Automated scheduling is potentially a very useful tool for facilitating efficient, intuitive interactions between a robot and a human teammate. However, a current gapin automated scheduling is that it is not well understood how to best represent the timing uncertainty that human teammates introduce. This paper attempts to address this gap by designing an online human-robot collaborative packaging game that we use to build a model of human timing uncertainty from a population of crowd-workers. We conclude that heavy-tailed distributions are the best models of human temporal uncertainty, with a Log-Normal distribution achieving the best fit to our experimental data. We discuss how these results along with our collaborative online game will inform and facilitate future explorations into scheduling for improved human-robot fluency.
翻译:自动排期可能是促进机器人和人类团队之间高效、直觉互动的一个非常有用的工具。 但是,目前自动化排期的空白在于,对于如何最好地代表人类团队同伴带来的时间不确定性,人们并不十分了解。本文试图通过设计一个在线人类机器人合作包装游戏来弥补这一差距,我们用这个游戏来构建一个人群中人类时间不确定性模型。我们的结论是,重成型分布是人类时间不确定性的最佳模型,日志-热量分布最符合我们的实验数据。我们讨论了这些结果与我们的在线协作游戏一起如何为未来探索改进人类-机器人流畅度的时间安排提供信息和便利。