Our world is being increasingly pervaded by intelligent robots with varying degrees of autonomy. To seamlessly integrate themselves in our society, these machines should possess the ability to navigate the complexities of our daily routines even in the absence of a human's direct input. In other words, we want these robots to understand the intentions of their partners with the purpose of predicting the best way to help them. In this paper, we present CASPER (Cognitive Architecture for Social Perception and Engagement in Robots): a symbolic cognitive architecture that uses qualitative spatial reasoning to anticipate the pursued goal of another agent and to calculate the best collaborative behavior. This is performed through an ensemble of parallel processes that model a low-level action recognition and a high-level goal understanding, both of which are formally verified. We have tested this architecture in a simulated kitchen environment and the results we have collected show that the robot is able to both recognize an ongoing goal and to properly collaborate towards its achievement. This demonstrates a new use of Qualitative Spatial Relations applied to the problem of intention reading in the domain of human-robot interaction.
翻译:我们的世界正日益被不同程度自主的智能机器人渗透。为了顺利地融入我们的社会,这些机器应该拥有在人类没有直接投入的情况下浏览我们日常工作复杂性的能力。换句话说,我们希望这些机器人理解其伙伴的意图,以便预测帮助他们的最佳方法。在本文中,我们介绍CASPER(社会感知和参与机器人的识别架构):一种象征性的认知结构,它利用质量的空间推理来预测另一个代理人追求的目标并计算最佳合作行为。这是通过一系列平行过程来完成的,这些过程模拟了低层次的行动认识和高层次的目标理解,两者都得到了正式的验证。我们已经在模拟厨房环境中测试了这一结构,我们收集的结果显示,机器人既能够承认一个持续的目标,又能够为实现这一目标进行适当的合作。这显示了对人类-机器人互动领域的意图阅读问题应用的定性空间关系的新用途。