Fluent human-human teaming is often characterized by tacit interaction without explicit communication. This is because explicit communication, such as language utterances and gestures, are inherently interruptive. On the other hand, tacit interaction requires team situation awareness (TSA) to facilitate, which often relies on explicit communication to maintain, creating a paradox. In this paper, we consider implicit and naturalistic team status projection for tacit human-robot interaction. Implicitness minimizes interruption while naturalness reduces cognitive demand, and they together improve responsiveness to robots. We introduce a novel process for such Team status Projection via virtual Shadows, or TPS. We compare our method with two baselines that use explicit projection for maintaining TSA. Results via human factors studies demonstrate that TPS provides a more fluent human-robot interaction experience by significantly improving human responsiveness to robots in tacit teaming scenarios, which suggests better TSA. Participants acknowledged robots implementing TPS as more acceptable as a teammate and favorable. Simultaneously, we demonstrate that TPS is comparable to, and sometimes better than, the best-performing baseline in maintaining accurate TSA
翻译:在本文中,我们考虑的是隐含和自然的团队状态预测,即人类-机器人的默认互动。隐含和自然的团队状态预测可以减少干扰,而自然的认知需求则减少干扰,它们可以一起改善对机器人的反应。我们通过虚拟影子或TPS为团队地位预测引入了一个新的过程。我们比较了我们的方法与使用明确预测来维持TSA的两种基线。通过人类因素研究的结果表明,TPS通过显著提高人类在默认团队情景中对机器人的反应能力,从而提供了一种更流畅的人类-机器人互动经验,这表明TSA效果更好。与会者承认,实施TPS的机器人作为团队伙伴更容易被接受,而且更加有利。同时,我们证明,TPS与维护准确的TSA的最佳基准相比,有时甚至更好。