论文标题

有多少个运动方程描述了一个移动的人?

How Many Equations of Motion Describe a Moving Human?

论文作者

De Luca, Gabriele, Lampoltshammer, Thomas J., Scholz, Johannes

论文摘要

人是一种在太空中移动的东西。就像所有在太空中移动的事物一样,我们可以原则上使用微分方程将其运动描述为一组函数,该功能将时间映射到定位(以及速度,加速度等)。使用无生命的对象,我们可以通过使用微分方程来可靠地预测它们的轨迹,而分析方程式最高为二阶时间导数,就像分析力学中通常所做的那样。但是,使用动画对象,尤其是人类,我们不知道定义其轨迹的方程组的基数。例如,我们可能会想到,例如,由于它们在认知或行为方面的复杂性与岩石相比,人类的运动比通常用来描述物理系统运动的运动需要更复杂的描述。在本文中,我们研究了有关人类移动性的现实世界数据集,并考虑每个(计算但已计算)的额外时间导数所添加的信息,并找到该立场的最大衍生物顺序,对于该特定数据集,不能表示为前一个的线性转换。通过这种方式,我们确定了正确描述观察到的轨迹的最小模型的维度。我们发现,加速度之后的每个高阶导数都线性依赖于先前的时间衍生物之一。该度量对噪声和分化技术的选择是可靠的,我们用来计算时间衍生物作为测量位置的函数。该结果对可用于描述移动人类的运动学的一组差分方程组施加了经验约束。

A human is a thing that moves in space. Like all things that move in space, we can in principle use differential equations to describe their motion as a set of functions that maps time to position (and velocity, acceleration, and so on). With inanimate objects, we can reliably predict their trajectories by using differential equations that account for up to the second-order time derivative of their position, as is commonly done in analytical mechanics. With animate objects, though, and with humans, in particular, we do not know the cardinality of the set of equations that define their trajectory. We may be tempted to think, for example, that by reason of their complexity in cognition or behaviour as compared to, say, a rock, then the motion of humans requires a more complex description than the one generally used to describe the motion of physical systems. In this paper, we examine a real-world dataset on human mobility and consider the information that is added by each (computed, but denoised) additional time derivative, and find the maximum order of derivatives of the position that, for that particular dataset, cannot be expressed as a linear transformation of the previous. In this manner, we identify the dimensionality of a minimal model that correctly describes the observed trajectories. We find that every higher-order derivative after the acceleration is linearly dependent upon one of the previous time-derivatives. This measure is robust against noise and the choice for differentiation techniques that we use to compute the time-derivatives numerically as a function of the measured position. This result imposes empirical constraints on the possible sets of differential equations that can be used to describe the kinematics of a moving human.

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