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A CNN-SVM Combined Regression Model for Continuous Knee Angle Estimation Using Mechanomyography Signals

机译:CNN-SVM组合回归模型,用于基于机械摄影信号的连续膝关节角度估计

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Compared with the pattern recognition of discrete human motions, the continuous human motion estimation is more significant for the motion control of wearable power-assisted robots. In previous studies, researchers estimated human motion from the surface electromyography (sEMG) signal based on the Hill-type muscle model or using the traditional machine learning algorithms with the hand-crafted features. However, these methods generally require the domain knowledge about the muscle dynamics or complicated signal processing. In this study, 3-channel time series mechanomyography (MMG) signals were detected on clothes from the thigh muscles, and a CNN-SVM combined regression model was proposed to estimate the knee angle under different motion velocities. The convolutional neural network (CNN) model was used to automatically extract the features from the MMG signals, and the support vector machine (SVM) regression was used to process the features for angle estimation. The results showed that the CNN-SVM combined regression model obviously improved the estimation performances and avoided using the muscle model or hand-crafted features. The methods used in this paper would promote the development of motion control system for wearable power-assisted robots, and could be further extended to the fields of rehabilitation training, medical diagnosis, etc.
机译:与离散人体运动的模式识别相比,连续人体运动估计对于可穿戴式动力辅助机器人的运动控制更为重要。在以前的研究中,研究人员根据表面肌电图(sEMG)信号基于Hill型肌肉模型或使用具有手工制作功能的传统机器学习算法来估计人体运动。但是,这些方法通常需要有关肌肉动力学或复杂信号处理的领域知识。在这项研究中,在大腿肌肉的衣服上检测到了3通道时间序列机械定律(MMG)信号,并提出了CNN-SVM组合回归模型来估计不同运动速度下的膝盖角度。卷积神经网络(CNN)模型用于从MMG信号中自动提取特征,而支持向量机(SVM)回归用于处理角度估计的特征。结果表明,CNN-SVM组合回归模型明显改善了估计性能,避免使用肌肉模型或手工制作的特征。本文所采用的方法将促进可穿戴式动力辅助机器人运动控制系统的发展,并可进一步扩展到康复训练,医学诊断等领域。

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