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Estimation of muscular forces from SSA smoothed sEMG signals calibrated by inverse dynamics-based physiological static optimization

机译:通过基于逆动力学的生理静态优化校准的ssa平滑sEmG信号估计肌肉力

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摘要

The estimation of muscular forces is useful in several areas such as biomedical or rehabilitation engineering. As muscular forces cannot be measured in vivo non-invasively they must be estimated by using indirect measurements such as surface electromyography (sEMG) signals or by means of inverse dynamic (ID) analyses. This paper proposes an approach to estimate muscular forces based on both of them. The main idea is to tune a gain matrix so as to compute muscular forces from sEMG signals. To do so, a curve fitting process based on least-squares is carried out. The input is the sEMG signal filtered using singular spectrum analysis technique. The output corresponds to the muscular force estimated by the ID analysis of the recorded task, a dumbbell weightlifting. Once the model parameters are tuned, it is possible to obtain an estimation of muscular forces based on sEMG signal. This procedure might be used to predict muscular forces in vivo outside the space limitations of the gait analysis laboratory.
机译:肌肉力量的估计在诸如生物医学或康复工程的几个领域中是有用的。由于无法非侵入性地在体内测量肌肉力量,因此必须通过使用间接测量(例如表面肌电图(sEMG)信号)或通过逆动态(ID)分析来估算肌肉力量。本文提出了一种基于两者的估计肌肉力量的方法。主要思想是调整增益矩阵,以便根据sEMG信号计算肌肉力量。为此,执行基于最小二乘的曲线拟合过程。输入是使用奇异频谱分析技术过滤的sEMG信号。输出对应于通过记录任务的ID分析​​(哑铃举重)估算的肌肉力量。调整模型参数后,就有可能基于sEMG信号获得肌肉力量的估算值。此过程可用于在步态分析实验室的空间限制之外预测体内的肌肉力量。

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