社交机器人的认知架构

Ignazio Infantino, A. Augello, U. Maniscalco, G. Pilato, Filippo Vella
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引用次数: 9

摘要

这篇论文阐述了一种软件架构,允许机器人与人类进行社交互动,与他们分享一些基本的认知机制。对环境和人的强大感知与人工体感系统密切相关,该系统在低水平上驱动机器人的行为并影响其动机。长时记忆和短时记忆都存储着相关的数据,用以检测和识别社会背景(和社会实践),以及人类的社会行为。通过内部和外部评估,机器人学习并提高其社交技能,这将考虑到它的生理和情感需求(隶属关系、能力、确定性)。通过将人类的理解和机器人的交流行为放在同一层次上考虑,社会互动被编码在认知架构中。这是通过使用相同的互动渠道(口头和非口头)来完成的。从前人的研究中得到的一些例子显示了认知架构的有效性和潜力。
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A Cognitive Architecture for Social Robots
The paper illustrates a software architecture allowing a robot to socially interact with human beings, sharing with them some basilar cognitive mechanisms. Robust sensing of the environment and people is strongly linked with an artificial somatosensory system that drives the robot behavior at a low level and influences its motivation. Both long-term memory and short-term memory store relevant data to detect and recognize the social context (and social practice), and the human social behavior. Using both internal and external evaluations, the robot learns and improves its social skills, which take into account its physiological and emotional demands (affiliation, competence, certainty). Social interaction is encoded in the cognitive architecture by considering at the same level the human understanding and the robot communicative actions. This is done by using the same interaction channels (both verbal and nonverbal). Some examples derived from previous works show the effectiveness and the potential of the cognitive architecture.
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