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How active perception and attractor dynamics shape perceptual categorization: A computational model

机译:主动知觉和吸引子动力学如何塑造知觉分类:一种计算模型

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We propose a computational model of perceptual categorization that fuses elements of grounded and sensorimotor theories of cognition with dynamic models of decision-making. We assume that category information consists in anticipated patterns of agent-environment interactions that can be elicited through overt or covert (simulated) eye movements, object manipulation, etc. This information is firstly encoded when category information is acquired, and then re-enacted during perceptual categorization. The perceptual categorization consists in a dynamic competition between attractors that encode the sensorimotor patterns typical of each category; action prediction success counts as "evidence" for a given category and contributes to falling into the corresponding attractor. The evidence accumulation process is guided by an active perception loop, and the active exploration of objects (e.g., visual exploration) aims at eliciting expected sensorimotor patterns that count as evidence for the object category. We present a computational model incorporating these elements and describing action prediction, active perception, and attractor dynamics as key elements of perceptual categorizations. We test the model in three simulated perceptual categorization tasks, and we discuss its relevance for grounded and sensorimotor theories of cognition. (C) 2014 Elsevier Ltd. All rights reserved.
机译:我们提出了一种感知分类的计算模型,该模型将扎实的认知理论和感觉运动理论的要素与决策的动态模型融合在一起。我们假设类别信息包含在预期的主体与环境交互模式中,这种模式可以通过公开或秘密(模拟的)眼球运动,对象操纵等方式引发。该信息在获取类别信息时首先进行编码,然后在执行过程中重新执行感知分类。感知分类包括吸引器之间的动态竞争,吸引器对每个类别典型的感觉运动模式进行编码。动作预测成功作为给定类别的“证据”,并有助于落入相应的吸引子。证据的积累过程由一个主动的感知环来指导,而对物体的主动探索(例如,视觉探索)旨在引起预期的感觉运动模式,这些运动模式可以作为物体类别的证据。我们提出了一个包含这些元素的计算模型,并将动作预测,主动知觉和吸引子动力学描述为感知分类的关键元素。我们在三个模拟的感知分类任务中测试了该模型,并讨论了该模型与扎实的认知运动和感觉运动理论的相关性。 (C)2014 Elsevier Ltd.保留所有权利。

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