Clustering of Human Motion Trajectory for Lower Limb Rehabilitation Robot Design Based on Machine Learning

Kangren Zhao, Zhiqiang Teng, N. Gong, Chen Fangkang, Ping Zhao
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Abstract

Lower limb rehabilitation robots, which usually produce repeated rehabilitative motion, not only simulate general human walking to help patients practice, but also do benefits to the remodel central nervous system to learn and store correct motion model. However, patients with different body parameters usually have different lower limb motion trajectories, and sometimes even the same person’s multiple motion trajectories could differ, thus the task of designing a specific lower limb rehabilitation mechanism for the realization of every motion trajectory is not practical. In this paper, we propose an approach to the clustering of motion trajectories of human lower limb to obtain a limited number of rehabilitation task motion types. Firstly, Gaussian distribution is adopted for the fitting of multiple trajectories of the same person. Through comparison of various clustering algorithms according to separation and compactness, Hierarchical clustering algorithm is chosen to obtain the partitions of the clusters. Finally, the Gaussian process regression (GPR) model of each cluster is established. Results show that clusters generated by this approach can reflect motion trajectory of the subjects and predict human lower limb motion pattern. With a limited number of lower-limb motion patterns, the design task of rehabilitation robots could be greatly simplified.
基于机器学习的下肢康复机器人人体运动轨迹聚类设计
下肢康复机器人通常会产生重复的康复运动,它不仅可以模拟一般的人类行走来帮助患者练习,而且有利于中枢神经系统的重塑学习和存储正确的运动模型。然而,不同身体参数的患者通常有不同的下肢运动轨迹,有时甚至同一个人的多个运动轨迹也可能不同,因此设计一个特定的下肢康复机制来实现每一个运动轨迹的任务是不现实的。在本文中,我们提出了一种对人类下肢运动轨迹进行聚类的方法,以获得有限数量的康复任务运动类型。首先,采用高斯分布对同一个人的多条轨迹进行拟合。通过对各种聚类算法在分离性和紧凑性方面的比较,选择层次聚类算法来获得聚类的分区。最后,建立各聚类的高斯过程回归(GPR)模型。结果表明,该方法生成的聚类能够反映受试者的运动轨迹,预测人体下肢运动模式。由于下肢运动模式的数量有限,康复机器人的设计任务可以大大简化。
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