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Synergistic Characteristic of Human Hand during Grasping Tasks in Daily Life

机译:在日常生活中掌握任务期间人手协同特征

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It is amazing for human to control highly complex hand with many degrees of freedom. To explore the mystery of hand, we use correlation analysis on human hand movement dataset, which is recorded from 33 kinds of grasping tasks in daily life, and obtain correlation relationships of all joints by hierarchical cluster analysis. The correlation relationships imply the feature of human hand movement. Thumb move relatively independently and other fingers move relatively synergistically during all grasping tasks. Moreover, DIP and PIP joints of all four fingers connect closer together than MCP joints. Before that work in this paper, we try to use dimensional reduction method, which is the main technique, to study the synergistic characteristic. It also supports the conclusion by the considerable inhomogeneity of index of RREV, which is raised to assess the error of each joint variable.
机译:对于人类来控制高度复杂的手感是惊人的,具有多种自由度。为了探索手的谜团,我们使用对人手移动数据集的相关分析,该数据集从日常生活中的33种掌握任务中记录,并通过分层集群分析获得所有关节的相关关系。相关关系意味着人手运动的特征。拇指移动相对独立,其他手指在所有掌握任务期间相对协同移动。此外,所有四个手指的倾角和皮点接头比MCP接头连接在一起。在本文的工作之前,我们尝试使用尺寸减少方法,即主要技术,研究协同特征。它还通过RREV指数的相当不均匀性来支持结论,这被提出以评估每个关节变量的误差。

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