Robots that can effectively understand human intentions from actions are crucial for successful human-robot collaboration. In this work, we address the challenge of a robot navigating towards an unknown goal while also accounting for a human's preference for a particular path in the presence of obstacles. This problem is particularly challenging when both the goal and path preference are unknown a priori. To overcome this challenge, we propose a method for encoding and inferring path preference online using a partitioning of the space into polytopes. Our approach enables joint inference over the goal and path preference using a stochastic observation model for the human. We evaluate our method on an unknown-goal navigation problem with sparse human interventions, and find that it outperforms baseline approaches as the human's inputs become increasingly sparse. We find that the time required to update the robot's belief does not increase with the complexity of the environment, which makes our method suitable for online applications.
翻译:摘要:能够有效理解人类动作意图的机器人对于实现人机协作至关重要。本文研究机器人导航至未知目标的挑战,在考虑障碍物的同时考虑人类对特定路径的偏好。当目标和路径偏好都未知时,这个问题尤其具有挑战性。为了解决这个问题,我们提出了一种将空间分成多面体的编码和在线推断路径偏好的方法。我们的方法使用随机观测模型对人来进行目标和路径偏好的联合推断。我们在一个未知目标导航问题上评估了我们的方法,结果表明,随着人类输入越来越稀疏,我们的方法优于基线方法。我们发现,更新机器人信念所需的时间不会随着环境复杂度的增加而增加,这使得我们的方法适用于在线应用。