社会互动机器人的注意机制研究

J. Ferreira, J. Dias
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引用次数: 49

摘要

本文综述了社交互动机器人自动注意机制的建模和实现的最新进展。人类通过多感觉过程来评估和展示意向性,这些过程深深植根于大脑的低级自动注意相关机制中。为了让机器人正确地与人类接触,它们也应该配备类似的能力。共同注意是许多基本社会互动类型的先驱,在过去15年中一直是研究的重要焦点,因此为评估最先进的基于自动注意的解决方案的现状提供了完美的背景。因此,我们建议在共同注意的前沿研究工作中回顾这些机制在社会互动背景下的影响。这将通过总结在机器人认知系统研究中已经做出的贡献,通过确定这些贡献要解决的主要科学问题,并分析他们在这方面的成功程度,从而得出可能为未来成功研究工作提供路线图的结论来实现。
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Attentional Mechanisms for Socially Interactive Robots–A Survey
This review intends to provide an overview of the state of the art in the modeling and implementation of automatic attentional mechanisms for socially interactive robots. Humans assess and exhibit intentionality by resorting to multisensory processes that are deeply rooted within low-level automatic attention-related mechanisms of the brain. For robots to engage with humans properly, they should also be equipped with similar capabilities. Joint attention, the precursor of many fundamental types of social interactions, has been an important focus of research in the past decade and a half, therefore providing the perfect backdrop for assessing the current status of state-of-the-art automatic attentional-based solutions. Consequently, we propose to review the influence of these mechanisms in the context of social interaction in cutting-edge research work on joint attention. This will be achieved by summarizing the contributions already made in these matters in robotic cognitive systems research, by identifying the main scientific issues to be addressed by these contributions and analyzing how successful they have been in this respect, and by consequently drawing conclusions that may suggest a roadmap for future successful research efforts.
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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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3 months
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