We propose, analyze, and experimentally verify a new proactive approach for robot social navigation driven by the robot's "opinion" for which way and by how much to pass human movers crossing its path. The robot forms an opinion over time according to nonlinear dynamics that depend on the robot's observations of human movers and its level of attention to these social cues. For these dynamics, it is guaranteed that when the robot's attention is greater than a critical value, deadlock in decision making is broken, and the robot rapidly forms a strong opinion, passing each human mover even if the robot has no bias nor evidence for which way to pass. We enable proactive rapid and reliable social navigation by having the robot grow its attention across the critical value when a human mover approaches. With human-robot experiments we demonstrate the flexibility of our approach and validate our analytical results on deadlock-breaking. We also show that a single design parameter can tune the trade-off between efficiency and reliability in human-robot passing. The new approach has the additional advantage that it does not rely on a predictive model of human behavior.
翻译:我们提出、分析和实验验证了一种新的机器人社交导航主动方法,由机器人的“意见”驱动,以确定机器人与人群交叉路径的方向和通行方法。机器人根据机器人观察到的人群移动和其对这些社交线索的关注程度所依赖的非线性动力学形成意见。对于这些动力学,如果机器人的注意力大于关键值,则保证在决策中断时会打破僵局,机器人会迅速形成强烈意见,即使机器人没有任何偏见或证据来决定通过的方向。通过让机器人在人群接近时增加关注度,我们实现了主动的快速可靠的社交导航。通过人机实验,我们展示了我们的方法的灵活性,并验证了我们在打破僵局方面的分析结果。我们还表明,一个单一的设计参数可以在人机互动中调节效率和可靠性之间的折衷关系。新方法的额外优点是,它不依赖于人类行为的预测模型。