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LSTM-Based Lower Limbs Motion Reconstruction Using Low-Dimensional Input of Inertial Motion Capture System

机译:基于LSTM的下肢运动重建使用低维输入惯性运动捕获系统

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摘要

Motion capture system has been widely used in virtual reality and rehabilitation area. This study proposed a data-driven method using low-dimensional input of inertial motion capture system to reconstruct human lower-limb motions. The long short-term memory (LSTM) neural network was used and an ensemble LSTM architecture was involved to improve reconstruction performance. Besides, the selection of optimal sensor configuration scheme and time-step parameters of LSTM network was discussed in detail. The reconstruction experiment shows that the method could get the lowest reconstruction joint angle root mean square (RMS) errors of 4.031 degrees on separated motion dataset, and 5.105 degrees on completely new dataset of synthetic motions using ensemble LSTM model with 18 base learner and three sensors units. The computational consumption test shows that the single and ensemble LSTM model spend 0.15ms and 0.91ms respectively to predict next frame. These findings demonstrate that the proposed method is effective and efficient for motions reconstruction of lower limbs.
机译:运动捕获系统已广泛用于虚拟现实和康复区域。该研究提出了一种数据驱动方法,使用惯性运动捕获系统的低维输入来重建人的低肢运动。使用长短期内存(LSTM)神经网络,并涉及集合LSTM架构来改善重建性能。此外,详细讨论了LSTM网络的最佳传感器配置方案和时间步长参数的选择。重建实验表明,该方法可以在分离的运动数据集上获得4.031度的最低重建关节角度均方(RMS)误差,以及使用具有18个基础学习者的集合LSTM模型和三个传感器的合成动作的全新数据集5.105度单位。计算消耗测试表明,单个和集合LSTM模型分别花费0.15ms和0.91ms以预测下一帧。这些发现表明,该方法对于下肢的运动重建是有效和有效的。

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