Estimation and anticipation of elbow joint angle from shoulder data during planar movements

M. Toosi, A. Maleki, A. Fallah
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引用次数: 2

Abstract

This paper describes the use of a feed-forward neural network for estimating and anticipating elbow joint angle. The method is based on mapping between six different combinations of muscles electromyographic signals (EMG) along with kinematics of the shoulder joint and the flexion/extension angle of elbow joint in four planar movements. Mean square error and cross correlation were used as quantitative criteria to reflect the performance of the method. We succeed to anticipate the future elbow angle up to 150 ms which is doing for the first time. For the most complete input combination which had also the best results, the cross correlation criterion between desired and anticipated splines for four movements respectively was %99.87, %99.90, %98.10 and %99.95.
平面运动中肩部数据对肘关节角度的估计和预测
本文介绍了一种前馈神经网络在肘关节角度估计和预测中的应用。该方法基于六种不同肌肉肌电信号组合之间的映射,以及四种平面运动中肩关节的运动学和肘关节的屈伸角。采用均方误差和相互关系作为定量标准来反映方法的性能。我们成功地预测了未来肘关节的角度达到150ms,这是第一次这样做。对于效果最好的最完整的输入组合,四个动作的期望样条与预期样条的相关系数分别为%99.87、%99.90、%98.10和%99.95。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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