首页> 外文会议>International Conference on Progress in Informatics and Computing >Estimation of Wrist Joint Moment by Fusing Musculoskeletal Model and Muscle Synergy for Neuromuscular Interface
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Estimation of Wrist Joint Moment by Fusing Musculoskeletal Model and Muscle Synergy for Neuromuscular Interface

机译:融合肌肉骨骼模型和神经肌肉接口的肌肉协同作用估算腕关节力矩。

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The joint moment provides specific information of human motion. It plays an important role as an advanced interfacing technology in robot assistant systems for elderly and disabled people. The surface electromyography (sEMG) signals are usually affected by the adjacent muscles. And muscle tendon units in the same muscle show different activation characteristics with different movement patterns. It is significant to calculate the contribution degree of signals from multi-channels to different movements. In this paper, the wrist joint moment, in particular the flexion and extension of wrist (WFE), is estimated by a novel approach that combines muscle synergy theory with musculoskeletal model. sEMG signal and joint angle of WFE were collected and input to the estimation model to calculate the joint moment. Experiments on five healthy subjects have demonstrated that, the estimation result of the proposed approach is more accurate with higher average correlation coefficient (CC) and lower normalized root-mean-square error (NRMSE) between estimated moment and reference moment.
机译:关节力矩提供了人体运动的特定信息。它在老年人和残疾人的机器人辅助系统中作为一种先进的接口技术发挥着重要作用。表面肌电图(sEMG)信号通常受邻近肌肉的影响。并且同一肌肉中的肌腱单元显示出不同的激活特性和不同的运动方式。计算多通道信号对不同运动的贡献度非常重要。在本文中,通过一种将肌肉协同理论与肌肉骨骼模型相结合的新方法,估计了腕关节力矩,特别是腕部的屈伸(WFE)。收集sEMG信号和WFE的关节角度,并将其输入到估计模型中以计算关节力矩。在五个健康受试者上进行的实验表明,该方法的估计结果更加准确,估计时刻与参考时刻之间的平均相关系数(CC)更高,归一化均方根误差(NRMSE)更低。

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