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Toward EMG-controlled force field generation for training and rehabilitation: From movement data to muscle geometry

机译:面向肌电图控制的力场生成,以进行训练和康复:从运动数据到肌肉几何形状

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EMG signals are often used to control prostheses or assistive devices, but have been rarely used in rehabilitation. We propose a novel approach to personalised rehabilitation, based on EMG-driven force field adaptation. As a step toward this direction, here we show how EMG activity and movement data during a robot-assisted motor task can be used to estimate muscle geometry. We compare three different models of muscle geometry, characterised by (i) constant moment arms (CM); (ii) a normative model, based on polynomial functions of joint angles with fixed coefficients (normative polynomial, NP); and (iii) a person-adaptive model, in which the same polynomial model is fitted to individual subjects data (fitted polynomial, FP). We found that the FP model has the best performance, specially for subjects whose size is farther from ‘average’. The fitting results also emphasise the adverse effect of muscles co-contraction.
机译:EMG信号通常用于控制假体或辅助设备,但很少用于康复中。我们提出了一种基于EMG驱动的力场适应的个性化康复的新方法。作为朝这个方向迈出的一步,我们在这里展示了如何在机器人辅助的运动任务期间将EMG活动和运动数据用于估计肌肉的几何形状。我们比较了三种不同的肌肉几何模型,其特征为:(i)恒定力矩臂(CM); (ii)基于具有固定系数的关节角的多项式函数的标准模型(标准多项式,NP); (iii)个人适应模型,其中将相同的多项式模型拟合到各个主题数据(拟合多项式,FP)。我们发现FP模型具有最佳的性能,特别是对于尺寸远大于“平均”的拍摄对象。拟合结果还强调了肌肉共收缩的不利影响。

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