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首页> 外文期刊>Gait & posture >An individual-specific gait pattern prediction model based on generalized regression neural networks
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An individual-specific gait pattern prediction model based on generalized regression neural networks

机译:基于广义回归神经网络的个人特定步态模式预测模型

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摘要

Robotics is gaining its popularity in gait rehabilitation. Gait pattern planning is important to ensure that the gait patterns induced by robotic systems are tailored to each individual and varying walking speed. Most research groups planned gait patterns for their robotics systems based on Clinical Gait Analysis (CGA) data. The major problem with the method using the CGA data is that it cannot accommodate inter-subject differences. In addition, CGA data is limited to only one walking speed as per the published data. The objective of this work was to develop an individual-specific gait pattern prediction model for gait pattern planning in the robotic gait rehabilitation systems. The waveforms of lower limb joint angles in the sagittal plane during walking were obtained with a motion capture system. Each waveform was represented and reconstructed by a Fourier coefficient vector which consisted of eleven elements. Generalized regression neural networks (GRNNs) were designed to predict Fourier coefficient vectors from given gait parameters and lower limb anthropometric data. The generated waveforms from the predicted Fourier coefficient vectors were compared to the actual waveforms and CGA waveforms by using the assessment parameters of correlation coefficients, mean absolute deviation (MAD) and threshold absolute deviation (TAD). The results showed that lower limb joint angle waveforms generated by the gait pattern prediction model were closer to the actual waveforms compared to the CGA waveforms.
机译:机器人技术在步态康复中越来越受欢迎。步态模式规划对于确保由机器人系统诱发的步态模式针对每个个体和变化的步行速度进行定制非常重要。大多数研究小组都基于临床步态分析(CGA)数据为其机器人系统计划了步态模式。使用CGA数据的方法的主要问题在于,它不能容纳对象间的差异。此外,根据已发布的数据,CGA数据仅限于一种步行速度。这项工作的目的是为机器人步态康复系统中的步态计划开发一个特定于个人的步态模式预测模型。使用运动捕捉系统获得步行过程中矢状面中下肢关节角度的波形。每个波形都由包含11个元素的傅立叶系数矢量表示和重建。设计了广义回归神经网络(GRNN),可以根据给定的步态参数和下肢人体测量数据预测傅立叶系数向量。通过使用相关系数,平均绝对偏差(MAD)和阈值绝对偏差(TAD)的评估参数,将从预测傅里叶系数向量生成的波形与实际波形和CGA波形进行比较。结果表明,与CGA波形相比,步态模式预测模型生成的下肢关节角度波形更接近实际波形。

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