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What Can Computational Models Learn From Human Selective Attention? A Review From an Audiovisual Unimodal and Crossmodal Perspective

机译:计算模型可以从人类的选择性关注中学习什么?视听单峰和跨大型视角的审查

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Selective attention plays an essential role in information acquisition and utilization from the environment. In the past 50 years, research on selective attention has been a central topic in cognitive science. Compared with unimodal studies, crossmodal studies are more complex but necessary to solve real-world challenges in both human experiments and computational modeling. Although an increasing number of findings on crossmodal selective attention have shed light on humans' behavioral patterns and neural underpinnings, a much better understanding is still necessary to yield the same benefit for intelligent computational agents. This article reviews studies of selective attention in unimodal visual and auditory and crossmodal audiovisual setups from the multidisciplinary perspectives of psychology and cognitive neuroscience, and evaluates different ways to simulate analogous mechanisms in computational models and robotics. We discuss the gaps between these fields in this interdisciplinary review and provide insights about how to use psychological findings and theories in artificial intelligence from different perspectives.
机译:选择性关注在信息获取和利用环境中起着重要作用。在过去的50年中,对选择性关注的研究已经成为认知科学的核心课题。与单峰研究相比,跨型研究更复杂,但有必要解决人类实验和计算建模的现实世界挑战。虽然对人类行为模式和神经内衬的跨型选择性关注的结果越来越多,但仍然需要更好的理解,以产生智能计算代理的相同益处。本文综述了从心理学和认知神经科学的多学科视角的单峰视觉和听觉和跨大型视听设施中的选择性关注的研究,并评估不同方式来模拟计算模型和机器人的类似机制。我们讨论了本跨学科审查中这些领域之间的差距,并提供了关于如何从不同观点使用人工智能中的心理发现和理论的见解。

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