基于预测和考虑社会影响的机器人在人群中的主动运动

Martin Moder, J. Pauli
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引用次数: 1

摘要

密集的人群对自主移动机器人来说是一个挑战。在这样的交互式环境中进行规划需要预测不确定的人类意图和对未来机器人动作的反应。针对这些能力,我们提出了一个考虑人类运动不确定性的概率预测模型:1)条件归一化流(CNF)估计人类目标的密度。2)对目标轨迹的密度进行自回归预测(AR),其中对动态数量的人类同时推断个体社会行为的密度。底层的高斯AR框架扩展了我们的SocialSampling,以抵消采样期间的碰撞。该模型允许我们确定以特定机器人计划为条件的人群预测和独立于该计划的相同目标的人群预测。我们证明了两种概率预测之间的分歧可以有效地确定,并从中得出我们的社会影响(SI)目标。最后,提出了一种最小化SI目标的机器人人群导航模型预测策略。因此,机器人反映了它未来的运动,以便尽可能不干扰人类的运动。在真实数据集上的实验表明,该模型在预测行人运动方面达到了最先进的精度。此外,我们的评估表明,具有我们的SI目标的机器人策略产生了安全和主动的行为,例如在正确的时间采取回避行动以避免冲突。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proactive Robot Movements in a Crowd by Predicting and Considering the Social Influence
Dense crowds are challenging scenes for an autonomous mobile robot. Planning in such an interactive environment requires predicting uncertain human intentions and reactions to future robot actions. Concerning these capabilities, we propose a probabilistic forecasting model which factorizes the human motion uncertainty as follows: 1) A (conditioned) normalizing flow (CNF) estimates the densities of human goals. 2) The density of trajectories toward goals is predicted autoregressively (AR), where the density of individual social actions is inferred simultaneously for a dynamic number of humans. The underlying Gaussian AR framework is extended with our SocialSampling to counteract collisions during sampling. The model allows us to determine a crowd prediction conditional on a particular robot plan and a crowd prediction independent of it for the same goals. We demonstrate that the divergence between the two probabilistic predictions can be efficiently determined and we derive our Social Influence (SI) objective from it. Finally, a model-predictive policy for robot crowd navigation is proposed that minimizes the SI objective. Thus, the robot reflects its future movement in order not to disturb humans in their movement if possible. The experiments on real datasets show that the model achieves state-of-the-art accuracy in predicting pedestrian movements. Furthermore, our evaluations show that robot policy with our SI objective produces safe and proactive behaviors, such as taking evasive action at the right time to avoid conflicts.
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