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Separating Timing Movement Conditions and Individual Differences in the Analysis of Human Movement

机译:人体运动分析中的时间运动条件和个体差异分开

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摘要

A central task in the analysis of human movement behavior is to determine systematic patterns and differences across experimental conditions, participants and repetitions. This is possible because human movement is highly regular, being constrained by invariance principles. Movement timing and movement path, in particular, are linked through scaling laws. Separating variations of movement timing from the spatial variations of movements is a well-known challenge that is addressed in current approaches only through forms of preprocessing that bias analysis. Here we propose a novel nonlinear mixed-effects model for analyzing temporally continuous signals that contain systematic effects in both timing and path. Identifiability issues of path relative to timing are overcome by using maximum likelihood estimation in which the most likely separation of space and time is chosen given the variation found in data. The model is applied to analyze experimental data of human arm movements in which participants move a hand-held object to a target location while avoiding an obstacle. The model is used to classify movement data according to participant. Comparison to alternative approaches establishes nonlinear mixed-effects models as viable alternatives to conventional analysis frameworks. The model is then combined with a novel factor-analysis model that estimates the low-dimensional subspace within which movements vary when the task demands vary. Our framework enables us to visualize different dimensions of movement variation and to test hypotheses about the effect of obstacle placement and height on the movement path. We demonstrate that the approach can be used to uncover new properties of human movement.
机译:分析人类运动行为的中心任务是确定系统的模式和实验条件,参与者和重复之间的差异。这是可能的,因为人类运动是高度规则的,并受不变性原则的约束。尤其是,运动时间和运动路径通过缩放定律链接在一起。将运动定时的变化与运动的空间变化分开是众所周知的挑战,在当前方法中只能通过偏见分析的预处理形式来解决。在这里,我们提出了一种新颖的非线性混合效应模型,用于分析在时间和路径上均包含系统效应的时间连续信号。通过使用最大似然估计,可以克服路径相对于时序的可识别性问题,其中最大的可能性是根据给定的数据变化选择最可能的时空分隔。该模型用于分析人体手臂运动的实验数据,其中参与者将手持对象移动到目标位置,同时避开障碍物。该模型用于根据参与者对运动数据进行分类。与替代方法的比较将建立非线性混合效应模型,作为常规分析框架的可行替代方法。然后,该模型与新颖的因子分析模型结合在一起,该模型可以分析低维子空间,当任务需求变化时,子空间内的运动也会变化。我们的框架使我们能够可视化移动变化的不同维度,并测试关于障碍物位置和高度对移动路径的影响的假设。我们证明了该方法可用于揭示人类运动的新特性。

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