基于物体交互的人体运动预测

Lilli Bruckschen, Nils Dengler, Maren Bennewitz
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引用次数: 7

摘要

在本文中,我们考虑了在室内环境中移动的人的导航目标预测问题。了解这一目标可以大大提高机器人在相同环境中行动的效率,因为可以避免干扰,并在必要时快速提供帮助。通常,导航目标取决于人类之前的行为和人类之前与之交互的对象。因此,关于先前对象交互的信息可以用来推断人类接下来可能与之交互的对象,这些对象可以用来预测当前的导航目标。我们建议学习后续对象交互的概率分布,并提出一个框架,该框架利用学习过渡模型以及对人类位置和姿势的观察来预测他们的运动目标。正如我们在各种实验中所展示的那样,与仅依赖空间信息而不考虑物体相互作用的预测方法相比,有关物体相互作用转移概率的信息可以可靠地预测导航目标,并提高精度。此外,我们还演示了如何使用该预测来实现有远见的机器人导航。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Motion Prediction Based on Object Interactions
In this paper, we consider the problem of predicting the navigation goal of a moving human in an indoor environment. Knowledge about this goal can greatly increase the efficiency of robots acting in the same environment as interferences can be avoided and assistance quickly provided if necessary. Often the navigation goal depends on the previous action of the human and the object the human has interacted with before. Thus, the information about previous object interactions can be used to infer possible objects the human will interact with next, which in term can be used to predict the current navigation goal. We propose to learn a probability distribution of subsequent object interactions and present a framework that utilizes the learned transition model as well as observations of the human's location and pose for the prediction of their movement goal. As we show in various experiments, the information about transition probabilities of object interactions leads to reliable predictions of the navigation goal and improves the accuracy compared to prediction approaches that rely only on spatial information and do not consider object interactions. Furthermore, we demonstrate how the prediction can be used to realize foresighted robot navigation.
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