Motion Synthesis for Upper-Limb Rehabilitation Motion With Clustering-Based Machine Learning Method

Chen Wenxiu, Song Wanbing, Haodong Chen, Qi Li, Ping Zhao
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引用次数: 1

Abstract

Nowadays, mechanical devices such as robots are widely adopted for limb rehabilitation. Due to the variety of human body parameters, the rehabilitation motion for different patient usually has its individual pattern. Thus it is obviously not an optimal solution to use a single motion generator to suit all patients. Yet it would also be unpractical if we design a different motion or even a different mechanism for each user individually. Therefore, in this paper we seek to adopt clustering-based machine learning technique to find a limited number of motion patterns for upper-limb rehabilitation, so that they could represent the large amount of those from people who have various body parameters. Firstly, the trajectory of a specified rehabilitation motion are recorded from various subjects, and then 4 types of machine learning algorithms (spectral clustering, hierarchical clustering, self-organizing mapping neural network and Gaussian mixture model) are implemented and compared. It is shown that spectral clustering (SC) yields the best performance and is hereby adopted to generate three clusters of motion patterns. After regression of each cluster, three types of motion for upper limb-rehabilitation are constructed, which could reflect the trajectories’ similarity and difference of people who have various body parameters. These work will provide help for the design of rehabilitation mechanisms.
基于聚类的机器学习方法的上肢康复运动综合
目前,机器人等机械设备被广泛应用于肢体康复。由于人体参数的多样性,不同患者的康复运动通常有其个体模式。因此,使用单一运动发生器来适应所有患者显然不是最佳解决方案。然而,如果我们为每个用户单独设计不同的动作甚至不同的机制,这也是不切实际的。因此,在本文中,我们寻求采用基于聚类的机器学习技术来寻找有限数量的上肢康复运动模式,使它们能够代表大量来自不同身体参数的人的运动模式。首先记录不同受试者指定的康复运动轨迹,然后对光谱聚类、层次聚类、自组织映射神经网络和高斯混合模型4种机器学习算法进行实现和比较。结果表明,光谱聚类(SC)的性能最好,并采用该方法生成了三种运动模式簇。对每个聚类进行回归后,构建了上肢康复运动的三种类型,可以反映不同身体参数人群运动轨迹的相似性和差异性。这些工作将为设计康复机制提供帮助。
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