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Phase Learning to Extract Phase from Forelimb(s) and Hindlimb(s) Movement in Real Time

机译:阶段学习以实时从前肢提取阶段和后肢运动

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Interlimb coordination is important for the enhancement of walking gait in spinal cord injured patients and many studies have recently attempted to dynamically map these movements for use in assistive devices. Nevertheless, there are many difficulties such as high variation of signal and lack of precise algorithms to extract continuous phases in real time. An improved phase learning to extract forelimb(s) and hindlimb phases from movements in real time is proposed. To quantify the performance of our proposed phase learning method, this phase learning is compared to Hilbert transform, a commonly used analytical method for offline process, with principal component analysis (PCA). The comparison between two methods demonstrated that a percentage of root mean square (RMS) time error between goal phase and output phase from our phase learning method is 7.94% as compared to that of Hilbert transform (7.44%). This phase learning that can extract phase in real time improves the analysis of interlimb coordination in robotic application.
机译:InterlaMB协调对于脊髓损伤患者的行走步态增强很重要,并且最近研究许多研究可以动态地映射这些运动以用于辅助设备。然而,存在许多困难,例如,信号的高变化和缺乏精确算法,实时提取连续阶段。提出了一种改进的阶段学习,以实时地从运动中提取前肢和后肢阶段。为了量化我们所提出的相位学习方法的性能,将该相位学习与Hilbert变换进行比较,是具有主成分分析(PCA)的常用分析方法。两种方法之间的比较表明,与Hilbert变换相比,来自我们的相位学习方法的目标阶段和输出阶段之间的根均线(RMS)时间误差的百分比为7.94%(7.44%)。该阶段学习可以实时提取阶段改善了机器人应用中的InterliMB协调的分析。

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