利用情境和人机交流来解决意外的情境冲突

Taylor J. Carpenter, W. Zachary
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引用次数: 4

摘要

虽然从目标导向任务表现的角度来看,开发机器人认知能力的努力取得了进展,但研究表明,需要额外的认知能力才能使机器人能够与人类互动、合作和作为队友。特别是,机器人需要额外的团队合作和协调知识,以及将这些知识应用于情境模型的能力,这种模型至少与人们在推理环境相互作用时使用的情境模型相似。上下文增强机器人接口层(CARIL)为机器人提供了一种认知驱动的计算能力,用于态势评估和态势适应。CARIL用于分析和开发基于上下文的推理策略,当他们在共享任务和/或共享空间中工作时,允许机器人与人类协调其行为和空间运动。无通信和通信方法都在模拟环境中进行了处理和测试。
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Using context and robot-human communication to resolve unexpected situational conflicts
While efforts to develop cognitive abilities for robots have made progress from the perspective of goal-directed task performance, research has shown that additional cognitive capabilities are needed to enable robots to interact, cooperate, and act as teammates with humans. In particular, robots need additional teamwork and coordination knowledge and an ability to apply this knowledge to a model of context that is at least homologous to the context models that people use in reasoning about environmental interactions. The Context-Augmented Robotic Interface Layer (CARIL) provides a robot with a cognitively-motivated computational capability for situation assessment and situational adaptation. CARIL is used to analyze and develop context-based reasoning strategies that allow a robot to coordinate its behavior and spatial movements with humans when they are working on shared tasks and/or in shared space. Both communication-free and communications approaches are addressed and tested in a simulated environment.
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