节角度预测系统。小波变换阈值方法用于sEMG信号和角度轨迹去噪。通过基于肌肉协同理论的非负矩阵分解,将从四通道sEMG信号中提取的时域特征波长分解为协同矩阵和激活系数矩阵。利用基于黄金分割搜索的GRNN建立从激活系数到膝关节角度的激活模型映射,从而实现连续的膝关节角度估计。实验结果表明,平均测定系数为0.933。此外,设计了基于Java平台的用户图形界面来实时显示动态sEMG数据和预测的膝关节角度。

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