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首页> 外文期刊>International Journal of Advanced Robotic Systems >Estimation of Upper Limb Joint Angle Using Surface EMG Signal
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Estimation of Upper Limb Joint Angle Using Surface EMG Signal

机译:表面EMG信号估计上肢关节角度

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In the development of robot-assisted rehabilitation systems for upper limb rehabilitation therapy, human electromyogram (EMG) is widely used due to its ability to detect the user intended motion. EMG is one kind of biological signal that can be recorded to evaluate the performance of skeletal muscles by means of a sensor electrode. Based on recorded EMG signals, user intended motion could be extracted via estimation of joint torque, force or angle. Therefore, this estimation becomes one of the most important factors to achieve accurate user intended motion. In this paper, an upper limb joint angle estimation methodology is proposed. A back propagation neural network (BPNN) is developed to estimate the shoulder and elbow joint angles from the recorded EMG signals. A Virtual Human Model (VHM) is also developed and integrated with BPNN to perform the simulation of the estimated angle. The relationships between sEMG signals and upper limb movements are observed in this paper. The effectiveness of our developments is evaluated with four healthy subjects and a VHM simulation. The results show that the methodology can be used in the estimation of joint angles based on EMG.
机译:在制定上肢康复治疗的机器人辅助康复系统中,由于其检测用户预期运动的能力,人体电象(EMG)被广泛使用。 EMG是一种生物信号,可以记录以通过传感器电极评估骨骼肌的性能。基于记录的EMG信号,可以通过估计关节扭矩,力或角度来提取用户预期的运动。因此,该估计成为实现准确用户预期运动的最重要因素之一。本文提出了一种上肢关节角度估计方法。开发了一个后传播神经网络(BPNN)以估计来自记录的EMG信号的肩部和肘关节角。还开发了虚拟人模型(VHM)并与BPNN集成以执行估计角度的模拟。本文观察到SEMG信号和上肢运动之间的关系。我们的发展的有效性是用四个健康的科目和VHM模拟评估的。结果表明,该方法可以用于基于EMG的关节角度估计。

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