社交导航的观察者感知易读性

Ada V Taylor, Elizabeth Mamantov, H. Admoni
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引用次数: 2

摘要

我们设计了一种观察者感知的方法,用于创建导航路径,同时指示机器人的目标,同时试图保持在特定观察者的视线内。可读运动的现有技术没有考虑到观察者的有限视野,这可能导致被目标受众未观察到的浪费沟通努力。我们的观察者感知易读性算法直接对观察者的位置和视角进行建模,并将易读的运动放置在容易看到的地方。为了探索这种技术的有效性,我们进行了一项300人的在线用户研究。用户观看了餐厅场景的第一人称视频,机器人服务员沿着为不同观察者视角优化的路径移动,以及一条不考虑任何观察者视野的基线路径。参与者被要求报告他们对机器人沿着每条路径移动时朝他们的桌子和另一个目标桌子移动的可能性的估计。我们发现,对于没有完全看到餐厅的观察者来说,观察者感知的易读性在增加观察者正确推断机器人目标的时间上是有效的。非目标观察者在为其他观察者创建的路径上表现较差,这是为特定观察者个性化易读运动的自然缺点。我们还发现,观察者与环境的关系(例如,在他们的视野中有什么)比观察者与目标观察者的相对位置对他们的推断有更大的影响,并讨论了这意味着如何需要环境知识才能有效地同时为多个观察者进行规划。
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Observer-Aware Legibility for Social Navigation
We designed an observer-aware method for creating navigation paths that simultaneously indicate a robot’s goal while attempting to remain in view for a particular observer. Prior art in legible motion does not account for the limited field of view of observers, which can lead to wasted communication efforts that are unobserved by the intended audience. Our observer-aware legibility algorithm directly models the locations and perspectives of observers, and places legible movements where they can be easily seen. To explore the effectiveness of this technique, we performed a 300-person online user study. Users viewed first-person videos of restaurant scenes with robot waiters moving along paths optimized for different observer perspectives, along with a baseline path that did not take into account any observer’s field of view. Participants were asked to report their estimate of how likely it was the robot was heading to their table versus the other goal table as it moved along each path. We found that for observers with incomplete views of the restaurant, observer-aware legibility is effective at increasing the period of time for which observers correctly infer the goal of the robot. Non-targeted observers have lower performance on paths created for other observers than themselves, which is the natural drawback of personalizing legible motion to a particular observer. We also find that an observer’s relationship to the environment (e.g. what is in their field of view) has more influence on their inferences than the observer’s relative position to the targeted observer, and discuss how this implies knowledge of the environment is required in order to effectively plan for multiple observers at once.
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