Evaluation of Assistance System to Predict Sit-to-stand Speed using Trunk Angle and Lower Limb EMG

Tsuyoshi Inoue, Kosuke Uehata, Chihiro Tomoda
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Abstract

We have developed a sit-to-stand assist system that predicts the movement speed and drives at that speed. The assistance system predicts the speed of sit-to-stand movement based on multiple regression analysis. The measurement of trunk angle and lower limb electromyogram (EMG) were used as the explanatory variables for the multiple regression analysis. To verify the effectiveness of the developed system, we conducted evaluation experiments on two participants. The evaluation was performed based on the difference of amount of system support between the conventional constant speed control and the proposed predictive speed control. The evaluation results show that the predictive speed control resulted in more support, confirming the effectiveness of the system control that predicted the sit-to-stand speed.
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利用躯干角度和下肢肌电图预测坐立速度的辅助系统评价
我们已经开发了一个坐姿-站立辅助系统,可以预测移动速度并以该速度驾驶。辅助系统基于多元回归分析预测坐姿到站立的运动速度。以躯干角测量和下肢肌电图(EMG)作为多元回归分析的解释变量。为了验证所开发系统的有效性,我们对两个参与者进行了评估实验。根据常规恒速控制与预测速度控制的系统支持量差异进行评价。评估结果表明,预测速度控制获得了更多的支持,证实了预测坐姿到站立速度的系统控制的有效性。
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