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Subject-specific lower limb waveforms planning via artificial neural network

机译:通过人工神经网络规划特定对象的下肢波形

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Robotic is gaining its popularity in gait rehabilitation. Gait pattern planning is important, in order to ensure the gait patterns induced by robotic systems on the patient are natural and smooth. It is known that the gait parameters (stride length, cadence) are the key factors, which affect gait pattern. However, a systematic methodology for gait pattern planning is missing. Therefore, a gait pattern generation methodology, GaitGen, was proposed in our previous work. In this paper, we introduce a new model to enhance the proposed methodology for generating the joint angle waveforms of the lower limb during walking, with the gait parameters and the lower limb anthropometric data as input. The walking motion was captured with a motion capture system using passive markers. The waveforms of lower limb joint angles were calculated from the experimental data and the waveforms were then decomposed into Fourier coefficients. Therefore, each joint angle waveform can be represented by a Fourier coefficient vector containing eleven elements to facilitate the waveform analysis. Multi-layer perceptron neural networks (MLPNNs) were designed to predict the Fourier coefficient vectors for specific subject and desired gait parameters. Assessment parameters such as correlation coefficient, mean absolute deviation (MAD) and threshold absolute deviation (TAD) were calculated to examine the quality of MLPNNs' prediction. The constructed waveforms from predicted Fourier coefficient vectors were compared with the actual waveforms calculated from experimental data by using the above-mentioned assessment parameters. The results show that the constructed waveforms closely match the experimental waveforms based on the assessment parameter outcomes.
机译:机器人在步态康复中越来越受欢迎。步态模式规划很重要,以确保由机器人系统在患者身上诱发的步态模式自然且流畅。众所周知,步态参数(步幅,步频)是影响步态模式的关键因素。但是,缺少用于步态模式规划的系统方法。因此,在我们以前的工作中提出了一种步态模式生成方法GaitGen。在本文中,我们引入了一个新模型来增强拟议的方法,该方法以步态参数和下肢人体测量数据作为输入来生成步行过程中下肢的关节角度波形。步行运动是使用被动标记的运动捕获系统捕获的。根据实验数据计算下肢关节角度的波形,然后将其分解为傅立叶系数。因此,每个关节角度波形都可以用包含11个元素的傅里叶系数矢量表示,以便于波形分析。设计了多层感知器神经网络(MLPNN),以预测特定对象和所需步态参数的傅立叶系数向量。计算相关参数,平均绝对偏差(MAD)和阈值绝对偏差(TAD)等评估参数,以检验MLPNN预测的质量。通过使用上述评估参数,将根据预测傅立叶系数向量构造的波形与根据实验数据计算的实际波形进行比较。结果表明,根据评估参数的结果,所构建的波形与实验波形非常匹配。

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