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Anthropometric Features Based Gait Pattern Prediction Using Random Forest for Patient-Specific Gait Training

机译:基于人的步态模式预测使用随机林进行患者特定于患者的步态训练

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Using lower limb rehabilitation robots to help stroke patients recover their walking ability is becoming more and more popular presently. The natural and personalized gait trajectories designed for robot assisted gait training are very important for improving the therapeutic results. Meanwhile, it has been proved that human gaits are closely related to anthropometric features, which however has not been well researched. Therefore, a method based on anthropometric features for prediction of patient-specific gait trajectories is proposed in this paper. Firstly, Fourier series are used to fit gait trajectories, hence, gait patterns can be represented by the obtained Fourier coefficients. Then, human age, gender and 12 body parameters are used to design the gait prediction model. For the purpose of easy application on lower limb rehabilitation robots, the anthropometric features are simplified by an optimization method based on the minimal-redundancy-maximal-relevance criterion. Moreover, the relationship between the simplified features and human gaits is modeled by using a random forest algorithm, based on which the patient-specific gait trajectories can be predicted. Finally, the performance of the designed gait prediction method is validated on a dataset.
机译:使用下肢康复机器人,以帮助中风患者恢复他们的行走能力正变得越来越流行现。专为机器人辅助步态训练自然和个性化的步态轨迹是提高治疗效果非常重要。同时,它已经证明,人类的步态是密切相关的人体功能,然而这并没有得到很好的研究。因此,基于对患者特异性步态轨迹的预测人体特征的方法在本文提出。首先,傅里叶级数被用于拟合步态轨迹,因此,步态模式可以由所获得的傅立叶系数来表示。然后,人的年龄,性别和身体12的参数来设计步态预测模型。有关下肢康复机器人容易应用的目的,人体测量特征由基于最小冗余-最大-相关性准则的优化方法简化。此外,简化的特征和人的步态之间的关系是通过使用随机森林算法,基于在其上的患者特异性步态轨迹可以预测建模。最后,设计步态预测方法的性能进行了验证上的数据集。

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