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Robot navigation in dense human crowds: Statistical models and experimental studies of human–robot cooperation

机译:人群密集的机器人导航:人机协作的统计模型和实验研究

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摘要

We consider the problem of navigating a mobile robot through dense human crowds. We begin by exploring a fundamental impediment to classical motion planning algorithms called the “freezing robot problem”: once the environment surpasses a certain level of dynamic complexity, the planner decides that all forward paths are unsafe, and the robot freezes in place (or performs unnecessary maneuvers) to avoid collisions. We argue that this problem can be avoided if the robot anticipates human cooperation, and accordingly we develop interacting Gaussian processes, a prediction density that captures cooperative collision avoidance, and a “multiple goal” extension that models the goal-driven nature of human decision making. We validate this model with an empirical study of robot navigation in dense human crowds (488 runs), specifically testing how cooperation models effect navigation performance. The multiple goal interacting Gaussian processes algorithm performs comparably with human teleoperators in crowd densities nearing 0.8 humans/m^2, while a state-of-the-art non-cooperative planner exhibits unsafe behavior more than three times as often as the multiple goal extension, and twice as often as the basic interacting Gaussian process approach. Furthermore, a reactive planner based on the widely used dynamic window approach proves insufficient for crowd densities above 0.55 people/m^2. We also show that our non-cooperative planner or our reactive planner capture the salient characteristics of nearly any dynamic navigation algorithm. Based on these experimental results and theoretical observations, we conclude that a cooperation model is critical for safe and efficient robot navigation in dense human crowds.
机译:我们考虑在人口稠密的人群中导航移动机器人的问题。我们首先探讨经典运动规划算法的一个基本障碍,即“冻结机器人问题”:一旦环境超过了一定程度的动态复杂性,规划者就会确定所有前进路径都不安全,并且机器人会冻结在原处(或执行避免不必要的操作)。我们认为,如果机器人预期人类会合作,则可以避免此问题,因此,我们开发了交互的高斯过程,捕获了合作式避碰的预测密度以及对人类决策制定的目标驱动性质进行建模的“多个目标”扩展。我们通过对密集人群(488次跑步)中机器人导航的实证研究来验证该模型,特别是测试合作模型如何影响导航性能。多目标交互高斯过程算法在人口密度接近0.8人/ m ^ 2的情况下与人类远程操作员具有可比性,而最先进的非合作计划者表现出的不安全行为是多目标扩展的三倍以上,并且是基本的相互作用高斯过程方法的两倍。此外,基于广泛使用的动态窗口方法的反应式计划者被证明不足以应对超过0.55人/ m ^ 2的人群密度。我们还表明,我们的非合作式计划者或被动式计划者几乎可以捕获任何动态导航算法的显着特征。基于这些实验结果和理论观察,我们得出结论,协作模型对于在人群密集的人群中安全有效地进行机器人导航至关重要。

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