Observable subspaces for 3D human motion recovery

A. Fossati, M. Salzmann, P. Fua
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引用次数: 19

Abstract

The articulated body models used to represent human motion typically have many degrees of freedom, usually expressed as joint angles that are highly correlated. The true range of motion can therefore be represented by latent variables that span a low-dimensional space. This has often been used to make motion tracking easier. However, learning the latent space in a problem- independent way makes it non trivial to initialize the tracking process by picking appropriate initial values for the latent variables, and thus for the pose. In this paper, we show that by directly using observable quantities as our latent variables, we eliminate this problem and achieve full automation given only modest amounts of training data. More specifically, we exploit the fact that the trajectory of a person's feet or hands strongly constrains body pose in motions such as skating, skiing, or golfing. These trajectories are easy to compute and to parameterize using a few variables. We treat these as our latent variables and learn a mapping between them and sequences of body poses. In this manner, by simply tracking the feet or the hands, we can reliably guess initial poses over whole sequences and, then, refine them.
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三维人体运动恢复的可观察子空间
用于表示人体运动的关节体模型通常具有许多自由度,通常表示为高度相关的关节角度。因此,真实的运动范围可以用跨越低维空间的潜在变量来表示。这通常用于使运动跟踪更容易。然而,以问题独立的方式学习潜在空间使得通过为潜在变量选择适当的初始值来初始化跟踪过程变得不那么简单,从而为姿态选择合适的初始值。在本文中,我们表明,通过直接使用可观察量作为我们的潜在变量,我们消除了这个问题,并实现了完全自动化,只给出了适量的训练数据。更具体地说,我们利用了这样一个事实,即一个人的脚或手的运动轨迹强烈地限制了滑冰、滑雪或高尔夫等运动中的身体姿势。这些轨迹很容易计算,也很容易用几个变量来参数化。我们将这些视为潜在变量,并学习它们与身体姿势序列之间的映射。通过这种方式,通过简单地跟踪脚或手,我们可以可靠地猜测整个序列的初始姿势,然后,完善它们。
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