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Arm movements effect on grasping force prediction using surface electromyography signals

机译:手臂运动对使用表面肌电信号预测抓力的影响

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This study investigated the arm movements effect on the relationship between surface electromyography (EMG) signals and grasping force. An experiment was conducted with four static arm conditions and two dynamic arm conditions. Six able-bodied subjects participated in the experiment. Surface EMG signals were acquired from five forearm muscles to build a multiple linear regression model. Subjects were instructed to complete three kinds of calibration tasks to train the model and one voluntarily varying grasping force task to test the model performance. The grasping force exerted by each subject was limited to be lower than 50% maximum voluntary contraction (MVC) grasping force. Mean absolute difference (MAD) between predicted and observed grasping force was used to estimate the prediction performance. The window size of moving average filter was firstly optimized. Results showed that arm movements had a significant impact on grasping force prediction performance. Inter-condition MADs (training data and testing data are from different arm conditions) were greater than intra-condition MADs (training data and testing data are from the same arm condition, average 7.41%±1.46% MVC vs. 6.03%±0.40% MVC, p = 0.023). A multi-condition training scheme was applied to attenuate the arm movements effect. The multi-condition training scheme was proved to be useful to improve the model robustness to the arm movements effect.
机译:这项研究调查了手臂运动对表面肌电图(EMG)信号和抓握力之间关系的影响。在四个静态臂条件和两个动态臂条件下进行了实验。六个身体健全的受试者参加了实验。从五只前臂肌肉获取表面肌电信号,以建立多元线性回归模型。指示受试者完成三种校准任务以训练模型,并完成一项自愿变化的抓力任务以测试模型性能。每个对象施加的抓取力被限制为小于最大自愿收缩(MVC)抓取力的50%。预测抓握力和观察到的抓握力之间的平均绝对差(MAD)用于估计预测性能。首先对移动平均滤波器的窗口大小进行了优化。结果表明,手臂运动对抓力预测性能有重要影响。条件间MAD(训练数据和测试数据来自不同的臂条件)要大于条件间MAD(训练数据和测试数据来自相同的臂条件,MVC的平均值为7.41 \%±1.46 \%,而6.03 \% ±0.40%MVC,p = 0.023)。应用了一种多条件训练方案来减弱手臂运动效果。事实证明,多条件训练方案对于提高模型对手臂运动效果的鲁棒性是有用的。

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